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An Intelligence Model with Max-Min Strategy for Constrained Evolutionary Optimization

机译:具有约束进化优化的MAX-MIN策略的智能模型

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An intelligence model (IM) is proposed for constrained optimization in this paper. In this model, two main issues are considered: first, handling feasible and infeasible individuals in population, and second, recognizing the piecewise continuous Pareto front to avoid unnecessary search, it could reduce the amount of calculation and improve the efficiency of search. In addition, max-min strategy is used in selecting optimization. By integrating IM with evolutionary algorithm (EA), a generic constrained optimization evolutionary (IMEA) is derived. The new algorithm is applied to tackle 7 test instances on the CEC2009 MOEA competition, and the performance is assessed by IGD metric, the results suggest that it outperforms or performs similarly to other algorithms in CEC2009 competition.
机译:提出了智能模型(IM)在本文中为约束优化。在这一模型中,考虑了两个主要问题:首先,处理人口中可行和不可行的个体,第二个,第二,识别分段连续帕累托前面,以避免不必要的搜索,可以减少计算量并提高搜索效率。此外,MAX-MIN策略用于选择优化。通过将IM与进化算法(EA)集成,推导了通用约束优化进化(IMEA)。应用新算法在CEC2009 Moea竞赛上解决7个测试实例,并且通过IGD度量评估性能,结果表明它表明它与CEC2009竞争中的其他算法相似或表现出类似的算法。

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