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Spatial Multiobjective Optimization of Agricultural Conservation Practices using a SWAT Model and an Evolutionary Algorithm

机译:基于SWAT模型和进化算法的农业保护实践空间多目标优化

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摘要

Finding the cost-efficient (i.e., lowest-cost) ways of targeting conservation practice investments for the achievement of specific water quality goals across the landscape is of primary importance in watershed management. Traditional economics methods of finding the lowest-cost solution in the watershed context (e.g.,5,12,20) assume that off-site impacts can be accurately described as a proportion of on-site pollution generated. Such approaches are unlikely to be representative of the actual pollution process in a watershed, where the impacts of polluting sources are often determined by complex biophysical processes. The use of modern physically-based, spatially distributed hydrologic simulation models allows for a greater degree of realism in terms of process representation but requires a development of a simulation-optimization framework where the model becomes an integral part of optimization.Evolutionary algorithms appear to be a particularly useful optimization tool, able to deal with the combinatorial nature of a watershed simulation-optimization problem and allowing the use of the full water quality model. Evolutionary algorithms treat a particular spatial allocation of conservation practices in a watershed as a candidate solution and utilize sets (populations) of candidate solutions iteratively applying stochastic operators of selection, recombination, and mutation to find improvements with respect to the optimization objectives. The optimization objectives in this case are to minimize nonpoint-source pollution in the watershed, simultaneously minimizing the cost of conservation practices. A recent and expanding set of research is attempting to use similar methods and integrates water quality models with broadly defined evolutionary optimization methods3,4,9,10,13-15,17-19,22,23,25. In this application, we demonstrate a program which follows Rabotyagov et al.'s approach and integrates a modern and commonly used SWAT water quality model7 with a multiobjective evolutionary algorithm SPEA226, and user-specified set of conservation practices and their costs to search for the complete tradeoff frontiers between costs of conservation practices and user-specified water quality objectives. The frontiers quantify the tradeoffs faced by the watershed managers by presenting the full range of costs associated with various water quality improvement goals. The program allows for a selection of watershed configurations achieving specified water quality improvement goals and a production of maps of optimized placement of conservation practices.
机译:寻找具有成本效益(即最低成本)的方法,将保护实践投资作为目标,以实现整个景观的特定水质目标,这对流域管理至关重要。在流域范围内寻找成本最低的解决方案的传统经济学方法(例如, 5,12,20 )假设可以将场外影响准确地描述为所产生的场内污染的一部分。这种方法不太可能代表流域的实际污染过程,在该流域中,污染源的影响通常由复杂的生物物理过程确定。使用现代的基于物理的,空间分布的水文模拟模型可以在过程表示上实现更大程度的真实性,但需要开发一个模拟优化框架,使模型成为优化的组成部分。一种特别有用的优化工具,能够处理流域模拟优化问题的组合性质,并允许使用完整的水质模型。进化算法将流域中特定的自然保护实践空间分配作为候选解决方案,并利用候选解​​决方案的集合(种群)迭代地应用随机选择,重组和变异算子,以找到针对优化目标的改进。在这种情况下,优化目标是使流域内的非点源污染最小化,同时使保护实践的成本最小化。最近不断扩展的研究尝试使用类似的方法,并将水质模型与广泛定义的进化优化方法进行整合 3,4,9,10,13-15,17-19,22,23,25 。在此应用程序中,我们演示了一个遵循Rabotyagov等人的方法的程序,该程序将现代且常用的SWAT水质模型 7 与多目标进化算法SPEA2 26 集成在一起。 ,以及用户指定的一套保护措施及其成本,以寻找保护措施的成本与用户指定的水质目标之间的权衡边界。前沿通过提出与各种水质改善目标相关的全部成本,量化了流域管理者面临的权衡取舍。该程序允许选择实现特定水质改善目标的流域配置,并制作保护实践的最佳布局图。

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