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Development of the enhanced self-adaptive hybrid genetic algorithm (e-SAHGA)

机译:增强型自适应混合遗传算法(e-SAHGA)的开发

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摘要

Genetic algorithms allow solution of more complex, nonlinear groundwater remediation design problems than traditional gradient-based approaches, but they are more computationally intensive. One way to improve performance is through inclusion of local search, creating a hybrid genetic algorithm (HGA). The inclusion of local search helps to speed up the solution process and to make the solution technique more robust. This technical note focuses on the development and application of a new HGA, the enhanced self-adaptive hybrid genetic algorithm (e-SAHGA), which is an enhancement of a previously developed HGA called SAHGA. The application of the e-SAHGA algorithm to a hypothetical groundwater remediation design problem showed 90% reliability in identifying the optimal solution faster than the SGA, with average savings of 64% across 100 random initial populations. These results are considerably improved over SAHGA, which attained only 80% reliability and 14% average savings on the same initial populations.
机译:与传统的基于梯度的方法相比,遗传算法可以解决更复杂的非线性地下水修复设计问题,但它们的计算量更大。提高性能的一种方法是通过包含本地搜索,创建混合遗传算法(HGA)。包含本地搜索有助于加快解决方案的过程,并使解决方案技术更可靠。本技术说明专注于新HGA的开发和应用,HGA是增强型自适应杂交遗传算法(e-SAHGA),它是对先前开发的称为SAHGA的HGA的增强。 e-SAHGA算法在假设的地下水修复设计问题中的应用显示出比SGA更快地确定最佳解决方案的可靠性为90%,在100个随机初始种群中平均节省了64%。与SAHGA相比,这些结果得到了显着改善,后者在相同的初始人群中仅获得80%的可靠性和14%的平均节省。

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