Studying, Teaching and Applying Sustainability Visions Using Systems Modeling
Abstract
:1. Introduction
2. The Modeling Approach
2.1. Sustainability Modeling and Current Applications
- (1)
- The process of model framing and construction, where decisions must be made about system boundaries, what to include in the model and how to couple model components;
- (2)
- The formal articulation of assumptions and uncertainties about the system in question;
- (3)
- The visualization of the underlying structure and connectivity of the system;
- (4)
- The exposure, through visualization of model behavior, of system characteristics, such as unexpected outcomes and response thresholds.
2.2. Vision Modeling
- (1)
- Ensure that the vision is composed of compatible goals, free of conflicts and trade-offs (i.e., coherence);
- (2)
- Reinforce and serve as checks on the plausibility of the visioning goals, because model components must be based on realistic constraints;
- (3)
- Make sure the visioning outcomes are tangible, largely through simulation runs of the model and viewing the targets graphically;
- (4)
- Help to categorize how the specific system components are prioritized and nuanced, through both qualitative and quantitative parameterization of the model that determines which outcomes are sensitive to which assumptions and by how much.
3. Applying Modeling
3.1. A Tiered Approach to Modeling Sustainability Visions
- (A)
- Conceptual and rapid prototype vision models: Conceptual models (as per Figure 1) are qualitative diagrammatic representations of the connections among the various model components. Conceptual models of future desirable states provide structural representations of vision components and system relationships. They are helpful to structure and organize components of the vision and to check for missing components and inconsistencies (i.e., conflicts and trade-offs) among components. Easiest to construct, conceptual models are the most commonly utilized approach for incorporating systems thinking into participatory settings. Techniques, such as influence matrices and trade-off assessments, explore the interrelations among vision components to identify potential conflicts, trade-offs and synergies [22]. Causal loop conceptual diagrams are used to visualize systemic characteristics, which allows for better identification of potential intervention points associated with highly influential systemic features, such as feedback loops, downstream factors and network structure [23,24]; actor-oriented and sustainability constellation conceptual models incorporate specific actors, rules, norms, needs, wants, resources, technologies and actions in assessing beneficial and adverse effects [9,15,24,25]. Conceptual approaches are typically qualitative representations of a system structure, but relative quantifications may be used to make more nuanced inferences on conflicts, trade-offs and interventions [26].
- (B)
- Dynamic vision models (functional, with input-output correspondence): Building on the conceptual modeling approach, dynamic models (as per Figure 1) are built and parameterized, such that the “running” models simulate the dynamics of complex interactions among the system components [23,24]. This increased articulation allows participants to better anticipate non-intuitive outcomes, such as “hidden” conflicts, due to thresholds or non-linearities, which emerge from the inter-relationship of system components.Parameters for dynamic vision models are selected from evidence-based and empirical work, allowing the vision components and interactions to be more relevant to the real world (i.e., grounded by reality). This enhances the coherence and plausibility of simulated outcomes. Techniques, such as sensitivity analysis and cross-impact analysis [27], inform the selection of indicators, targets and interventions based on how sensitive they are to change and the implications of emergent interactions. An important outcome of dynamic visions models is future projections of systems dynamics and normative trade-offs that emerge from the simulations (Arrow 3 in Figure 2). By simulating potential trajectories of visions, participants can explore the plausibility and viability of diverse envisioned future states. Undesirable or unrealistic trajectories may require a review of certain parameters and underlying assumptions or a return to the conceptualization of the vision (Arrow 3 in Figure 1). Dynamic vision models are constructed to further improve the specificity and coherence of the conceptual vision models, allowing participants to examine the viability and plausibility of the vision.
- (C)
- Pathways of vision models: More cogent assessments of plausibility require the characterization of the sustainability gap between envisioned goals and initial conditions (see [28]; Figure 2). Pathways of vision models may be either qualitatively crafted from conceptual models or quantitatively simulated using dynamic vision models (Figure 1). These pathways are distinct from the potential future trajectories simulated by dynamic vision models (Arrows 2 and 4 versus Arrow 3 in Figure 2). Vision model pathways are simulated backwards (i.e., from the vision to the present conditions) through a heuristic process of identifying the components and conditions that need to be in place in order to achieve the vision (e.g., actions, policies, technologies, institutions). Using this procedure, it is likely that some of the pathways that are directed backward from the vision will not intersect with current state conditions, and the difference between the two is what we call the “reality gap” (Figure 2). The models thus become a critical tool in also identifying how disparate (and in what way) future ambitions may be from what is actually plausible (i.e., the “sustainability gap” in Figure 2).This approach is also distinct from, but potentially complementary to, backcast modeling, where pathways starting from the current state intersect with pre-determined envisioned future goals (Arrow 5 in Figure 2). Conducting both scenario pathway approaches (backcast modeling and vision modeling) may increase the number of potential interventions and options that are available. A comparative approach that contrasts vision pathways with those from other scenario approaches may also enhance the understanding of how the balance of deterministic and normative perspectives can shape scenario outcomes. One example of this is enhanced understanding of how starting from current state conditions affects the resulting visions. The emphasis of the pathways approach, however, is not merely to better understand methodological distinctions among scenario approaches, but also to enhance the process of visioning by rigorously describing and scrutinizing the visions using systems modeling. The purpose of the pathways approach is to increase the relevance of the vision by exploring and articulating what is needed to achieve a desirable, plausible and sustainable future.
3.2. Engaging Participants in Sustainability Vision Modeling
4. Real-World Examples of Modeling Sustainability Visions
Project Name | Phoenix General Plan Visioning Study | ASU Sustainable Ecosystems undergraduate course |
---|---|---|
Project setting: | Urban planning research | Sustainability education |
Project goal: | Develop rigorous visioning process and product | Teach sustainability education competencies |
Goal criteria: | Sustainability visioning quality criteria [1] | Sustainability education competencies [34] |
Explicit role of vision modeling: | Addressing systemic criterion | Teaching systems thinking competency |
Engagement setting: | Participatory modeling (fifteen two-day village workshops and one one-day city-level workshop) | Group modeling (in-class) 28–35 students per class Groups of 3–5 students |
Vision modeling approach (scope: scale): |
|
|
Modeling methods: |
|
|
Outcomes: | Systems conflict and trade-off revisions to the vision; participants (self-assessment survey) and practitioners (debriefing) reported enhanced systems perspective | Pre- and post-assessments demonstrated enhanced capacity for systems thinking and anticipatory competency building |
4.1. Urban Planning Example: Phoenix General Plan
- (1)
- Causal loop diagrams and network analysis were used to analyze the overall system structure and relationships among the vision elements;
- (2)
- Consistency analysis was performed using influence matrices to identify trade-offs and synergies among vision elements;
- (3)
- Diversity appraisal was used to identify similarities and differences among the vision models from different stakeholder groups (e.g., heterogeneity among the fifteen village visions).
- (1)
- Familiarize themselves with their group’s subsystem by providing visualization and narratives of the vision elements, relationships and overall subsystem;
- (2)
- (3)
- Appraise the sustainability of the final negotiated vision by responding to open-ended questions based on sustainability principles (informal appraisal).
4.2. Education Example: Sustainable Ecosystems Course
5. Discussion and Synthesis
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Iwaniec, D.M.; Childers, D.L.; VanLehn, K.; Wiek, A. Studying, Teaching and Applying Sustainability Visions Using Systems Modeling. Sustainability 2014, 6, 4452-4469. https://doi.org/10.3390/su6074452
Iwaniec DM, Childers DL, VanLehn K, Wiek A. Studying, Teaching and Applying Sustainability Visions Using Systems Modeling. Sustainability. 2014; 6(7):4452-4469. https://doi.org/10.3390/su6074452
Chicago/Turabian StyleIwaniec, David M., Daniel L. Childers, Kurt VanLehn, and Arnim Wiek. 2014. "Studying, Teaching and Applying Sustainability Visions Using Systems Modeling" Sustainability 6, no. 7: 4452-4469. https://doi.org/10.3390/su6074452
APA StyleIwaniec, D. M., Childers, D. L., VanLehn, K., & Wiek, A. (2014). Studying, Teaching and Applying Sustainability Visions Using Systems Modeling. Sustainability, 6(7), 4452-4469. https://doi.org/10.3390/su6074452