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Multi-criteria decision analysis to select metrics for design and monitoring of sustainable ecosystem restorations
Affiliation:1. University of Bucharest, Faculty of Geography, 1 Nicolae Bălcescu Avenue, 010041 Bucharest, Romania;2. National Institute of Hydrology and Water Management, 97E Şoseaua Bucureşti-Ploieşti, 013686 Bucharest, Romania;3. University of Grenoble Alpes, Institut des Géosciences de l''Environnement, 460 Rue de la Piscine, Domaine universitaire, 38058 Grenoble Cedex 9, France;4. Romanian Academy, Institute of Geography, 12 Rue Dimitrie Racoviță, 023994 Bucharest, Romania;1. College of Mechanical and Transportation Engineering, China University of Petroleum-Beijing, Beijing 102249, China;2. Offshore Oil and Gas Research Center, China University of Petroleum-Beijing, Beijing 102249, China;3. Department of Mechanics and Engineering Science, Fudan University, Shanghai 200433, China
Abstract:The selection of metrics for ecosystem restoration programs is critical for improving the quality and utility of design and monitoring programs, informing adaptive management actions, and characterizing project success. The metrics selection process, that in practice is left to the subjective judgment of stakeholders, is often complex and should simultaneously take into account monitoring data, environmental models, socio-economic considerations, and stakeholder interests. With limited funding, it is often very difficult to balance the importance of multiple metrics, often competing, intended to measure different environmental, social, and economic aspects of the system. To help restoration planners and practitioners develop the most useful and informative design and monitoring programs, we propose the use of multi-criteria decision analysis (MCDA) methods, broadly defined, to select optimal ecosystem restoration metric sets. In this paper, we apply and compare two MCDA methods, multi-attribute utility theory (MAUT), and probabilistic multi-criteria acceptability analysis (ProMAA), for a hypothetical river restoration case study involving multiple stakeholders with competing interests. Overall, the MCDA results in a systematic, quantitative, and transparent evaluation and comparison of potential metrics that provides planners and practitioners with a clear basis for selecting the optimal set of metrics to evaluate restoration alternatives and to inform restoration design and monitoring. In our case study, the two MCDA methods provide comparable results in terms of selected metrics. However, because ProMAA can consider probability distributions for weights and utility values of metrics for each criterion, it is most likely the best option for projects with highly uncertain data and significant stakeholder involvement. Despite the increase in complexity in the metrics selection process, MCDA improves upon the current, commonly-used ad-hoc decision practice based on consultations with stakeholders by applying and presenting quantitative aggregation of data and judgment, thereby increasing the effectiveness of environmental design and monitoring and the transparency of decision making in restoration projects.
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