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A Novel Multiobjective Optimization Method Based on Sensitivity Analysis

机译:一种基于灵敏度分析的新型多目标优化方法

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摘要

For multiobjective optimization problems, different optimization variables have different influences on objectives, which implies that attention should be paid to the variables according to their sensitivity. However, previous optimization studies have not considered the variables sensitivity or conducted sensitivity analysis independent of optimization. In this paper, an integrated algorithm is proposed, which combines the optimization method SPEA (Strength Pareto Evolutionary Algorithm) with the sensitivity analysis method SRCC (Spearman Rank Correlation Coefficient). In the proposed algorithm, the optimization variables are worked as samples of sensitivity analysis, and the consequent sensitivity result is used to guide the optimization process by changing the evolutionary parameters. Three cases including a mathematical problem, an airship envelope optimization, and a truss topology optimization are used to demonstrate the computational efficiency of the integrated algorithm. The results showed that this algorithm is able to simultaneously achieve parameter sensitivity and a well-distributed Pareto optimal set, without increasing the computational time greatly in comparison with the SPEA method.
机译:对于多目标优化问题,不同的优化变量对目标的影响不同,这意味着应根据其敏感性支付给变量的注意。然而,先前的优化研究没有考虑变量灵敏度或与优化无关的敏感性分析。本文提出了一种集成算法,其将优化方法SPEA(强度Pareto进化算法)与敏感性分析方法SRCC(Spearman等级相关系数)相结合。在所提出的算法中,优化变量作为灵敏度分析的样本工作,随后的灵敏度结果用于通过改变进化参数来指导优化过程。三种案例包括数学问题,飞艇信封优化和桁架拓扑优化,用于展示集成算法的计算效率。结果表明,该算法能够同时实现参数灵敏度和分布良好的Pareto最佳集合,而无需增加与SPEA法相比大大增加计算时间。

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