Computational Decision Support for Socio-Technical Awareness of Land-Use Planning under Complexity—A Dam Resilience Planning Case Study
Abstract
:1. Introduction
1.1. Providing Computational Decision Support: The Proposed Solution
1.2. Understanding Dam System Projects as Cross-Disciplinary and Social-Cultural Endeavors: A Use Case to Proof the Feasibility and Concept
1.3. Overview of the Proposed Method, Process, and Tools
2. Methodology: Process and Tools Supporting Land-Use Planning and Management
2.1. The Need for Cross-Disciplinary Solutions
- (1)
- The recognition of the inherent complexity of nature and society, and the inability of reductionism to cope with these challenges;
- (2)
- Exploring problems and questions that are not confined to a single discipline;
- (3)
- Growing societal problems that require a broader approach on a shorter time scale;
- (4)
- The emergence of new technologies that are applicable in more than one discipline.
2.2. The Need to Ensure Social and Economic Equity in Land-Use Planning
- The land-use project is clearly defined and described. All affected stakeholders are identified.
- All stakeholders voice their concerns, but also provide positive feedback. It is important that all input is captured and whenever possible, including the reasons and beliefs for all opinions being considered. As a result, the various stakeholder groups, their objectives and their belief systems are documented.
- The land-use project is adapted to avoid as many negative impacts as possible while ensuring a majority of positive impacts all under the constraints of the public need for the project itself. All negative impacts are captured in a protocol to be used for the critique and iteration step. In this step, the artificial society is populated with the land-use project data as well as with the representations of the former identified stakeholder groups.
- A plan is generated for the land-use project and visualized with all identified effects for the experts as well as for the stakeholders. The execution of the populated artificial society via simulation is part of this step.
- Using the interactive visualization and the protocol with the remaining concerns, the plan can now be calibrated and tailored to provide maximal benefit while avoiding doing harm.
2.3. Artificial Societies as a Computational Decision Support Tool
- Individual agents reflecting the demographics and attributes of interest;
- The situated environment with its infrastructure and social determinants;
- The social networks in which an individual is engaged.
2.4. A Dynamic Data Analytics Framework
2.5. Summarizing the Method
- Each group identified while analyzing the problem situation should be represented as a social network in the simulation.
- The construction of the problem space is used to instantiate the simulation and identify the challenges. The boundary conditions, parameter types, parameter values, state changes, and structure are used to define the simulation configuration. Data analytics needs to support this step.1
- Populating the artificial society results in designing the solution space results in alternative scenarios, and identifying alternative metrics results in alternative ways of evaluating the results. Both scenarios and metrics are used to configure the simulation system through alternative initialization and evaluation.
- The different scenarios are then executed, explored, and visualized. This includes using the different evaluation criteria expressing diverse stakeholder values and expert judgments, leading to an iterative process that promotes the critique of various options. What is technically very promising may result in hardships for under-served communities that otherwise would not have been discovered until after the solution is in place. Data analytics help to make sense of the rich set of data provided by the artificial society simulation.
3. Applying the Method, Process, and Tool to Address the Multiple Viewpoints of Dam System Stakeholders
3.1. Multiple Viewpoints of Dam System Stakeholders
3.1.1. The Edenville and Sanford Dams
3.1.2. The Pickering Creek Dam
4. Results
4.1. The Edenville and Sanford Dams
4.2. The Pickering Creek Dam
4.3. Application of Method and Tool Support
5. Discussion
- Project documentation: A project is well documented when all aspects of a complex, cross-disciplinary, socio-economic, and socio-cultural project are addressed by the method, brought into the project through the process, captured in the tool, and presented in analytics feedback to project leaders.
- Cross-disciplinary expert integration: Socio-technical systems require input from various disciplines. The proposed process helps identify the various inputs of such experts and integrate their insights into the tool, either as complementary or as competing solutions.
- Equity and democratization: Minority groups and under-served communities obtain a place at the table with all other affected social groups, contributing their values and objectives as well as their lived experiences via the process into the tool, so that the project leadership can consider these views as decision parameters within the project.
- Project management: The what-if analysis capability provided by the tool promotes both the evaluation of various options and the communication of results using interactive and immersive visualization. This supports balanced trade-offs between stakeholder perspectives. Furthermore, the expected behavior projected by the tool can serve as a guide for tracing actual project developments.
- Coordination of responsibilities: As the examples suggest, the management of socio-technical systems is complicated by having many uncoordinated stakeholders. However, these are also entangled with many organizations responsible for certain aspects of the system, yet not under common leadership. Capturing the responsible organizations in the tool promotes the coordination of their actions. In particular, when responsibilities change or new organizations enter the project, the tool can rapidly bring newcomers up to speed, facilitating their understanding of the possible effects of policy decisions.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
1 | In the healthcare example [25], more than 40 million research articles were scanned, resulting in the identification of 250 highly vetted articles that were used to identify attributes, parameters, and state change options. |
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Stakeholder | Objectives | Challenges |
---|---|---|
Federal Energy Regulatory Commission (FERC) | Regulation of hydropower dams | Differing hazard regulations from state dam safety programs |
MI Environment, Great Lakes, and Energy | Regulation of non-federal, non-hydropower dams, water quality, fishing, wildlife protection | Differing hazard regulations from state dam safety program; balancing the protection of endangered species, permitted uses, and water quality |
Residents | Boating, fishing, hiking, wildlife viewing, swimming, housing prices | Ownership of the lake bottom and access are split across multiple parties, making lake level preferences potentially contentious; recreational use may also be in conflict with water quality and wildlife best practices; residents are also in need of safe transportation routes and flood prevention |
Local businesses | Increased business due to area visitors | Speed of regulatory approval of restoration plans |
Army Corps of Engineers | Identify flood impact reduction activities and projects | Four Lakes Dams are not flood control dams, but USACE is responsible for flood impact reduction |
Department of Transportation | Functioning transportation systems | Costs of temporary access development, road repair, erosion control, stormwater management |
Emergency responders | Emergency response access and information awareness | Under FERC, some information is protected under infrastructure laws [46] |
Local development agencies | Expanding economic and social development | Proportion of impervious land use affecting watershed management flood control |
Stakeholder | Objectives | Challenge |
---|---|---|
Pennsylvania Department of the Environmental Protection | Regulation of non-federal, non-hydropower dams, water quality, fishing, and wildlife protection | State dam safety program inspections; balancing the protection of endangered and threatened species, permitted uses, and water quality |
Residents | Boating, fishing, hiking, wildlife viewing, swimming, and housing prices | Recreational use restrictions such as fishing and hiking; loss of transportation, evacuation services; flood mitigation |
Local business | Increased business due to area visitors | Recreational use restrictions, loss of transportation, supply chain services |
Local water utility | Maintain drinking water resource | Residential use of reservoir for non-drinking water uses, flood impact reduction |
Department of Transportation | Functioning transportation systems | Costs of temporary access development, road repair, erosion control, stormwater management |
Emergency responders | Emergency response access and information awareness | Consistent and timely messaging of emergency notifications, access to emergency routes |
Local development agencies | Expanding economic and social development | Proportion of impervious land use affecting watershed management flood control |
Stakeholders | Challenge | Scenario | Tool Support | Result |
---|---|---|---|---|
Residents | Access to resources | Shared resource spaces | Visualization of resource utilization | Trade-off and compromises on resource access |
Minority groups | Protection of culturally important landmarks (burial grounds, religious place, etc.) | Creating protected areas | Visualization of protected areas for awareness | Trade-off and analysis of compromises |
Utilities | Flood mitigation | Shared cost of maintaining and improving the dam for multiple uses (e.g., flood mitigation, water resources, hydropower) | Shared cost models reflecting the various objectives of social and economic groups | Trade-off between the multi-objective challenges |
Regulators | Emergency evacuation | Updated emergency alert plan and timeliness | Simulation of “what-if” cases for emergency situations | Alignment of emergency alert plans between all social groups |
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Tolk, A.; Richkus, J.A.; Shults, F.L.; Wildman, W.J. Computational Decision Support for Socio-Technical Awareness of Land-Use Planning under Complexity—A Dam Resilience Planning Case Study. Land 2023, 12, 952. https://doi.org/10.3390/land12050952
Tolk A, Richkus JA, Shults FL, Wildman WJ. Computational Decision Support for Socio-Technical Awareness of Land-Use Planning under Complexity—A Dam Resilience Planning Case Study. Land. 2023; 12(5):952. https://doi.org/10.3390/land12050952
Chicago/Turabian StyleTolk, Andreas, Jennifer A. Richkus, F. LeRon Shults, and Wesley J. Wildman. 2023. "Computational Decision Support for Socio-Technical Awareness of Land-Use Planning under Complexity—A Dam Resilience Planning Case Study" Land 12, no. 5: 952. https://doi.org/10.3390/land12050952
APA StyleTolk, A., Richkus, J. A., Shults, F. L., & Wildman, W. J. (2023). Computational Decision Support for Socio-Technical Awareness of Land-Use Planning under Complexity—A Dam Resilience Planning Case Study. Land, 12(5), 952. https://doi.org/10.3390/land12050952