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Management Question

Description

  • Please write the solution to Part (B) based on the case study attached with the assignment file.
    • Each answer should be within the range of 250 to 300 word counts.
  • Please support your answers with examples and clear explanation.
  • Avoid originality, similarity and plagiarism, Do not copy or quote from any sources and you must paraphrase.
  • All references must be cited using APA format.
  • All answered must be typed using Times New Roman (size 12, double-spaced) font. No pictures containing text will be accepted
  • challenges
    Article

    Modeling Autonomous Decision-Making on
    Energy and Environmental Management Using
    Petri-Net: The Case Study of a Community in
    Bandung, Indonesia
    Niken Prilandita *, Benjamin McLellan and Tetsuo Tezuka
    Graduate School of Energy Science, Kyoto University, Yoshida-Honmachi, Sakyo-ku, Kyoto 606-8501, Japan;
    [email protected] (B.M.); [email protected] (T.T.)
    * Correspondence: [email protected]; Tel.: +81-75-753-4739; Fax: +81-75-753-9189
    Academic Editor: Palmiro Poltronieri
    Received: 28 December 2015; Accepted: 5 April 2016; Published: 14 April 2016

    Abstract: Autonomous decision-making in this study is defined as the process where decision-makers
    have the freedom and ability to find problems, select goals, and make decisions for achieving the
    selected problems/goals by themselves. Autonomous behavior is considered significant for achieving
    decision implementation, especially in the context of energy and environmental management, where
    multiple stakeholders are involved and each stakeholder holds valuable local information for making
    decisions. This paper aims to build a structured process in modeling the autonomous decision-making.
    A practical decision-making process in waste-to-energy conversion activities in a community in
    Bandung, Indonesia, is selected as a case study. The decision-making process here is considered as
    a discrete event system, which is then represented as a Petri-net model. First, the decision-making
    process in the case study is decomposed into discrete events or decision-making stages, and the
    stakeholders’ properties in each stage are extracted from the case study. Second, several stakeholder
    properties that indicate autonomous behavior are identified as autonomous properties. Third,
    presented is a method to develop the decision-making process as a Petri-net model. The model is
    utilized for identifying the critical points for verifying the performance of the derived Petri-net.
    Keywords: autonomy; decision-making; Petri-net; energy; environmental; community; Indonesia

    1. Introduction
    The recent global agenda and technological challenges for creating a more sustainable
    environment have encouraged countries around the world to gradually shift towards sustainable
    energy transitions. Upon the new global agreement of Sustainable Development Goals, every country
    is now highly anticipated to direct their efforts towards realizing a more sustainable energy system and
    environment [1]. From the technology side, the emergence of new technologies, such as smart grids
    and source-centered renewable energies, have expanded the potential and requirements of energy
    generation and management in ways that have not been available previously. These facts suggest that
    the energy system is likely to become more distributed and localized, thus the decision-making and
    policy-making process in the energy sector should be adjusted to follow this future tendency [2].
    Most decisions made on energy and environmental management affect a large number of people
    and, thus, are of public interest. Decision-making in this sector usually becomes complicated since
    various interests need to be accommodated in the process. Moreover, once a consensus has been
    successfully reached, it does not guarantee successful implementation. Various decision-making
    approaches for reaching an easy consensus, as well as for achieving successful implementation,
    have been proposed. Two common approaches in decision-making are with the centralized and the
    Challenges 2016, 7, 9; doi:10.3390/challe7010009

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    decentralized approaches [3,4]. The quest of balancing between the centralized and the decentralized
    systems for decision-making is often an issue in organizational management. Easy access to
    information with the advancement of information technology, the internet, and other means today,
    have made the decision-making style in organizations lean towards a more decentralized style [5,6].
    However, this approach may not be entirely applicable for cases in energy and environmental
    management that occur in the public domain.
    This study puts more focus on autonomy in decision-making processes regardless of whether they
    are conducted under a centralized or a decentralized system. Two ways of understanding the concept
    of autonomy are considered here. Firstly, autonomy in the political or public administration field,
    which is often seen as one of the traits of a more decentralized system [4]. Secondly, as understood
    in the current study, autonomy can be considered as a property of persons regardless of the systemic
    context [7–9]. Therefore, we argue that autonomy can exist in both centralized and decentralized
    approaches because autonomy is the property of each decision-maker.
    The hypothesis of this study is that decisions made autonomously are more likely to achieve
    successful outcomes. Autonomy in making decisions is believed to be related to an increase in quality
    of life. Research from neuroscience has found that actively making decisions can boost pleasure and
    increase the decision-makers’ happiness, satisfaction, and perceived control [10]. Furthermore, high
    levels of happiness and satisfaction are causal influences on success and achievement, not the other
    way around [11]. Simply stated, if a decision-maker has made an autonomous decision, without being
    coerced or forced, it is considered more likely that the decision-maker will achieve the decision goal
    and benefit from that.
    Normatively, stakeholders’ autonomy in making decisions is important, though its important
    role in decision-making may not been objectively examined [7]. The fact that we have not found
    studies that objectively examined the role of autonomy in decision-making in energy-environmental
    management showed that this theme has to date been insufficiently examined. We argue that the
    recent global agenda and technological advances in the energy-environmental sector (e.g., smart-grid
    technologies, decentralized energy, and market liberalization) expect decision-makers to become more
    autonomous. This situation has created the necessity to develop a framework that can represent and
    identify the role of stakeholders’ autonomy in the decision-making process. Such a framework would
    consist of several elements employed for specific tasks, and is the purpose of the current research.
    This paper discusses one of the important elements of the framework, a model that aims to represent,
    analyze, and simulate the autonomous decision-making process.
    The autonomous decision-making model in this paper is developed as a discrete event system,
    and this paper presents the method to build such a model. The decision-making process is
    decomposed into discrete events that we call decision-making stages. Afterwards, the properties
    of stakeholders involved in each stage are identified; thus, the concept of a discrete event system
    for autonomous decision-making is established. Petri-net is utilized to represent the discrete event
    system of the autonomous decision-making process. Each decision-making stage, the stakeholders’
    properties, and the state after decisions are made; corresponding to a small Petri-net model
    consisting of a few transitions and places. The autonomous decision-making model is constructed
    by combining all of these small Petri-net models of each event/stage. As an addition, we conducted
    analysis of the Petri-net model’s behavior for identifying the stages which are indispensable for an
    autonomous decision-making system. These stages are called the critical points in the autonomous
    decision-making process.
    2. The Definition of Autonomous Decision-Making
    This section explains the definition of autonomous decision-making. The term, autonomous
    decision-making is defined by dissecting it into the root words comprising it, which are “autonomy”
    and “decision-making”. The development of the concept of autonomy as a political and personal
    property is historically explained, followed by a brief explanation on various scopes of the

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    decision-making process, and various types of energy decision-making. Based on this information, we
    construct the definition of autonomous decision-making used in this study.
    2.1. The Concept of Autonomy
    The definition of autonomy has been through several changes throughout the course of history.
    As mentioned above, there are at least two different concepts of autonomy explained in this paper.
    Autonomy originated from the Greek words “auto” which means self, and “nomos” which means law.
    This concept was firstly coined referring to the city states in ancient Greece that were self-governing.
    Originally, autonomy was defined in a political manner, which was the right of the states (or city-states,
    in that instance) to administer their own affairs [9]. In the context of public administration management,
    territorial or local autonomy is the result of a decentralization process [12]. In the Indonesian context
    for example, the Law of Decentralization number 22/1999, was the beginning of the country’s journey
    towards a more decentralized political structure. This law has since become the legal basis for
    providing more autonomy to local governments in making decisions regarding their own territory
    and environment. The spirit of the law has had a side effect, however, in that it caused the Indonesian
    people to gain greater awareness of autonomy, knowing that they had more freedom in choosing
    among options. This has promoted decision-making processes to be performed more autonomously
    in various levels of society’s hierarchical structure, including at the lower authority levels, such as
    villages and sub-districts [13]. Looking at this fact, the term autonomy in Indonesia has gradually
    become understood not only as the property of a state or territory, but also as a personal trait.
    One of the most important moments in the history of the concept of autonomy was when the
    definition of autonomy was transformed from the property of a state in the ancient Greek era, into a
    property of persons during the Renaissance era [7,8]. Since then, the concept of autonomy has been
    understood in both ways. However, autonomy in the majority of contemporary works is seen as a
    property of persons, or personal autonomy [7]. Although the concept of autonomy mainly revolves
    around these two definitions, the dimensions of autonomy are understood in many different ways,
    depending on which field of study is viewing it. Mackenzie, for example, defined three dimensions
    of autonomy, namely self-determination, self-governance, and self-authorization [14]. Other studies
    focus on the self-directedness and resoluteness dimensions of autonomy [9]. Meanwhile, the computer
    science and information technology fields view the ability to continuously learn or self-learning traits
    in the emergence of autonomous machines or artificial intelligence as one of the most important
    characteristics of autonomy [15].
    2.2. Decision-Making Process
    The definition of decision-making has been long established, and since decision-making is
    understood as a process of making decisions, then the definitions mostly evolved on the scope
    of the process. There are two predominately different views in decision theory regarding the extent
    of the decision-making scope. Firstly, decision-making is defined as a process started by identifying
    problems or goals, and ended after a decision has been made. One of the main supporters of this
    concept was Herbert Simon (1960) [16]. Later, Huber (1980) expanded the concept of decision-making
    by defining it as “the process through which a course of action is taken” [17], and the process by
    which the decision is implemented is considered as part of the problem-solving process. Most of the
    studies that defined the decision-making process came from the field of organizational management.
    Meanwhile when decisions need to be made in the public domain, the decision-making process is often
    regarded as the whole cycle from problem identification up to decision implementation and evaluation,
    and then feeding-back to problem identification. This is known as a generic decision cycle [18], or a
    planning process [19]. An example of a decision-making cycle is presented in Figure 1. In this study,
    we investigate the decision-making process extended to the implementation stages.

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    Figure 1. Example of a decision-making cycle [18,19].
    Figure 1. Example of a decision-making cycle [18,19].

    2.3. Energy-Environmental
    Energy-Environmental Decision-Making
    Decision-Making at
    Various Stakeholder
    2.3.
    at Various
    Stakeholder Levels
    Levels
    The following
    following section
    section explains
    explains decision-making
    decision-making in
    in energy
    energy and
    and environment
    by various
    The
    environment by
    various
    stakeholders,
    such
    as
    national
    government,
    local
    government
    (provincial/city/regency
    governments,
    stakeholders, such as national government, local government (provincial/city/regency governments,
    and formal
    formal agencies/bodies
    agencies/bodieswithin
    withinthese
    theselocal
    localgovernments),
    governments), community,
    community, household
    household and
    and individual
    individual
    and
    (households
    and
    individuals
    are
    considered
    as
    a
    single
    decision-maker),
    and
    non-governmental
    (households and individuals are considered as a single decision-maker), and non-governmental
    institutions (i.e.,
    local
    NGOs,
    business
    or private
    sector sector
    stakeholders,
    media, experts
    institutions
    (i.e.,international
    internationaland
    and
    local
    NGOs,
    business
    or private
    stakeholders,
    media,
    and
    academicians).
    As
    mentioned
    earlier,
    decision-making
    in
    energy
    and
    environmental
    management
    experts and academicians). As mentioned earlier, decision-making in energy and environmental
    often becomesoften
    complex
    because
    it occurs
    in the
    and, therefore,
    various
    stakeholders
    management
    becomes
    complex
    because
    it public
    occurs domain
    in the public
    domain and,
    therefore,
    various
    are involved are
    in it.involved
    According
    toAccording
    Sexton, et al.
    [20], theetmain
    stakeholders
    that are usually
    in
    stakeholders
    in it.
    to Sexton,
    al. [20],
    the main stakeholders
    that involved
    are usually
    environment-related
    decision-making
    are
    national
    governments,
    regional
    or
    local
    government
    bodies,
    involved in environment-related decision-making are national governments, regional or local
    business associations,
    environmental
    advocacyenvironmental
    groups, community
    or neighborhood
    groups, and
    government
    bodies, business
    associations,
    advocacy
    groups, community
    or
    affected
    or
    interested
    individuals.
    The
    relationships
    between
    these
    stakeholders
    can
    be
    classified
    neighborhood groups, and affected or interested individuals. The relationships between
    these
    into two typescan
    of relationship,
    are types
    vertical
    horizontal
    (parallel)
    relationships
    stakeholders
    be classified which
    into two
    of (hierarchical)
    relationship, and
    which
    are vertical
    (hierarchical)
    and
    with
    each
    other
    [21,22].
    Decision-making
    for
    individual
    stakeholders
    and
    groups
    of
    stakeholders
    is
    horizontal (parallel) relationships with each other [21,22]. Decision-making for individual
    influenced
    both
    by
    the
    structure
    of
    relationships
    and
    the
    characteristics
    of
    the
    individual
    stakeholders.
    stakeholders and groups of stakeholders is influenced both by the structure of relationships and the
    Energy related
    and policy-making (We use the phrase “energy (and environmental)
    characteristics
    of thedecision-making
    individual stakeholders.
    decision-making
    and
    policy-making”
    or “decision-making
    in energy
    in this paper
    Energy related decision-making
    and policy-making
    (Wesector”
    use interchangeably
    the phrase “energy
    (and
    because
    the
    research
    object
    is
    related
    with
    both
    energy
    and
    environmental
    sector.)
    at
    the
    national
    level
    environmental) decision-making and policy-making” or “decision-making in energy sector”
    tends to occur in aintop-down
    manner,
    following
    the hierarchical
    of the
    country’s
    institutions.
    interchangeably
    this paper
    because
    the research
    object structure
    is related
    with
    both energy
    and
    In
    the
    UK,
    for
    example,
    energy
    decision-making
    functions
    have
    historically
    been
    performed
    mainly
    by the
    the
    environmental sector.) at the national level tends to occur in a top-down manner, following
    central
    government
    and
    large
    corporations
    in
    the
    private
    sector.
    This
    situation
    began
    to
    change
    after
    the
    hierarchical structure of the country’s institutions. In the UK, for example, energy decision-making
    Localism Bill
    was
    stipulatedbeen
    in 2010
    aiming tomainly
    shift decision-making
    power from and
    central
    governments
    to
    functions
    have
    historically
    performed
    by the central government
    large
    corporations
    individuals,
    communities,
    and
    local
    government
    [23,24].
    Another
    example
    is
    from
    a
    developing
    country,
    in the private sector. This situation began to change after the Localism Bill was stipulated in 2010
    Indonesia,
    where
    for more than two
    decades
    thegovernments
    first nationaltoenergy
    policy was
    introduced
    in
    aiming
    to shift
    decision-making
    power
    from since
    central
    individuals,
    communities,
    and
    1981,
    the
    key
    strategic
    energy
    decisions
    and
    policies
    are
    made
    centrally
    by
    the
    national
    government
    [25].
    local government [23,24]. Another example is from a developing country, Indonesia, where for more
    The role
    local government
    thenational
    energy sector
    was
    recognized
    after the promulgation
    thestrategic
    Energy
    than
    twoofdecades
    since the in
    first
    energy
    policy
    was introduced
    in 1981, the of
    key
    Act in 2007.
    The act
    each
    localcentrally
    government
    to national
    formulate
    its own local
    energy
    masterplan,
    energy
    decisions
    andmandates
    policies are
    made
    by the
    government
    [25].
    The role
    of local
    based
    on
    the
    targets
    outlined
    by
    the
    national
    energy
    masterplan.
    government in the energy sector was recognized after the promulgation of the Energy Act in 2007.
    Recent
    experiences
    from
    both countries
    have shown
    that
    theenergy
    local authorities
    mandated
    The act
    mandates
    each local
    government
    to formulate
    its own
    local
    masterplan,are
    based
    on the
    and
    expected
    to
    have
    more
    capacity
    in
    energy
    decision-making
    functions.
    The
    long
    period
    of
    targets outlined by the national energy masterplan.
    centralized
    energy
    decision-making
    experience
    in
    both
    countries
    has
    created
    a
    great
    challenge
    for
    Recent experiences from both countries have shown that the local authorities are mandated and
    the
    local
    to capacity
    pick up in
    theenergy
    task. Lack
    of capacity of
    the localThe
    government
    with
    regards to
    expected authorities
    to have more
    decision-making
    functions.
    long period
    of centralized
    energy
    planning,
    and
    limited
    guidelines
    on
    how
    to
    formulate
    the
    masterplan
    itself,
    are
    some
    of
    energy decision-making experience in both countries has created a great challenge for the
    local
    the
    challenges
    faced
    by
    the
    locals.
    Despite
    the
    limited
    capacity
    and
    experience,
    local
    governments
    authorities to pick up the task. Lack of capacity of the local government with regards to energy
    around theand
    world
    have developed
    energy-environmental
    measures and
    localare
    action
    plans,
    planning,
    limited
    guidelinesvarious
    on how
    to formulate the masterplan
    itself,
    some
    of as
    thea

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    form of participation in global initiatives such as the International Council for Local Environmental
    Initiatives (ICLEI) and the Climate Alliance [26]. Aside from having a mandate to implement
    energy-environmental measures at the local level, local authorities are also expected to involve and
    nurture the community or grassroots levels in local energy initiatives [27].
    Energy decision-making functions at the community level have been empirically observed in
    North America [28–30]. Most of the decisions and measures taken are on climate change mitigation
    planning, considered as the re-emergence of the energy planning efforts which increased after the oil
    crisis in the 1970s, but later declined in the 1980s due to lower energy prices [28]. Although the number
    of local actions for energy measures in USA were increased after 2006, all of the decision-making
    processes identified were initially developed at the municipality level first [28]. The municipalities then
    involved the community in their plans to reduce community-wide energy use and GHG emissions.
    Although similar, the Canadian experience with its community energy management or community
    energy planning program is slightly different from what happened in the USA. Observations of the
    Community Energy Plans (CEPs) that emerged during 2003–2007 [29,30] have shown the potential
    of community roles in formulating action plans specifically related to energy efficiency, energy
    conservation, and application of renewable energies [30]. However, since CEP is part of a broader
    commitment of the municipalities on forming local action plans for GHG reduction, the content of
    the CEP is often written in accordance to what the municipality or municipal council needs [29].
    These practices are somewhat different from what was conceived by Jaccard, et al. [31] as community
    energy management.
    The practices of energy related decision-making at the community level is also evident in European
    countries, such as in the UK and Germany [27,32,33]. Often referred to as grassroots initiatives [27,34]
    or community (renewable) energy [33,35], it is defined as projects where communities exhibit a high
    degree of ownership and control, and collectively benefit from the outcomes [35]. The term community
    in this literature is relatively broad, referring to a group of people who share the same geographical
    location (neighborhood communities) or the same interest (non-governmental organizations) [33].
    The recent practices of community energy in Europe are gradually shifting as part of socio-political
    movements from the grassroots level [27] and, thus, they are more likely to be considered as bottom-up
    initiatives when compared to the CEPs in North America.
    Energy decision-making at the individual level is traditionally studied as a part of consumer
    behavior studies which view the individual as the energy customer or end-user [36,37]. Individuals
    as consumers make everyday decisions related to energy; therefore, they are becoming the target of
    various energy measures [37], such as the behavior change programs in energy consumption and
    energy technology adoption [38]. The high potential of new energy systems and technologies such as
    renewable energy systems and smart grids have shifted the focus of individual energy decision-making.
    In the light of these technologies, individuals’ energy decisions are not only shaped by the energy
    system and policy, but can also shape the system [39]. The social foundation of smart grids consists
    of “decentralized socio-technical networks that underpin the electricity consumption of groups of
    consumers who are increasingly becoming autonomous” [40]. However, for effective technology
    adoption, it is suggested to no longer view the individual solely as a consumer of energy, but also as a
    citizen, part of a community or society [37].
    From the research related with energy decision-making above, it is found that energy
    decision-making functions occur at various stakeholder levels, and the decisions made by one
    stakeholder may affect others in the total energy system. The challenge of shifting towards a more
    localized and distributed energy system creates a need for every stakeholder not only to actively
    participate in energy decision-making, but also to become more autonomous.
    2.4. Definition of Autonomous Decision-Making
    In this research, we put more focus on autonomy as the property of persons, not as a property of
    the system or environment. This study considers that each decision-maker is seen as an autonomous

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    system, or in other words, autonomy is a property of each stakeholder who participates in the
    decision-making process. This means that every decision-maker or stakeholder has their own goal to
    achieve and has the autonomy to decide by themselves. Thus, as mentioned earlier, this study views
    that autonomy can exist in both centralized and decentralized approaches.
    In light of this, we define the autonomous decision-making as the process where decision-makers
    have the freedom and ability to find problems, select goals, and make decisions for achieving the
    selected problems/goals by themselves in a responsible manner based on available information.
    It follows that persons having the ability to self-determine, self-govern, show self-control, and
    self-learning are persons who exhibit autonomous behavior. The definition for each autonomous
    behavior used in this paper is presented in Table A1 in the Appendix.
    3. Methodology for Modeling an Autonomous Decision-Making Process
    The aim of this study is to develop the autonomous decision-making model for the energy
    and environmental management process by using Petri-net. For this aim, an energy-environmental
    management project in Indonesian community (Rukun Warga) is selected as a case study. The steps
    performed for modeling in this paper are: (1) case selection and data collection; (2) decomposing
    the decision-making process and extraction of the stakeholders’ properties; (3) identification of
    stakeholders’ autonomous properties; and (4) modeling the decision-making process from the observed
    case using Petri-net and analysis of the model.
    3.1. Case Study Selection and Data Collection
    This paper undertook one decision-making process as a case study to be modeled, and there is a
    strong indication to select this particular case. The selected case study was included and investigated
    along with other five community decision-making processes in our previous work [41]. These cases
    were, in turn, selected from a broader set of around 20 case studies. The five cases were selected due to
    their success in project implementation and the availability of detailed documentation and information.
    Among the five cases, the community presented in this study was considered to have utilized both
    centralized (top-down) and decentralized (bottom-up) decision-making approaches. Since we argued
    that autonomous decision-making can occur under both approaches, by selecting this case we can
    investigate and model autonomous decision-making under both approaches using the same case.
    In addition to that, by using the same case study which exhibits two different decision-making
    approaches over a period of time, the behavior change and improved capability of the community in
    making decision were observed.
    The model developed here is based on a case study of a practical decision-making process for a
    waste management system project in a community in Bandung City, Indonesia. The waste management
    technique utilized in the community project is a bio-digester installation to transform household waste
    to energy (biogas). This case was selected because a considerable number of stakeholders were
    involved in the activities with relatively even inputs to the project. Various stakeholders’ involvement
    in a project is a rare occasion, especially when almost all stakeholders can contribute relatively evenly
    in the project. This situation occurred because the project developed in two phases. The first phase
    started as one project and then changed to another project after the first went through a stagnant phase.
    The second phase achieved quite a successful outcome and is still in operation at the time of writing.
    The stakeholders that were involved in each phase are different, which is one reason why there were
    various stakeholder contributions. This unique situation is considered useful for understanding the
    possible outcomes from various stakeholders’ engagement when the project changed course.
    A thorough data collection is necessary for understanding the case study well. Information
    about the community activities and decision-making process were collected using secondary and
    primary sources. Various secondary records used were project reports, academic reports, journal
    articles, newspaper articles, and web-based articles. Interviews, informal discussions, observation, and
    demonstration of the biogas installation were also undertaken during site visits. The primary sources

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    sources interviewed are the chief of the community, the former community chief, bio-digester
    interviewed
    arethe
    therecycling
    chief of the
    community,
    operators,
    and
    center
    operator.the former community chief, bio-digester operators, and
    the recycling center operator.
    3.2. Decomposing the Decision-Making Process and Extraction of the Stakeholders’ Properties
    3.2. Decomposing the Decision-Making Process and Extraction of the Stakeholders’ Properties
    The decomposition of the case study is important for constructing the autonomous
    The decomposition
    of athe
    case study
    important
    the autonomous
    decision-making
    model as
    discrete
    event is
    system.
    Thereforareconstructing
    two steps involved
    in this
    decision-making
    model
    as
    a
    discrete
    event
    system.
    There
    are
    two
    steps
    involved
    in
    this
    decomposition, which yield two major results that become the foundation of the decomposition,
    discrete event
    which yield
    two major
    results thatdecision-making.
    become the foundation
    thecommunity
    discrete event
    system for modeling
    system
    for modeling
    autonomous
    Firstly,ofthe
    decision-making
    process
    autonomous
    decision-making.
    Firstly,
    the
    community
    decision-making
    process
    is
    decomposed
    into
    is decomposed into decision-making stages. Secondly, the properties of each stakeholder involved
    in
    decision-making
    stages. Secondly,
    of each
    stakeholder
    each stage
    are
    each
    stage are identified.
    Utilizingthe
    theproperties
    framework
    developed
    in ourinvolved
    previousin work
    [41], the
    identified. Utilizing
    the framework
    developed
    in ourfrom
    previous
    work
    the decision-making
    process
    decision-making
    process
    is decomposed.
    Modified
    Simon
    [16],[41],
    Huber
    [17], and Petrie [18],
    the
    is
    decomposed.
    Modified
    from
    Simon
    [16],
    Huber
    [17],
    and
    Petrie
    [18],
    the
    framework
    consists
    of four
    framework consists of four important phases, namely: (1) problem finding; (2) knowledge
    and
    important phases,
    namely: (1)
    problemand
    finding;
    (2) knowledge
    and information;
    consensus
    building;
    information;
    (3) consensus
    building;
    (4) decision
    and implementation
    (see(3)
    Figure
    2). The
    points
    and
    (4)
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    and
    implementation
    (see
    Figure
    2).
    The
    points
    or
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    in
    each
    phase
    function
    as
    or questions in each phase function as guidance in decomposing decision-making stages and
    guidance
    in
    decomposing
    decision-making
    stages
    and
    identifying
    the
    stakeholders’
    involvement.
    identifying the stakeholders’ involvement.

    Figure
    Figure 2.
    2. The
    The decision-making
    decision-making decomposition
    decomposition framework
    framework [41].
    [41].

    The procedure for extraction of stakeholders’ general properties was performed based on our
    The procedure for extraction of stakeholders’ general properties was performed based on our
    previous work which utilized five case studies of community energy-environmental projects, of
    previous work which utilized five case studies of community energy-environmental projects, of which
    which the present case study was one [41]. The five different cases of community projects selected
    the present case study was one [41]. The five different cases of community projects selected (from
    (from a set of around 20) exhibit various types of decision-making processes, ranging from
    a set of around 20) exhibit various types of decision-making processes, ranging from centralized to
    centralized to decentralized approaches. All of the five cases were considered as successful in
    decentralized approaches. All of the five cases were considered as successful in reaching the project
    reaching the project goals. From analysis of these successful cases, the role and properties of the
    goals. From analysis of these successful cases, the role and properties of the stakeholders’ are extracted
    stakeholders’ are extracted by utilizing the framework in Figure 2, with the properties and the
    by utilizing the framework in Figure 2, with the properties and the framework development itself
    framework development itself based on the decision-making literature.
    based on the decision-making literature.

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    3.3. Identifying the Stakeholders’ Autonomous Properties
    The structured method for identifying the stakeholders’ autonomous properties from the
    stakeholders’ general properties is explained here. The list of stakeholders’ general properties which
    contributed to the success of the community project was derived from a thorough literature review into
    decision-making processes, cross-checked with successful case studies. In order to determine which of
    these properties are aligned with autonomy in decision-making, a further analysis was undertaken.
    The decision-making process, as a whole, is considered to be autonomous decision-making if the
    stakeholders in the system are making decisions autonomously. In other words, the stakeholders need
    to exhibit an autonomous behavior. Therefore, the stakeholders’ autonomous properties are identified
    by cross-comparing the stakeholders’ general properties with elements of autonomous behavior.
    The cross-comparison process was performed qualitatively using content analysis of the
    autonomous behaviors and stakeholders’ properties definitions. The stakeholders’ general properties
    are identified in the previous step, while the elements of autonomous behavior are identified in
    Section 2, namely: (1) self-governance; (2) self-control; (3) self-learning; and (4) self-determination.
    Upon defining each stakeholders’ property and autonomous behavior, each property is examined.
    Those which comply with at least one definition of autonomous behavior are identified as stakeholders’
    autonomous properties. Utilizing this method, the stakeholders’ autonomous properties can be
    objectively identified.
    3.4. Developing and Analyzing the Autonomous Decision-Making Model Using Petri-Net
    The method for constructing the autonomous decision-making process using Petri-net is presented
    in this section. The justification of Petri-net utilization is explained, followed by the Petri-net history
    and its utilization. Afterwards, a brief explanation of a standard Petri-net model. The autonomous
    decision-making model developed in this paper is built as a discrete event system by compiling the
    results from previous steps, which are the decision stages and the stakeholders’ properties. The method
    to represents the discrete events into a Petri-net model is also explained in this section.
    In this paper, we consider the decision-making process as a system built upon discrete events
    which perform and interact with each other sequentially and in parallel. Energy-environmental
    decision-making is of public interest, therefore the decision-making involves many and various
    stakeholders. In our research, the stakeholders are autonomous. They are being shaped by, and can also
    shape, the system. Therefore, an interrelated bi-directional connection between stakeholders and the
    decision-making process is expected. Petri-net has an advantage of representing the model in two-ways:
    graphically and mathematically. Therefore, we consider that Petri-net is a suitable tool to represent the
    complexity of multiple autonomous stakeholders in energy-environmental decision-making. Moreover,
    the utilization of Petri-net enables a simple simulation of autonomous decision-making model to be
    performed further.
    Petri-net is one of the tools often utilized for modeling a discrete event system, and nowadays its
    application has been employed on a very broad field of study, including decision-making. The history
    of Petri-net is established by its development by Carl Adam Petri in 1962. Petri-net is useful for
    modeling the flow of information and control in systems, especially those which exhibit asynchronous
    and concurrent events [42–44]. Petri-net is commonly applied to model various kinds of dynamic
    discrete-event systems such as computer networks, manufacturing plants, communication systems,
    logistic networks, and command and control systems [45]. In recent years, the utilization of Petri-net
    has reached far beyond computer science and manufacturing studies. For example, Petri-net has
    been used to model decision-making processes in a legal case [46] and modeling the story plot
    for games [47,48]. In the energy-environmental field, several studies have employed Petri-net in
    modeling: a more energy efficient machine tool [49], multisource energy conversion systems [50],
    energy management system for autonomous micro-grids [51], municipal waste management [52], and
    environmental effects of biofuel utilization [53]. The advantage of utilizing Petri-net in this study is
    that it can describe objectively a decision-making process with multi-stakeholder involvement.

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    A standard Petri-net consists of P, T, I, O, µ (places, transitions, inputs, outputs, marking/token).
    In detail, P is a finite set of places, which are represented by circles; T is a finite set of transitions, which
    are represented by rectangles/bars; I is an input function which represents connection from P to T;
    O is an output function which represents a connection from T to P; and µ is the initial marking which
    is represented by a small dot called a token [54].
    In order to transform the discrete events of autonomous decision-making into Petri-net
    accordingly, the results from previous steps are compiled. First, the result from decomposing the
    decision-making process are the decision stages. These decision-making stages, which are considered
    as discrete events, are transformed into “transitions” in the Petri-net model, whereas the result from
    the autonomous properties extraction is the stakeholders’ properties. The state or the combinations of
    the stakeholders’ properties, are represented as “places”. Likewise, the results or outputs from each
    event/stage are also represented as “places”. The relationship between the state and the stages are
    represented with inbound and outbound arcs. In short, the decision-making stages can be transformed
    into the Petri-net by:
    1.
    2.
    3.

    Describing the state of affairs or a condition experienced by the stakeholder as a Place (P).
    Describing the decision-making process, or event, or action conducted by the stakeholder as a
    Transition (T).
    Describing the relationship of Place(s) and Transition(s) and the movement of the token (µ) with
    inbound and outbound arcs.

    The token moves from one place to another by “firing” through a transition. A place has a token
    if a particular stakeholders’ condition or property is satisfied, thus firing the transition. The existence
    or the absence of the condition is the key factor that determines whether a transition in the Petri-net is
    enabled or not.
    The decision-making model is constructed by combining all of the transitions and places
    representing the decision-making stages into one Petri-net model. For simplification purposes, several
    decision stages are represented as simple Petri-net models, which are drawn hierarchically in another
    layer under the main model. These lower layers of Petri-net models do not affect the purpose of the
    whole model, which tries to show the relationship between stakeholders’ autonomous properties in
    each decision-making stage and decision outcomes.
    The utilization of Petri-net to describe the decision-making process made the autonomous part of
    the decision-making more prominent and easier to be identified. Therefore, we can identify the critical
    points in the decision-making process, where the existence or absence of autonomous properties will
    lead to a different decision or achieve different outcomes. The performance of autonomous properties
    in the success of the decision-making is going to be evaluated by analyzing the combinations of the
    conditions resulting from the simulation.
    4. Results
    This section presents the results obtained from each method aforementioned. A brief description
    of the selected case study is presented prior to the results from decomposing the case study
    decision-making process into stages. The stakeholders’ autonomous properties are identified
    afterwards. Later on, the development and analysis of the decision-making model using Petri-net
    are explained.
    4.1. Overview of the Case Study
    As described earlier, the case study project had two phases, and each phases is briefly explained
    here. The initial project was called a Community-based Basic Infrastructure Improvement Program
    (CBIIP), with the final goal to improve the sanitation situation in the community. The case study consists
    of two related projects, which are a composting center and bio-digester installation. The bio-digester

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    installation project was an improvement to an existing composting project in the RW 11 community (RW
    are often identified by number. RW 11 means it is the 11th community to exist in the particular village).
    This community, inhabited by 3000 people, or roughly 800 households, is one of the low-income slum
    areas in Bandung. It is one of the densest districts in the city. Recognizing the need for improvement
    of community life, CBIIP was initiated by the Ministry of Public Works in the Bandung Branch
    with assistance from the Bandung City government in 1996. Focusing on economic, social, and
    environmental aspects, one of the projects conducted was the construction of a composting center
    located in RW 11 to improve the poor sanitation and waste situation [55]. After the project term was
    finished and the budget terminated, the composting center operation became stagnant, and was then
    replaced by a bio-digester installation.
    The second project, a biogas production project in the form of a bio-methane digester installation,
    was initiated by the community in collaboration with academicians, the private sector, and
    community-based organizations (CBO). After the composting system was not as successful as planned,
    especially in terms of profit, it was terminated around 2009–2010. However, views on waste and
    garbage in the RW 11 community had changed. They maintained the waste segregation activities, and
    the women’s organization (My Darling) began selling plastic waste and tried to reuse it for handicrafts.
    Moreover, the existing CBO tried to seek financial support by submitting proposals to international and
    national non-governmental organizations (NGOs) [56]. Eventually, with assistance and consultation
    from academic scholars, the Environmental Agency and a local NGO, and financial help from the local
    bank, the composting system was changed to the bio-methane system, which produces biogas for
    households and liquid fertilizer.
    One recent study about the biogas production in this community has been conducted
    thoroughly [57]. The outcomes from the biogas production project were studied from socio-economic
    perspectives. It was found that the biogas production at RW 11 is currently not economically feasible
    due to limited market reach for the bio-slurry products. Meanwhile from the social point of view, the
    study identified that the community was relatively accepting of the project despite a mix of responses
    found among RW 11 community members. It can be concluded that this pilot project in biogas
    production is still operating because of the social acceptance factors rather than economic factors.
    4.2. The Decision-Making Stages and Stakeholders’ Properties
    The decomposition of the decision-making process resulted into two major outputs. The first
    output are the decision-making stages, and the second are the stakeholders’ general properties. These
    outputs are the foundation in establishing an autonomous decision-making model as a discrete event
    system. The case history and other related information obtained from various sources are analyzed
    qualitatively to decompose the decision-making process of the case study into decision stages. Utilizing
    the framework in Figure 2, we decomposed the decision-making process of the biogas production
    project in RW 11 into six stages, which are:
    1.
    2.
    3.
    4.
    5.
    6.

    Find or define the problem
    Design the solution alternatives
    Agreement/consensus building
    Implementation and construction of the Waste Management System (WMS)
    Management (O and M)
    Termination of the project

    Even though the framework suggested four major phases, the number of stages drawn in the
    Petri-net model may vary and, thereby, be more than four. The biogas production project in RW 11
    has been established for a long time, therefore, it has been gone through the stages of “management”
    and “project termination”. Moreover, the project has been regenerated into another project, which is
    still running. Depending on the case study, the decomposition of the decision-making process may

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    result in various numbers of stages. These stages are represented in the Petri-net model as transitions.
    The relationships between each transition are drawn by combining it with the stakeholders’ properties.
    As mentioned in Section 3.2, the stakeholders’ properties are extracted from the successful case
    studies by applying the same framework (Figure 2) and based on literature on various decision-making
    processes. These properties were taken from various energy-environmental decision-making studies,
    as presented in Table A2 in the Appendix. This process resulted in the stakeholders’ general
    properties, listed in Table 1. These extracted properties are considered to be those which contributed
    to successful community decision-making implementation. The stakeholders’ general properties
    are further examined using autonomous behavior elements in Section 2 to identify the stakeholders’
    autonomous properties.
    Table 1. Stakeholders’ general properties.
    Stakeholders’ General Properties
    1
    2
    3
    4
    5
    6
    7
    8
    9
    10

    Self-control
    Initiative
    Self-learning
    Motivation
    Ability to organize
    Leadership
    Self-governance
    Ability to collect and
    understand information
    Communication ability
    Responsibility

    11
    12
    13
    14
    15
    16
    17

    Trust
    Interaction
    Collaboration
    Openness
    Commitment
    Local culture
    Networking ability

    18

    Creativity

    19
    20

    Innovativeness
    Proximity

    4.3. The Stakeholders’ Autonomous Properties
    Identification of the stakeholders’ autonomous properties is one of the important process
    conducted in this paper. The properties extracted in previous step are general stakeholder properties
    that contributed to the success of the project goal. These properties are cross-compared with the
    autonomous behaviors mentioned in Section 2. Among the 20 general properties listed above, three of
    them are already included as autonomous behaviors (self-control, self-learning, and self-governance).
    The remaining 17 properties were cross-checked with the autonomous behaviors.
    The method for identifying stakeholders’ autonomous properties explained in Section 3.3 requires
    each autonomous behavior and the general properties listed in Table 1 to be clearly defined. From
    these definitions (see Appendix, Tables A1 and A2), the stakeholders’ general properties are objectively
    identified as to which autonomous behavior they exhibit (if any). The results of this cross-comparison
    are presented in Table 2.
    From Table 2, eleven out of seventeen properties are considered as exhibiting stakeholders’
    autonomous behavior. The other six are not marked as autonomous behavior of the stakeholder, for at
    least two reasons. First, they are not a property of persons or individuals. The properties, such as local
    culture, trust, and proximity are categorized as a system or environment property. Therefore, even
    though they exhibit some traits of autonomy, they are not included as stakeholder properties. Second,
    the properties of creativity and innovativeness, by definition, are not regarded as corresponding with
    the autonomy definition or dimensions.

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    Table 2. Extraction of Stakeholders’ autonomous properties.

    No
    1

    General
    Decision-Making
    Property

    Self-Governance

    Self-Control

    Self-Learning

    Self-Determination

    Initiative

    X

    X

    X

    O

    Autonomous Behavior

    2

    Motivation

    X

    X

    X

    O

    3

    Ability to organize

    O

    O

    X

    X

    4

    Leadership

    O

    O

    X

    X

    5

    Ability to collect and
    understand information

    X

    X

    O

    X

    6

    Communication ability

    O

    X

    X

    X

    7

    Responsibility

    X

    O

    X

    O

    8

    Trust

    X

    X

    X

    X

    9

    Interaction

    X

    X

    O

    X

    10

    Collaboration

    X

    X

    O

    X

    11

    Openness

    X

    X

    X

    X

    12

    Commitment

    X

    O

    X

    O

    13

    Local culture

    X

    X

    X

    X

    14

    Networking ability

    X

    X

    O

    X

    15

    Creativity

    X

    X

    X

    X

    16

    Innovativeness

    X

    X

    X

    X

    17

    Proximity

    X

    X

    X

    X

    After correlating these properties with the autonomy dimensions, selected properties are further
    classified into seven points based on definitional similarity, and they are as follows:
    1.
    2.

    3.

    4.

    5.

    6.

    Motivation, initiative; selected because the decision-makers need to have motivation or initiative,
    or ability to think by themselves in order to be considered as autonomous.
    Leadership, ability to organize; selected because autonomy also requires self-governance and
    self-control. In order to have the ability to govern or organize themselves, the decision-makers
    need to have some level of leadership and ability to coordinate and communicate their goal with
    their subordinates or members.
    Self-learning, ability to manage information; selected because an autonomous decision-maker needs
    to have the willingness and ability to learn, to manage and collect information, and to understand
    the information necessary to make decisions.
    Interaction between the community members; one of the results of the analysis conducted on the
    five cases was that the interaction among community leaders and members has an important role
    in reaching a consensus or decision, as well as in decision implementation, and sustaining the
    operation and maintenance of the project. A decision that is reached through group interaction
    performs better when compared to a decision reached by a group of people that does not interact
    at all [58].
    Networking and collaboration between stakeholders; this property is linked with the previous
    property. We differentiate it because, in this property, the community (leaders and members) is
    considered as one stakeholder. The networking and collaboration between the community and
    other stakeholders outside the community, such as government agencies, officials, local NGOs,
    private sectors, and others, was seen in the five cases and contributed to the success of the project.
    Persuasion and negotiation ability; this property is closely related with the leadership level of the
    stakeholder. This property was also very useful in reaching a consensus or decision, especially

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    when the project involved multiple stakeholders. This property is found predominantly in the
    cases where the initiative does not come from governments.
    Responsibility and commitment; this property is especially important when the decision is ready to
    be implemented. In order for the project to be constructed, each stakeholder involved needs to be
    responsible for their duty and commit to the decision that has been made.

    4.4. The Petri-Net Model
    The autonomous decision-making model, which in this paper is regarded as a discrete event
    system, is represented using Petri-net. The principal process of modeling the decision-making into
    Petri-net can be described as follows. Each stage of the decision-making in Section 4.2 is transformed
    into transition for the Petri-net model. For graphical purpose, we provide two version of Petri-net
    graphs. The simplified Petri-net diagram for this case study is presented in Figure 3, meanwhile the
    complete Petri-net graph using Yasper is presented in Figure A1 in the Appendix.
    The conditions for each stakeholder involved are given at the beginning of the net, and are not
    changed during the course of the process. There are three subnets added (for detail see Appendix,
    Figure A2–A4). Each subnet is designed for one autonomous property, namely the Motivation Subnet
    (T1), the Leadership Subnet (T2), and the ability to manage information, shortened as the Information
    Subnet (T3). The reason behind the subnets’ creation is because the model will be simulated by
    changing the number of stakeholders involved and changing the combination of their properties.
    Therefore, it is important to show the process of how each stakeholder becomes autonomous or
    non-autonomous in detail. However, we realized that this process can make the whole decision-making
    process model more visually complex. Therefore, we added several subnets in the Petri-net model,
    hence, making it a hierarchical model. The subnets show the process of every stakeholder in becoming
    autonomous or non-autonomous. Autonomous stakeholders will have a token in the corresponding
    places, whereas those who do not have autonomous properties will have no token. The other reason is
    because the content of these hierarchical transitions are fluid, depending on how many stakeholders
    are involved. This makes it inefficient to draw directly on the primary layer.
    The results from these hierarchical transitions from the subnets are shown on the primary layer as
    one single place, which is a simplification of the number of places corresponding to each stakeholder
    involved (in Figure 3, these are designated by blue coloring, hereafter they are called “blue” places).
    If the number of stakeholders is more than one, then each blue place consists of a combination of
    stakeholders’ conditions. This simplification is purely for graphical purposes. These blue places are
    drawn as several single places in the complete version of the Petri-net model. The example given
    in Figure A1 of the Appendix shows that if there are five autonomous stakeholders involved in the
    decision-making process, this would result in each of the hierarchical transitions (T1, T2, and T3)
    producing five tokens in each of the corresponding places. Therefore, each blue place in primary layer
    (P2, P3, and P4) actually consists of five single places with a token in it. For simulation purposes, it
    is not possible to simply put five tokens in each of P2, P3, and P4. This is because at later transitions
    (T6 and T8), the rules are specifically differentiated based on the stakeholder types. Decision-making
    processes may require certain specific stakeholders to make an autonomous decision—in this case
    a token from these stakeholders will be compulsory. In addition to this, the specific direction that
    a decision takes may be designated by which, or how many, other stakeholders have autonomous
    properties (a token, in this case).
    In Figure 3, there are three variations of transition. First, is the standard transition, which is
    marked by a black box. Second, the orange diamond-shape transition, which represents an XOR
    transition. An XOR transition consumes one token from one of its input places and produces a token
    in one of its output places. This means that this transition can be fired if there is at least one token in
    one of its input places. The third transition is a hierarchical transition (T1–T3). As mentioned before,
    the Petri-net model in this paper is a hierarchical one, meaning there is another process or another set

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    of Petri-net models under the primary layer. A detail explanation on the variations of transitions with
    the corresponding decision type used in this paper is presented in Table 3.
    There are three other important elements of the Petri-net model shown in Figure 3, namely
    the inbound arcs, outbound arcs, and tokens. The inbound and outbound arcs between places and
    transitions show the direction of token movement. In addition, they also show the relationship
    between places and transitions. Since places represent the conditions needing to be fulfilled for firing
    the transitions, it is easy to identify what kind of conditions are required for an action or event to occur.
    The bidirectional arc represents a simplification of a situation in which whenever a transition is fired,
    then the transition will produce a token in the output place and also put the token back in the input
    place. The legend for the Petri-net in Figure 3 is presented in Table 4.
    The Petri-net developed in this paper shows that the discrete event system consists of
    decision-making stages and the role of stakeholders involved in a decision-making process can be
    objectively and logically modeled. Utilizing the procedures explained above, other decision-making
    cases can also be represented using Petri-net. Although the model might be different in detail, the
    decision-making stages are relatively similar.
    Table 3. Type of transitions with its corresponding decisions type.
    Type of Transition

    Type of Decision

    Standard transition

    Used if the condition(s) to reach a particular action/decision is unnegotiable, or if the
    number of states resulted from a particular action/decision are definite.

    XOR transition

    Used if there are two or more states that possible as inputs or outputs of the particular
    action/decision. This type of transition is usually applied to decisions that branches
    subject to certain conditions.

    Hierarchical transition

    Used as a representative of a sub-layer in the Petri-net. The sub-layer contains another set
    of transitions-places which is deliberately hidden to simplify the main Petri-net model.

    Table 4. Legend for places and transitions in the Petri-net model.
    Place

    Description

    Transition

    Description

    P1:

    Waste and sanitation problem situation

    T1:

    Motivation subnet

    P2:

    Set of stakeholders’ motivation level

    T2:

    Information subnet

    P3:

    Set of stakeholders’ ability to manage
    information level

    T3:

    Leadership subnet

    P4:

    Set of stakeholders’ leadership level

    T4:

    Problem finding process

    P5:

    Problem is defined

    T5:

    Designing alternatives process

    P6:

    Alternatives are designed

    T6:

    Decision-making

    P7:

    WMS technique is selected
    (decision is made)

    T7:

    Construction of WMS

    P8:

    WMS is constructed
    (decision is implemented)

    T8:

    Operation & Maintenance

    P9:

    Waste is reduced

    T9:

    Termination of the project

    P10:

    Project stopped

    P11:

    Project continued

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    15 of 27

    Figure
    study.
    Figure 3.
    3. Hierarchical
    Hierarchical Petri-net
    Petri-net (simplified)
    (simplified) describing
    describing the
    the decision-making
    decision-making process
    process of
    of aa WMS
    WMS case
    case study.

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    5. Analysis and Discussions
    Two main steps were performed through the methods explained in this paper. First is the method
    to decompose the community decision-making process into discrete events. This process resulted into
    two outputs, which are the decision-making stages (Section 4.2) and the stakeholders’ autonomous
    properties (Section 4.3). The second step is the method to build the discrete event system in the form
    of the Petri-net model, which generalizes the decision-making in a case of energy and environmental
    management (Section 4.4).
    The decomposition process produces decision-making stages and the stakeholders’ autonomous
    properties. The decision-making stages are performed utilizing the framework in Figure 2. As a result,
    six decision-making stages are obtained; namely, problem definition, alternatives design, agreement or
    consensus building, implementation and construction, management, and project termination, whereas
    the stakeholders’ properties are identified by qualitatively cross-comparing the stakeholders’ general
    properties with the autonomous behaviors. There are seven autonomous properties identified here;
    namely, (1) motivation and initiative; (2) leadership and ability to organize; (3) self-learning or the
    ability to manage information, (4) interaction; (5) networking and collaboration; (6) persuasion and
    negotiation ability; and (7) responsibility and commitment. Among these, properties (4) and (5)
    are considered as more a property of groups of people, meaning they exist if there are at least two
    types of stakeholders involved in the decision-making, whereas the other properties belong to an
    individual stakeholder.
    The results from the decomposition process are then represented by Petri-net. The model is
    constructed by combining the decision-making stages that already converted into transitions and
    places. Analysis of the Petri-net provide a further understanding that there are several transitions that
    would yield different outcomes if the conditions at the blue places are changed. These transitions are
    identified as critical points, which are identified from Petri-net graph in Figure 3.
    As discussed in Section 4.4, a blue place contains the result from the hierarchical transitions
    and each blue place can represent more than one “standard” place. A token in one of the sub-places
    contained in a blue place represents the particular stakeholders’ autonomous properties and it will not
    be changed during the course of the simulation. For example, if a stakeholder is set since the beginning
    as not having motivation properties, then it will continue to lack motivation until the end of the model
    or the termination of the model. A critical point in this study refers to a certain transition in the Petri-net
    model that is influenced by the conditions set in the blue places, which have particular influence on
    autonomy. From the model, the critical points identified in this decision-making process are:
    1.

    2.

    3.

    Problem finding process (T4). At this critical point, there are two determining properties, which
    resulted from motivation subnet (T1) and information management capability (T2). T4 fires if
    there is at least one token in one of its input places (P2 and P3). This means that at this stage, any
    stakeholder, regardless the type, can contribute in finding the problem as long they have high
    motivation or strong leadership.
    Designing alternatives (T5), fires depending on the property of information management
    capability (T2). T5 fires if there is a token in P5 and there is at least one token in P3. This means
    that in order to design decision alternatives, at least one stakeholder must have the capability to
    manage information.
    Decision-making process or consensus-building process (T6), which is determined by the
    property of leadership level (T3). T6 fires if there is a token in P6 and at least one token in
    P4. This means that in order to reach a decision or a consensus together, at least one stakeholder
    needs to have strong leadership. The output of this transition is differentiated by the specific
    stakeholders’ conditions.

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    4.

    5.

    17 of 26

    Operation and maintenance phase (T8), is determined by all three properties of: leadership level
    (P4), motivation level (P2), and information management capability (P3). Basically, T8 fires if
    there is a combination between the properties of several stakeholders together. This means that
    collaboration, networking, and interaction between stakeholders plays an important role in this
    Operation and Maintenance stage. However, since the leadership property (P4) is already given
    in T6, therefore there is no need to connect T8 with the inbound arc from P4. The result of T8
    will be differentiated based on the properties from blue places based on types and properties
    of stakeholders.
    Termination of the project (T9), determining property: result from the O and M phase (T8).
    The outputs from the previous transition (T8) are differentiated based on the stakeholder types
    and properties. In the simulation, the rule will be imposed on T9 as to whether to produce a
    token for P10 or P11, based on the token condition in P9. For example, if the token produced from
    T8 shows a condition of autonomous local people (community leaders or interested individuals),
    then the project will be more likely to go beyond project termination, and therefore T9 will
    produce a token in P11. Since T9 is an XOR transition, the firing of T9 can only be produced in
    one of P10 or P11.

    Among these critical points, the first two points (T4 and T5) determine whether the process will
    reach a decision or fail to reach a decision. The latter three points (T6, T8, and T9) determine the variety
    of success levels in achieving the project goal. Meanwhile T7 is not identified as a critical point because
    the transition only depends on one input place.
    The Petri-net model in this paper represents the decision-making process as it occurred in
    community case studies. The common traits of community decision-making should not be neglected.
    For example, in a community, if a certain problem exists and a stakeholder proposes some solution
    alternatives but the remaining stakeholders are not able to reach a consensus or decision, then the
    whole decision-making process fails/stagnates and the problem will persist. This means that, for
    solving the same problem, the decision-making process needs to be started from the beginning again.
    In the simulation, this trait will be represented by the instant termination of the model simulation
    every time a transition is not fired.
    The critical points in this paper are identified by developing the Petri-net model which resulted
    from carefully decomposing the case study. Therefore, the most important part is decomposing the
    case’s story into decision-making stages, which can only be performed if the case study or project
    history is well understood. This made the data collection procedure holds an important role in
    understanding the context under which the decision was taken. Although complete information might
    be available in the form of reports and secondary records, direct field visits and observations are highly
    recommended to obtain a thorough understanding of the targeted community, and also to avoid bias
    from previous researchers. Another important point is the selection of principal informants to be
    interviewed. It is best to interview stakeholders that are involved directly at the beginning of the
    project even though they might already be very old or have already stepped down from their position
    if the project has been conducted for a number of years.
    The method explained throughout this paper comprises of decomposing the community
    decision-making process, extraction of the stakeholders’ autonomous properties, and modeling the
    autonomous decision-making process. The results of these steps are complemented by the results
    obtained from various literature and data collection. The structured method utilized in this paper can
    be summarized in Figure 4 below.

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    18 of 27

    Figure 4. General method for developing autonomous decision-making model.
    Figure 4. General method for developing autonomous decision-making model.

    6. Conclusions
    6. Conclusions
    This paper presents a method to build an autonomous decision-making model, which is
    This paper
    presents awithin
    method
    to build an of
    autonomous
    decision-making
    model, which is
    considered
    to be important
    the development
    decentralized
    generation and demand-centered
    considered
    to be
    within
    the development
    of approach
    decentralized
    generation
    and
    projects
    in energy
    andimportant
    environmental
    beneficiation.
    However, the
    is generalizable
    to other
    demand-centered
    projects
    in
    energy
    and
    environmental
    beneficiation.
    However,
    the
    approach
    is
    fields and case studies beyond that presented here. The specific Petri-net must be designed given
    generalizable
    to
    other
    fields
    and
    case
    studies
    beyond
    that
    presented
    here.
    The
    specific
    Petri-net
    must
    the understanding of the stakeholders and project elements involved in decision making, which is
    be designedbygiven
    the understanding
    of the stakeholders
    project
    elements
    involved in decision
    performed
    decomposing
    a decision-making
    process intoand
    discrete
    events
    or decision-making
    stages
    making,
    which
    is
    performed
    by
    decomposing
    a
    decision-making
    process
    into
    discrete
    events
    or
    as shown in Figure 4. Using Petri-net as a tool, the decision-making stages are transformed into a set
    decision-making
    stages
    as shown
    in Figure
    4. Using
    Petri-net
    a tool,are
    the
    decision-making
    stages
    of
    place-transitions
    or simple
    Petri-net
    models,
    and these
    small as
    models
    compiled
    to construct
    the
    are
    transformed
    into
    a
    set
    of
    place-transitions
    or
    simple
    Petri-net
    models,
    and
    these
    small
    models
    are
    autonomous decision-making model. The utilization of Petri-net to represent decision-making models
    compiled
    to
    construct
    the
    autonomous
    decision-making
    model.
    The
    utilization
    of
    Petri-net
    to
    helps the decision-making process to be analyzed objectively and important stages of autonomous
    represent decision-making
    models helps
    theThese
    decision-making
    processare
    to be
    analyzed
    and
    decision-making
    are prominently
    shown.
    important stages
    identified
    asobjectively
    critical points
    important
    stages
    of
    autonomous
    decision-making
    are
    prominently
    shown.
    These
    important
    stages
    of autonomous decision-making. A critical point is influenced by the stakeholders’ properties and
    are identified
    criticalofpoints
    of autonomous
    A critical
    point
    is influenced
    the
    determines
    theasoutput
    the model,
    or whetherdecision-making.
    the model can reach
    the end
    of the
    network orby
    not.
    stakeholders’
    properties
    and are
    determines
    outputemployed
    of the model,
    or whetherbased
    the model
    reach
    The results
    of this paper
    going to the
    be further
    for simulations
    on thecan
    Petri-net
    the
    end
    of
    the
    network
    or
    not.
    model. The utilization of Petri-net in building the autonomous decision-making model is considered
    Theofresults
    of this paper
    to be
    forin
    simulations
    the Petri-net
    as one
    the effective
    ways are
    to going
    perform
    thefurther
    modelemployed
    simulation
    the futurebased
    study.on Some
    of the
    model.
    The
    utilization
    of
    Petri-net
    in
    building
    the
    autonomous
    decision-making
    model
    is
    considered
    stakeholders’ autonomous properties identified above such as motivation, leadership, and ability to
    as one of
    the effective
    the model
    simulationtoineach
    the stakeholder
    future study.
    Some of
    the
    manage
    information,
    areways
    goingtotoperform
    be assigned
    deterministically
    involved
    in the
    stakeholders’ autonomous
    properties
    as motivation,
    and
    to
    decision-making
    process and
    variousidentified
    outcomesabove
    from such
    the simulations
    willleadership,
    be observed
    inability
    order to
    manage
    information,
    are
    going
    to
    be
    assigned
    deterministically
    to
    each
    stakeholder
    involved
    in
    the
    identify the key conditions suitable for successfully achieving goals.
    decision-making process and various outcomes from the simulations will be observed in order to
    Acknowledgments:
    The authors
    are grateful
    for the comments
    and suggestions
    identify the key conditions
    suitable
    for successfully
    achieving
    goals. from three anonymous reviewers.
    The first author would like to extend her gratitude to the Ministry of Education, Culture, Sports, Science and
    Technology (MEXT), Japan, for supporting this study.
    Acknowledgments: The authors are grateful for the comments and suggestions from three anonymous
    Author
    Contributions:
    The manuscript
    by gratitude
    Niken Prilandita,
    under theofsupervision
    Tetsuo Tezuka
    reviewers.
    The first author
    would like is
    toprepared
    extend her
    to the Ministry
    Education, of
    Culture,
    Sports,
    and Benjamin McLellan, who assisted in co-authoring and improving paper.
    Science and Technology (MEXT), Japan, for supporting this study.
    Conflicts of Interest: The authors declare no conflict of interest.
    Author Contributions: The manuscript is prepared by Niken Prilandita, under the supervision of Tetsuo Tezuka
    and Benjamin McLellan, who assisted in co-authoring and improving paper.

    Conflicts of Interest: The authors declare no conflict of interest.

    Challenges 2016, 7, 9

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    Appendix
    Table A1 below listed the behaviors or characteristics that commonly associated with autonomous
    individual, or even used to define the concept of autonomy. The second column shows that these
    behaviors appeared or even mentioned as a prerequisite for succeeding a decision implementation
    based on various literature in decision-making, especially in the energy and environmental sector.
    The third column contain general definition of each behavior, which are useful for the cross-comparing
    process in Section 4.3.
    Table A1. Definition of elements of autonomous behavior.
    Autonomous Behavior

    Definition

    Mentioned in

    Self-governance

    Governance refers to the processes of interaction and
    decision-making among the actors involved in a collective
    problem that lead to the creation, reinforcement, or
    reproduction of social norms and institutions [59]. Therefore,
    self-governance defined as the capability of an individual or
    group to develop their own way to establish the governance
    and running it without intervention.

    [40]

    Self-control

    Refers to a set of processes that enable individuals to guide
    their goal directed activities over time and across changing
    contexts [60]. Often used interchangeably with
    self-regulation [61].

    [61–63]

    Self-learning

    The capability to perform the act of learning by oneself.
    Learning here defined as the acquisition of knowledge and/or
    skills that serve as an enduring platform for adaptive
    development and to comprehend and navigate novel
    problems [61].

    [15]

    Self-determination

    The capacity to choose and to have those choices, rather than
    reinforcement contingencies, drives, or any other forces or
    pressures, be the determinants of one’s actions.
    Self-determination often involves controlling one’s
    environment or one’s outcomes, but it may also involve
    choosing to give up control [64].

    [2,65]

    Table A2 below are the observed stakeholders’ properties existed in the successful cases of
    community project in energy-environmental management. The second column shows that these
    properties appeared or even mentioned as a prerequisite for succeeding a decision implementation
    based on various literature in decision-making, especially in the energy and environmental sector.
    The third column contain general definition of each properties, which are useful for the cross-comparing
    process in Section 4.3.
    Table A2. Definition of stakeholders’ general properties.
    Properties

    Mentioned in

    Definition

    Initiative

    [4]

    Behavior characterized by self-starting nature, proactive approach, and
    by being persistent in overcoming difficulties that arise in the pursuit of
    a goal [61].

    Motivation

    [3,4]

    Refers to the set of psychological processes governing the direction,
    intensity, and persistence of actions that are not due solely to
    overwhelming environmental demands that coerce or force action [61].

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    Table A2. Cont.
    Properties

    Mentioned in

    Definition

    Initiative

    [4]

    Behavior characterized by self-starting nature, proactive approach, and
    by being persistent in overcoming difficulties that arise in the pursuit of
    a goal [61].

    Motivation

    [3,4]

    Refers to the set of psychological processes governing the direction,
    intensity, and persistence of actions that are not due solely to
    overwhelming environmental demands that coerce or force action [61].

    Ability to
    organize

    [4]

    Capacity to coordinate, manage, facilitate, a particular object/tasks
    among group of people to reach a certain goal [61].

    Leadership

    [66,67]

    A set of role behaviors by individuals in the context of the group or
    organization to which they belong.
    The exercise of influence over others by utilizing various bases of social
    power, tactics, and so on in order to elicit the group members’
    compliance with certain norms and their commitment to achieve the
    group’s objectives [61].

    Ability to
    collect and
    understand
    information
    Communication
    ability

    [3]

    Capacity to collect and understand information without help from
    other parties.

    [4]

    Capacity to exchange in exchange information, form understandings,
    coordinate activities, exercise influence, socialize, and generate and
    maintain systems of beliefs, symbols, and values among members of
    institution/organizations [61].
    An attribute that an adult person is duty-bound to undertake [70].
    In environmental behavior, it defined as an individual sense of
    obligation or duty to take measures against environmental
    degradation [71].

    Responsibility

    [68,69]

    Trust

    [3]

    A generalized expectancy held by an individual or group that the word,
    promise, verbal, or written statement of another individual or group
    can be relied on [61].

    Interaction

    [72–74]

    A particular kinds of social relationship that are different from, but
    constitutive of, groups, organizations, and networks. Interaction occurs
    when two or more participants are in each other’s perceptual range and
    orient to each other through their action and activity [75].

    Collaboration

    [76,77]

    Collective action or effort performed by a group of people to solve
    problem or adjust environments in order to discover new mutually
    beneficial options [77].

    Openness

    [4]

    Referred as transparency to access information within organization,
    institution, or society [78]

    Commitment

    [79,80]

    Referred as the level of identification with, and attachment and loyalty
    to, an organization, an occupation, or some other feature of work [61].

    Local culture

    [61]

    Some shared set of characteristics in common to a particular group of
    people [61].

    Networking
    ability

    [73,81]

    Capacity to perform a process of contacting and being contacted by
    people in one’s social or technical/professional world and maintaining
    these linkages and relationships [61].

    Creativity

    [4,82,83]

    The generation of ideas or products that are both novel and appropriate
    (correct, useful, valuable, or meaningful) [61].

    Innovativeness

    [83,84]

    The degree to which an individual is relatively earlier in adopting new
    ideas than the other members of a system [85].

    Proximity

    [86,87]

    Referred to the spatial distance or familiarity of a certain object or
    problem to a person or group of person.

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    Figure
    Figure A1.
    A1. The
    ThePetri-net
    Petri-net model
    model drawn
    drawn using
    using Yasper
    Yasper (no
    (no simplification).
    simplification).

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    22 of 26
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    22 of 27

    Figure A2. The “Motivation” Subnet.

    Challenges 2016, 7, x

    Figure A2. The “Motivation” Subnet.

    Figure A3.
    A3. The
    The “Leadership”
    “Leadership” Subnet.
    Subnet.
    Figure

    23 of 27

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    23 of 26
    Figure A3. The “Leadership” Subnet.

    Figure A4. The “Information” Subnet.

    Figure A4. The “Information” Subnet.

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    ‫المملكة العربية السعودية‬
    ‫وزارة التعليم‬
    ‫الجامعة السعودية اإللكترونية‬

    Kingdom of Saudi Arabia
    Ministry of Education
    Saudi Electronic University

    College of Administrative and Financial Sciences

    Assignment-3
    MGT425-Spreadsheet Decision Modeling
    Due Date: 26/04/2025 @ 23:59 (End of Week 12)
    Course Name: Spreadsheet Decision
    Modelling
    Course Code: MGT425

    Student’s Name:

    Semester: Second

    CRN: 23745

    Student’s ID Number:

    Academic Year: 2024-2025 (1446 H)

    For Instructor’s Use only
    Instructor’s Name: Dr. Shahid Husain
    Students’ Grade: Marks Obtained / Out of 10 Level of Marks: High/Middle/Low
    General Instructions – PLEASE READ THEM CAREFULLY






    Restricted – ‫مقيد‬

    This is a single attempt assignment. In case of Wrong file, Incomplete File, Blank
    file submission student will not be given another attempt. It is fully your
    responsibility to submit the complete and correct file.
    The Assignment must be submitted on Blackboard (WORD format only) via
    allocated folder.
    Assignments submitted through email will not be accepted.
    Students are advised to make their work clear and well presented; marks may be
    reduced for poor presentation. This includes filling your information on the cover
    page.
    Students must mention question number clearly in their answer.
    Late submission will NOT be accepted.
    Avoid plagiarism, the work should be in your own words, copying from students
    or other resources without proper referencing will result in ZERO marks. No
    exceptions.


    Restricted – ‫مقيد‬

    All answered must be typed using Times New Roman (size 12, double-spaced)
    font. No pictures containing text will be accepted and will be considered
    plagiarism).
    Submissions without this cover page will NOT be accepted.

    Course Learning Outcomes-Covered
    Course Learning Outcomes (CLOs)

    Question

    Find some structured ways of dealing with complex managerial
    decision problems.
    Explain simple decision models and management science ideas
    that provide powerful and (often surprising) qualitative insight
    about large spectrum of managerial problems.
    Demonstrate the tools for deciding when and which decision
    models to use for specific problems.
    Build an understanding of the kind of problems that is tackled
    using Spreadsheet Modeling and decision analysis.

    Question-1

    Aligned (PLOs)
    MGT.K.1
    (1.1)
    MGT.K.3
    (1.2)
    MGT.S.1
    (2.1)
    MGT.V.1
    (3.1)

    Question-4

    Question-2
    Question-3

    Assignment Instructions:
    Assignment Questions: (Marks 10)
    PART-A:
    Data Exploration and Visualization (Critical Thinking)
    Question 1: “Business analysts must know how to use data to derive business insights and
    improve decisions” In context of this statement explain the vital reasons to use data by
    analysts in business organizations. (250-300 Words) (2.5-Marks)

    PART-B: Case Study
    • Log in to Saudi Digital Library (SDL) via University’s website
    • On first page of SDL, choose “English Databases”
    • From the list find and click on EBSCO database.
    • In the Search Bar of EBSCO find the following article:
    Title: “Modeling Autonomous Decision-Making on Energy and Environmental
    Management Using Petri-Net: Case Study”.
    Author: Niken Prilandita, Benjamin McLellan, Tetsuo Tezuka.

    Read the above case study and answer the following Questions:
    Question 2: Explain the autonomous decision-making process, its advantages and
    disadvantages (250-300 words) (2.5-Marks).

    Restricted – ‫مقيد‬

    Question 3: Discuss the Centralized and De-centralized Decision-Making Approaches with
    suitable examples (250-300 words). (2.5-Marks).

    Question 4: Why are the most decisions made on energy and environmental management
    known as the decisions of community interest. (250-300 words) (2.5-Marks).

    Answers:
    1.
    2.
    3.
    4.

    Restricted – ‫مقيد‬

    Purchase answer to see full
    attachment

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