Sequential approximate optimization with adaptive parallel infill strategy assisted by inaccurate Pareto front

Wenjie Wang, Pengyu Wang, Jiawei Yang, Fei Xiao, Weihua Zhang, Zeping Wu
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Abstract

Sequential Approximate Optimization (SAO) has been widely used in engineering optimization design problems to improve efficiency. The infilling strategy is one of the critical techniques of the SAO, which is of paramount importance to the surrogate model accuracy and optimization efficiency. In this paper, an adaptive parallel infill strategy for surrogate-based single-objective optimization is proposed within a multi-objective optimization framework to balance exploration and exploitation during the optimization process. Within this method, an inaccurate Pareto Front is adopted to assist the infilling of the sampling points. The proposed SAO method with its adaptive parallel sampling strategy is tested on several numerical test cases and an engineering test case with the optimization results compared to state-of-the-art optimization algorithms. The results show that the proposed SAO with the adaptive parallel sampling strategy possesses excellent performance and better stability.
基于不准确Pareto前沿的自适应并行填充策略序列逼近优化
序贯近似优化(SAO)方法已广泛应用于工程优化设计问题中,以提高效率。填充策略是SAO的关键技术之一,对代理模型的精度和优化效率至关重要。本文在多目标优化框架下,提出了一种基于代理的单目标优化自适应并行填充策略,以平衡优化过程中的勘探与开采。该方法利用不准确的Pareto Front辅助采样点的填充。基于自适应并行采样策略的SAO方法在多个数值测试例和工程测试例上进行了测试,并将优化结果与现有优化算法进行了比较。结果表明,采用自适应并行采样策略的SAO具有优异的性能和良好的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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