Development of a Decision Support System for Sustainable Environmental Management and Stakeholder Engagement
Abstract
:1. Integrated Water Resources Management and the Situation in Ireland
2. ISWRM as a Decision Theory Problem and the Role of Integrated Land and Landscape Management
- Lack or absence of a stakeholder platform and/or a landscape investment facilitator who can plan and coordinate the necessary actions.
- Efficient communication with the key stakeholders. The will of decision-makers (DMs) and researchers to work together must be strengthened to efficiently frame the issues and address the challenges through system approaches.
- Integrated data and modelling that allows the inclusion of ILLM criteria into the planning process and the investment decision-making, providing the necessary information to the investor. The monitoring process must not be limited to the data gathering but should include monitoring of the management outcomes at a large scale.
3. FILLM: Description and Methods
- stakeholder analysis: the processes of public engagement, collaboration with local communities, development of a shared vision and its continuous communication;
- DSS: in a general context, this can include the actions needed for the characterisation and the programmes of measures, including monitoring, modelling, simulation, optimisation of measures and ranking the alternatives. It also includes the last stage, in the context of the continuous monitoring and examining of the system under alternatives, in order to provide flexible management.
4. Stakeholder Analysis
- Divide the stakeholders into groups based on different characteristics (e.g., how closely they are related to a proposed measure, how adaptive they seem to such changes, etc.).
- Work with them on a specific problem and explain it to the different groups (some groups will need more time), so that everyone reaches the same level of understanding.
- As indicated in the previous section, the techno-economic background is necessary to analyse the problem, relate it to technical, social, institutional, economic and environmental characteristics, and find their connections with the transformation process towards a more sustainable future situation.
- At this stage, the common vision arises naturally as the common desire for the features and expected results of this future situation overall, as well as with regard to each participant’s field.
- The ways to achieve this can be found in collaboration with the relevant expertise and may include (depending on the problem): behaviour change or adaptation, technical and technological solutions, nature-based solutions, changes in technical, economic, social or institutional frameworks, a search for financial resources, etc. This is a continuous process of overcoming obstacles through novelty and collaboration.
5. Decision Support Systems and Applications in ISWRM
- Cost–Benefit Analysis
- Optimisation
- Multicriteria Analysis
6. Challenges and Current Difficulties
- desired general modelling aspects: number of parameters, quantitative variables, qualitative variables, steps allowing stakeholder involvement, simplicity, accuracy, reliability (validation potential), development time, data collection time, input level (data requirements), reasonable computational power, no need of technical/expert support, plausibility of assumptions, management scenarios (alternative options), simulation of future conditions, extension with hydrological variables and extension with socio-economic variables;
- other model-specific parameters estimated/ evaluated, such as water demand, availability and balance, economic profits, water value, water quality, usefulness in the present situation and in the future and comprehensiveness to decision-makers.
7. Future Trends, Generalisation and Customisation
8. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
DSS | Reference/Developer | Main Purpose | Mapping | Surface Water | Groundwater | Water Quality | Hydropower | Water Demand | Social/ Economic Factors | Optimisation | Linking with Other Models 1 |
---|---|---|---|---|---|---|---|---|---|---|---|
CADSWES tools (RiverWare, RiverSmart, Demand Input Tool, etc.) | [80] | Hydrology planning and management tools for complex and detailed simulations | Node-based | Yes | No | Yes | Yes | Description of diversion requirements | No/no | Yes (linear) | * |
Iras | [81] | Interactive river–aquifer system and water quality | Node-based | Yes | Yes | Yes | No | Yes | No/no | No | * |
Integrated Quantity and Quality Model (IQQM) | [82] | Representation of river systems, no scenario analysis | Node-based | Yes | No | Yes | No | Yes | No/no | No | * |
Waterware | [83] | Assessment of exploitation limits and scenarios according to legislations | GIS-based | Yes | Yes | Yes | No | Yes | No/no | Yes | *** |
AquaTool | [84] | Hydrological plans and management of water resources, providing risk assessments | Node-based | Yes | Yes | Yes | Yes | Yes | No/no | Yes (linear and nonlinear) | ** |
REALM | [85] | Development of a modelling system for water supply systems | Node-based | Yes | Yes | No | No | Yes | No/yes | Yes (linear) | * |
Mulino | [86,87] | Integrating WFD1 objectives and environmental impacts, with geo-spatial information and MCA | GIS-based | No | No | No | No | No | Yes/no | No | - |
MODSIM | [88] | Solid mathematical background for distributing system flows | Node-based | Yes | Yes (MOD-FLOW) | Yes (QUAL-2E) | Yes | Yes | No/yes | Yes (linear) | ** |
Basins | [89] | A tool for watershed characterisation (land use, soil, pollutant loads and their transport) | GIS-based | Yes | Yes | Yes | No | No | No/no | No | ** |
Ribasim | [90] | Representation of watersheds’ behaviour under hydrologic conditions and evaluating measures | Node-based | Yes | No (needs linking with SEA-WAT) | Yes | No | Yes | No/no | No | * |
DSS for Water Resources Planning Based on Environmental Balance | [91] | Description, evaluation and assessment of water systems, considering legislation | GIS-based | No | No | Yes | No | Yes | Yes/yes | No | * |
A Spatial DSS for the Evaluation of Water Demand and Supply Management Schemes | [92] | Development of a unified software package for describing networks of water sources and users | GIS-based | Yes | Yes | No | No | No | No/no | No | - |
EnSIS | [93] | Surveillance and information system based on GIS | GIS-based | No | No | Yes | No | Yes | No/no | No | ** |
WEAP | [94,95] | Water balance model, assessing the performance of management scenarios | Node-based | Yes | Yes | Yes | Yes | Yes | No/yes | Yes | *** |
WaterStrategyMan | [96] | DSS for WFD1 requirements, emphasis on economic principles (e.g., cost recovery, pricing policies) | GIS-based | Yes | Yes | Yes | Yes | Yes | Yes/yes | No | - |
Hydronomeas | [97] | Integrated system simulation and optimisation | Node-based | Yes | Yes | No | Yes | Yes | No/yes | Yes (linear) | * |
WARGI | [98] | Water resources system, simulation of many hydrological scenarios. | GIS-based | Yes | Yes | No | Yes | Yes | No/no | Yes (linear or quadratic or mathematical programming) | * |
MIKE Hydro Basin | [99] | Simulation of surface, groundwater, water quality, water demand and optimisation of the system | GIS-based | Yes (linked with MIKE SHE) | Yes | Yes | Yes | Yes | No/no | Yes (excel solver) | ** |
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Field | Main Features–Effects | Role of Measures and BMPs | Indicative Literature |
---|---|---|---|
Disasters | Floods, droughts, pollution | Forecast, protection, warning, prevention, evaluation, restoration | [10,11] |
System Analysis | Management in watershed/ river basin level | Optimising system’s efficiency and performance under specific criteria | [12] |
Transboundary waters and water rights | Different demands and pressures | Balancing interests through fair agreements | [13] |
Resources Allocation | Covering competitive demands with available resources | Combination and management of surface and groundwater use, water conservation (maximum profits, minimum costs) | [14] |
Water storage works | Dams and reservoirs (design, operation, hydropower, pollution control) | Different strategies for the optimum performance and efficiency | [15] |
Water distribution | Pipelines (open, closed), pumping stations, networks, diversions | Optimum design, operation, pollution control, damage and leakage control | [16] |
Water quality | Wastewater treatment, desalination, tracking pollutants, river and deltas control, lakes and wetlands quality, nature-based solutions | Optimum design, performance, protection, warning, prevention, restoration, control of point and non-point pollution sources | [17] |
Soil–land | Land use and land cover changes, deforestation, erosion, deposition, desertation | Protection, prevention, evaluation, restoration (reforestation), surface roughening, | [18] |
Air–atmosphere | Air pollution, climate change, extreme weather conditions | Monitoring, forecast, protection, warning, prevention, evaluation, restoration | [19] |
Biology–ecology | Stream ecology, ecohydrology, ecological flow, habitat (fishes, macroinvertables, diatoms), riparian areas, ecosystems | Monitoring, modelling, fish passages, retaining riparian vegetation, control of point and non-point pollution sources | [20,21,22] |
Socio-economic aspects | Costing, payments, project investments, environmental evaluation, pricing, rights and shares, distribution | Different policies, alternative ways, methods and applications | [23] |
Policy and governance | Combining the above into strategies, informing, education, public participation, collaborative modelling | Evaluating alternatives, globally optimum solutions, planning, legislations, game theory approaches | [24] |
Other cross-disciplinary fields, such as ecohydrology, socio-hydrology, climate change impacts, water–energy–food nexus, etc., combining the above BMPs and decisions | [25] |
Stages | Description/Methods–Recommendations | |
---|---|---|
Public engagement
| Raising awareness and sharing knowledge on the major problems of the catchment related to the FILLM’s components. Local communities and key representatives must be involved in social and environmental learning and decision-making by using participatory processes. Meetings with groups can identify the optimum paths to achieving both “improvement” and “protection” objectives. Stakeholders need to see commitment and receive training in each of the FILLM’s components to understand their businesses’ interactions and effects. Going from a “single-profit” to a “team growth” mindset. | Desk study, including relevant papers (short reviews). Scientific support for the meetings: >Techno-economic background for catchment and management issues. >Social background for legislation issues, stakeholder mapping, grouping and training. >Support from a respective software to monitor and assess the groups, opinions and progress (see next section). |
Developing a shared vision
| The previous stage is a continuous process, so each of the following ones must be communicated to the public, accordingly. This stage is a component of the public engagement.The existing legislation must also be communicated to clarify under which framework we can act, or what we would need to modify. | |
Characterisation at catchment scale
| This is a multi-disciplinary process and collaboration with relevant public bodies is mandatory. Data gathering, developing databases and organising them to create an integrated catchment inventory is the first and most important step. Monitoring processes will need to be initiated and continued. Data analysis. Integrated modelling is essential to understand the system’s functions, interactions, uncertainties, pressures and drivers. This must include the natural (environmental) components, but also the socio-economic modelling aspect. With the knowledge of the system’s causes–effects, local-scale measures will naturally come up and be evaluated. | This needs specific tools and the cooperation of different scientists to combine the FILLM’s components into models (see next section). >Engineering, meteorology, hydrology, bio-physical sciences (hydrogeology, soil science, bio-ecology, hydrochemistry, etc.). >Socio-economics, environmental economics, multi-agent modelling, etc. >Case-specific expertise (e.g., drainage systems, agronomic science, coastal science, etc.). |
Programmes of measures
| The integrated modelling of the previous step is the basis. 1. Simulate the existing measures and management actions, in order to quantify their effects and evaluate them based on predefined criteria. 2. Examine the mandatory and suggested measures included in the RBMPs. 3. Develop new possible management options. BMPs can include nature-based solutions, environmentally friendly techniques, cost-effective practices and protection–mitigation options. 4. Test these further using uncertainty analysis and future conditions (e.g., climate change). 5. Undertake assessments, as required by the Habitats and Strategic Environmental Assessment Directives, as appropriate. 6. Optimise the measures based on multi-objective objective functions, using all the necessary constraints, considering the spatial distribution. 7. Develop a DSS to rank the measures based on the predefined integrated criteria—multicriteria analysis (MCA). | Strong modelling skills, holistic understanding and judgment are required. >Steps 1, 2 and 4 are a repetition of the previous stage, under different conditions (measures = modelling scenarios). >Steps 3 and 5 can be desk-based interactive processes with the other steps. >The last two steps are the most challenging because they require the setting the of the optimisation’s objective function and of the constraints, the manipulation of the data accordingly and the selection of the best optimisation method. The criteria of the MCA must include all the inputs from the previous steps (stakeholder input, environmental and economic modelling) and the most appropriate method must be selected. |
Policy, Regulations and Incentives
| Identify possible policy/regulatory gaps. Develop solid suggestions for modifications, using the results of the previous stage’s models. Their combination with the input from the public engagement and vision stages and the proof that the suggestions are socially acceptable measures and enhance the local economy and environment must be the basis for any change. Top-down or bottom-up approaches can be used or combined. Principles such as “public money for public goods” and using “results-based payments” can be considered as means of achieving the desired outcomes. | The scientific support of the proposed measures from the techno-economic background can be a basis for the social-political science to provide/modify/approve and support the actions through incentives and policy regulations. This stage is subject to each case’s policy, and there are numerous paths for the application (e.g., from start-ups relevant to implementing the measures to horizontal measures approaches). |
Tracking the progress
| Inspections are an extension of the FILLM’s actions, based on and considering the characterisation results. The same can be said with regard to continuous monitoring and modelling. The observations regarding each action must be communicated to the stakeholders, thus continuing the regular meetings. Flexible management: adjustments and “plan Bs”, if necessary. For this reason, the whole process may need to be repeated, but if the meeting routine and the models exist, there will not be any delays. Having already set the tools of the previous stages will make the management flexible and will make it possible to move very quickly to alternative options, with “known” (simulated) results. | >Specialised and trained inspectors combine the backgrounds mentioned in the previous stages. Communication among scientists is essential to ensure the “same language” and scope. >Use metrics (based on models) to track and evaluate progress and analyse trends and outcomes. >Update the previous stages based on the observed changes (e.g., models, stakeholders, etc.) and make the necessary application adjustments (flexibility). |
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Alamanos, A.; Rolston, A.; Papaioannou, G. Development of a Decision Support System for Sustainable Environmental Management and Stakeholder Engagement. Hydrology 2021, 8, 40. https://doi.org/10.3390/hydrology8010040
Alamanos A, Rolston A, Papaioannou G. Development of a Decision Support System for Sustainable Environmental Management and Stakeholder Engagement. Hydrology. 2021; 8(1):40. https://doi.org/10.3390/hydrology8010040
Chicago/Turabian StyleAlamanos, Angelos, Alec Rolston, and George Papaioannou. 2021. "Development of a Decision Support System for Sustainable Environmental Management and Stakeholder Engagement" Hydrology 8, no. 1: 40. https://doi.org/10.3390/hydrology8010040
APA StyleAlamanos, A., Rolston, A., & Papaioannou, G. (2021). Development of a Decision Support System for Sustainable Environmental Management and Stakeholder Engagement. Hydrology, 8(1), 40. https://doi.org/10.3390/hydrology8010040