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An evolutionary constrained multi-objective optimization algorithm with parallel evaluation strategy

机译:具有并行评估策略的进化约束多目标优化算法

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This paper proposes an improved evolutionary algorithm with parallel evaluation strategy (EAPES) for solving constrained multi-objective optimization problems (CMOPs) efficiently. EAPES stores feasible solutions and infeasible solution separately in different populations, and evaluates infeasible solutions in an unusual manner, such that not only feasible solutions but also useful infeasible solutions will be used as parents to reproduce the populations for the next generation. The EAPES proposed in this paper ranks infeasible solutions based on the scalarizing function named constrained penalty-based boundary intersection (C-PBI), which is determined by objective function values and a total constraint violation value. Then, this paper investigates the performance of the C-PBI-based EAPES to search for Pareto-optimal solutions compared to the non-dominated sorting genetic algorithm II (NSGA-II) and the previous EAPES without using C-PBI. The C-PBI-based EAPES with a well-tuned parameter is most capable to explore Pareto-optimal solutions with good diversity, spread, and convergence to the true Pareto front. The C-PBI-based EAPES assigns bad rank to the infeasible solutions that are expected away from an unknown Pareto front, and does not store such solutions. Thus the C-PBI-based EAPES exhibits a higher searching capability than the previous EAPES by evaluating infeasible solutions in an appropriate balance between objective functions and total constraint violation.
机译:提出了一种具有并行评估策略(EAPES)的改进进化算法,可以有效地解决约束性多目标优化问题(CMOP)。 EAPES将可行的解决方案和不可行的解决方案分别存储在不同的人群中,并以不寻常的方式评估不可行的解决方案,因此,不仅可行的解决方案,而且有用的不可行的解决方案都将被用作父母,为下一代繁殖种群。本文提出的EAPES基于标量函数“约束惩罚基边界交叉点(C-PBI)”对不可行的解决方案进行排名,该标量函数由目标函数值和总约束违反值确定。然后,本文研究了基于C-PBI的EAPES与非主导排序遗传算法II(NSGA-II)和以前的不使用C-PBI的EAPES相比,搜索帕累托最优解的性能。参数经过良好调整的基于C-PBI的EAPES最有能力探索帕累托最优解决方案,该解决方案具有良好的多样性,扩展性和收敛性,可满足真正的帕累托前沿。基于C-PBI的EAPES为无法实现的解决方案分配了不好的排名,这些解决方案期望远离未知的Pareto前端,并且不存储此类解决方案。因此,基于C-PBI的EAPES通过在目标函数和总约束违反之间的适当平衡中评估不可行的解决方案,显示出比以前的EAPES更高的搜索能力。

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