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首页> 外文期刊>Journal of Water Resources Planning and Management >Generating Alternatives Using Evolutionary Algorithms for Water Resources and Environmental Management Problems
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Generating Alternatives Using Evolutionary Algorithms for Water Resources and Environmental Management Problems

机译:使用进化算法生成替代方案以解决水资源和环境管理问题

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Contemporary heuristic search procedures [e.g., evolutionary algorithms (EAs)] continue to offer increased capabilities for systematic search for a range of water resources and environmental management problems. These problems are often riddled, however, with numerous unquantifiable issues that are important when making decisions, but escape being incorporated in the system model. The mathematically optimal solution to such an incompletely defined model may be found unrealistic or altogether incorrect for the real problem. Optimization procedures could still be made useful if they can be utilized effectively to generate, in addition to the optimal solution, a small number of different alternatives that are near optimal. Alternatives with maximal differences in the decision variable values are expected to perform differently with respect to the unmodeled issues, providing valuable choices when making decisions. Although successful alternative generation procedures have been reported for mathematical programming-based search procedures, they are yet to be explored fully for EAs. This paper describes an extensive investigation of a new EA-based alternatives generation procedure, the evolutionary algorithm to generate alternatives (EAGA). A previously published regional wastewater treatment optimization study is used as a basis for establishing and demonstrating the capabilities of EAGA, and the set of results from the previous study is used as a benchmark for comparing the performance of EAGA. Comparisons of results indicate that EAGA is effective in generating good alternative solutions that perform differently with respect to several unmodeled issues. EAGA is sufficiently flexible to be applied to a wide range of water resources and environmental management problems. Further, EAGA can be applied to any problem that is set up to be solved using an evolutionary algorithm.
机译:现代启发式搜索程序[例如,进化算法(EA)]继续为系统搜索一系列水资源和环境管理问题提供增强的能力。但是,这些问题通常充满很多无法量化的问题,这些问题在进行决策时很重要,但是却无法纳入系统模型中。对于这样的不完整定义的模型,数学上的最佳解决方案可能对于实际问题而言是不现实的或完全不正确的。如果可以将优化程序有效地用于生成最佳解决方案之外的最佳解决方案,那么仍然可以使它们变得有用。对于未建模的问题,决策变量值具有最大差异的替代方案有望表现出不同的效果,从而在决策时提供了有价值的选择。尽管已经报道了成功的替代生成过程可用于基于数学编程的搜索过程,但尚未完全针对EA进行探索。本文描述了对一种新的基于EA的替代品生成程序的广泛研究,该程序是生成替代品的进化算法(EAGA)。先前发布的区域废水处理优化研究用作建立和证明EAGA功能的基础,而先前研究的结果集则用作比较EAGA性能的基准。结果比较表明,EAGA有效地生成了良好的替代解决方案,这些解决方案在几个未建模的问题上的执行方式有所不同。 EAGA具有足够的灵活性,可以应用于各种水资源和环境管理问题。此外,EAGA可以应用于使用进化算法解决的任何问题。

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