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In the practical industrial field, optimizing parameter configurations during factory operations is an indispensable step, especially for multi-objective optimization problems (MOPs) that involve high computational, economic costs or extensive numerical simulations, which was categorized as Expensive Multi-Objective Optimization Problems (EMOPs). To efficiently and reasonably evaluate fitness in the face of EMOP, it is essential to develop a surrogate model to minimize costly expensive function evaluations and assist the entire optimization process. This study proposes a Surrogate-Assisted Evolutionary Algorithm SFEA that integrates Support Vector Machines (SVM) and Feedforward Neural Networks (FNN). SFEA constructs surrogate models using heterogeneous integration methods to mitigate the limitations of a single-model approaches in complex and variable optimization scenarios, thereby enhancing the efficiency and quality of the optimization outcomes. Additionally, this paper proposes an adaptive sampling strategy and a corresponding sample filling mechanism within a dual-archive management framework, based on the convergence and diversity indices of the algorithm. Experimental validation on multi-objective DTLZ and WFG benchmark problems confirms the effectiveness and feasibility of SFEA in addressing expensive multi-objective optimization challenges. © 2024 Technical Committee on Control Theory, Chinese Association of Automation.
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ISSN: 1934-1768
年份: 2024
页码: 2183-2188
语种: 英文
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