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Development of a multi-objective optimization tool for the selection and placement of BMPs for nonpoint source pollution control

机译:开发用于非点源污染控制的BMPS选择和放置BMP的多目标优化工具

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Nonpoint source (NFS) pollution from agricultural areas can be minimized by the implementation of best management practices (BMPs) at the source (farm), by controlling the movement of pollutants from the agricultural areas into the receiving bodies. However, selection and implementation of BMPs in every farm, to achieve cost effective A/PS pollution reduction in a watershed may be a daunting task. This typically requires obtaining an optimal solution, from the many million solutions that are possible, that is ecologically effective and economically feasible for the placement of BMPs. The previous works done to solve this problem have used genetic algorithms (GA) for optimizing the two objectives of: 1) pollution reduction and 2) cost increase. But most of the works have considered the two objectives individually during the optimization process by introducing a constraint on the other objective. This approach of finding an optimal solution is not practical as the constrained objective results in a decrease in the degree of freedom in the solution space. In the present work the optimization is performed by considering the two objectives simultaneously. A multi-objective genetic algorithm (NSGA-II) was used to optimize the two objectives which gave atradeoff between the two objectives fora range of optimal pollution reduction alternatives and their corresponding cost for implementation of BMPs. The model was used for the selection and placement of BMPs in L'Anguille River Watershed, Arkansas, USA for total phosphorus (TP) reduction. The most ecologically effective solution from the model had a TP reduction of 33% from the base scenario for a BMP implementation cost of 14 million dollar. The tradeoff was obtained between the two optimized objectivefunctions which can be used to achieve desired water quality goals with the minimum BMP implementation cost for the watershed.
机译:通过在源(农场)的最佳管理实践(BMP),通过控制从农业区域进入接收机构的污染物的运动来最大限度地减少农业领域的非点源(NFS)污染。然而,在每个农场中的BMPS选择和实施,以实现分水岭的成本效益A / PS污染可能是一个艰巨的任务。这通常需要从可能的数百万个解决方案中获得最佳解决方案,这对于放置BMPS是生态有效和经济上可行的。解决此问题的先前工作已经使用了遗传算法(GA)来优化以下两个目标:1)污染减少和2)成本增加。但是,大多数作品通过向其他目标引入约束,在优化过程中审议了两个目标。这种寻找最佳解决方案的方法是不实际的,因为约束目标导致解决方案空间中的自由度的降低。在本工作中,通过同时考虑两个目标来执行优化。使用多目标遗传算法(NSGA-II)来优化两种目标,这两个目标在两个目标之间进行了一系列最佳污染还原替代品的范围及其实施的BMP的相应成本。该模型用于选择和放置BMPS在L'Anguille河流域,Arkansas,Arkansas,用于总磷(TP)减少。来自该模型的最生态有效的解决方案从基本方案的TP减少了33%,用于BMP实施成本为1400万美元。在两种优化的目标函数之间获得权衡,可用于实现具有流域的最低BMP实施成本的所需水质目标。

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