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Comparing state-of-the-art evolutionary multi-objective algorithms for long-term groundwater monitoring design

机译:比较用于长期地下水监测设计的最新进化多目标算法

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摘要

This study compares the performances of four state-of-the-art evolutionary multi-objective optimization (EMO) algorithms: the Non-Dominated Sorted Genetic Algorithm Ⅱ (NSGAII), the Epsilon-Dominance Non-Dominated Sorted Genetic Algorithm Ⅱ (ε-NSGAII), the Epsilon-Dominance Multi-Objective Evolutionary Algorithm (εMOEA), and the Strength Pareto Evolutionary Algorithm 2 (SPEA2), on a four-objective long-term groundwater monitoring (LTM) design test case. The LTM test case objectives include: (ⅰ) minimize sampling cost, (ⅱ) minimize contaminant concentration estimation error, (ⅲ) minimize contaminant concentration estimation uncertainty, and (ⅳ) minimize contaminant mass estimation error. The 25-well LTM design problem was enumerated to provide the true Pareto-optimal solution set to facilitate rigorous testing of the EMO algorithms. The performances of the four algorithms are assessed and compared using three runtime performance metrics (convergence, diversity, and ε-perfor-mance), two unary metrics (the hypervolume indicator and unary ε-indicator) and the first-order empirical attainment function. Results of the analyses indicate that the ε-NSGAII greatly exceeds the performance of the NSGAII and the εMOEA. The ε-NSGAII also achieves superior performance relative to the SPEA2 in terms of search effectiveness and efficiency. In addition, the ε-NSGAII's simplified parameterization and its ability to adaptively size its population and automatically terminate results in an algorithm which is efficient, reliable, and easy-to-use for water resources applications.
机译:本研究比较了四种最新的进化多目标优化(EMO)算法的性能:非支配排序遗传算法Ⅱ(NSGAII),Epsilon支配非支配排序遗传算法Ⅱ(ε- NSGAII),Epsilon优势多目标进化算法(εMOEA)和强度帕累托进化算法2(SPEA2),用于四目标长期地下水监测(LTM)设计测试用例。 LTM测试用例的目标包括:(ⅰ)最小化采样成本,(ⅱ)最小化污染物浓度估计误差,(ⅲ)最小化污染物浓度估计不确定性,(ⅳ)最小化污染物质量估计误差。列举了25孔LTM设计问题,以提供真正的帕累托最优解决方案集,以促进对EMO算法的严格测试。使用三个运行时性能指标(收敛,分集和ε性能),两个一元指标(超量指标和一元ε指标)以及一阶经验获得函数对四种算法的性能进行评估和比较。分析结果表明,ε-NSGAII的性能大大超过了NSGAII和εMOEA的性能。相对于SPEA2,ε-NSGAII在搜索效果和效率方面也具有出色的性能。此外,ε-NSGAII的简化参数设置以及自适应调整种群数量和自动终止的能力,导致了一种高效,可靠且易于使用的水资源应用算法。

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