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首页> 外文期刊>Water Resources Management >An Entropy-Based Approach to Fuzzy Multi-objective Optimization of Reservoir Water Quality Monitoring Networks Considering Uncertainties
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An Entropy-Based Approach to Fuzzy Multi-objective Optimization of Reservoir Water Quality Monitoring Networks Considering Uncertainties

机译:考虑不确定性的基于熵的水库水质监测网模糊多目标优化方法

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摘要

In this study, a new fuzzy methodology for a multi-objective optimization of reservoir Water Quality Monitoring Stations (WQMS) was developed, based on Transinformation Entropy (TE), the IRanian Water Quality Index (IRWQI), and fuzzy social choice considering uncertainties. The approach was utilized in the Karkheh Dam reservoir in Iran. The objective functions were: 1) minimizing costs, 2) minimizing redundant information and uncertainties, and 3) maximizing the spatial coverage of the network. A CE-QUAL-W2 model was used for the simulation of water quality variables. The IRWQI was computed to reveal a complete picture of the reservoir water quality. The TE quantities were calculated for each pair of potential stations. The TE values were plotted against the spatial distances among potential WQMS to obtain the TE-Distance (TE-D) curve, and minimize redundant information among stations, while providing coverage of the entire network. A multi-objective Genetic Algorithm (NSGA-II) was applied to obtain Pareto-optimal solutions taking stakeholder preference into account. The most preferred solution was then obtained using fuzzy social choice approaches to achieve a consensus. The fuzziness embedded in the decision-making procedure, the uncertainty in the value of mutual information, and the uncertainty in identifying the optimal distance among WQMS were also investigated. Results indicated that the three fuzzy social choice approaches (Borda Count, Minimax, and Approval Voting) led to the same number of optimized WQMS in each fuzzy alpha-cut. Based on the fuzzy linguistic quantifiers method, the number of optimized WQMS was increased.
机译:在这项研究中,基于转换信息熵(TE),伊拉尼亚水质指数(IRWQI)和考虑不确定性的模糊社会选择,开发了一种用于水库水质监测站(WQMS)多目标优化的新模糊方法。该方法已在伊朗的Karkheh大坝水库中使用。目标功能是:1)最小化成本,2)最小化冗余信息和不确定性,3)最大化网络的空间覆盖。 CE-QUAL-W2模型用于模拟水质变量。计算IRWQI可以揭示水库水质的完整情况。计算每对潜在站的TE量。相对于潜在WQMS之间的空间距离绘制TE值,以获得TE距离(TE-D)曲线,并在提供整个网络覆盖范围的同时,最小化站点之间的冗余信息。应用了多目标遗传算法(NSGA-II),以考虑利益相关者的偏好获得帕累托最优解。然后使用模糊的社会选择方法获得了最优选的解决方案,以达成共识。还研究了决策过程中的模糊性,相互信息价值的不确定性以及确定WQMS之间最佳距离的不确定性。结果表明,三种模糊的社会选择方法(Borda Count,Minimax和Approval Voting)在每个模糊的Al-cut中导致了相同数量的优化WQMS。基于模糊语言量词方法,增加了优化的WQMS数量。

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