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An auto-adaptive optimization approach for targeting nonpoint source pollution control practices

机译:针对非点源污染控制实践的自适应优化方法

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To solve computationally intensive and technically complex control of nonpoint source pollution, the traditional genetic algorithm was modified into an auto-adaptive pattern, and a new framework was proposed by integrating this new algorithm with a watershed model and an economic module. Although conceptually simple and comprehensive, the proposed algorithm would search automatically for those Pareto-optimality solutions without a complex calibration of optimization parameters. The model was applied in a case study in a typical watershed of the Three Gorges Reservoir area, China. The results indicated that the evolutionary process of optimization was improved due to the incorporation of auto-adaptive parameters. In addition, the proposed algorithm outperformed the state-of-the-art existing algorithms in terms of convergence ability and computational efficiency. At the same cost level, solutions with greater pollutant reductions could be identified. From a scientific viewpoint, the proposed algorithm could be extended to other watersheds to provide cost-effective configurations of BMPs.
机译:为了解决非点源污染的计算量大和技术复杂的控制问题,将传统的遗传算法修改为自适应模式,并通过将该新算法与分水岭模型和经济模块相集成,提出了一个新的框架。尽管从概念上讲是简单而全面的,但所提出的算法将自动搜索那些帕累托最优解,而无需对优化参数进行复杂的校准。该模型在中国三峡水库典型流域的案例研究中得到了应用。结果表明,由于引入了自适应参数,优化过程得到了改进。此外,在收敛能力和计算效率方面,所提出的算法优于现有的现有算法。以相同的成本水平,可以确定污染物减少量更大的解决方案。从科学的角度来看,所提出的算法可以扩展到其他流域,以提供具有成本效益的BMP配置。

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