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Evaluation of the genetic algorithm parameters on the optimization performance: a case study on pump-and-treat remediation design

机译:遗传算法参数对优化性能的评估:以泵整治设计为例

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摘要

In this study, the impacts of different crossover and encoding schemes on the performance of a genetic algorithm (GA) in finding optimal pump-and-treat (P&T) remediation designs are investigated. For this purpose, binary and Gray encodings of the decision variables are tested. Uniform and two-point crossover schemes are evaluated for two different crossover probabilities. Analysis is performed for two P&T system optimization scenarios. Results show that uniform crossover operator with Gray encoding outperforms the other alternatives for the complex problem with higher number of decision variables. On the other hand, when a simpler problem, which had a lower number of decision variables, is solved, the efficiency of GA is independent of the encoding and crossover schemes.
机译:在这项研究中,研究了不同的交叉和编码方案对遗传算法(GA)在寻找最佳泵送处理(P&T)补救设计中的性能的影响。为此,对决策变量的二进制和格雷编码进行测试。针对两个不同的交叉概率评估均匀和两点交叉方案。针对两个P&T系统优化方案执行分析。结果表明,对于带有较多决策变量的复杂问题,采用格雷编码的统一交叉算子优于其他方法。另一方面,当解决一个决策变量数量较少的较简单问题时,GA的效率与编码和交叉方案无关。

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