一种协同进化多目标进化算法的性能可扩展性

Tse Guan Tan, J. Teo, H. Lau
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引用次数: 7

摘要

最近,许多多目标进化算法(moea)被提出来解决现实生活中的问题。然而,关于moea仍然存在一些问题,如收敛到真正的Pareto前沿,以及许多客观问题的可扩展性,而不仅仅是双目标问题。这些算法的性能可以通过加入共同进化的概念来增强。为此,本文提出了一种新的多目标优化算法SPEA2-CC。SPEA2-CC结合了MOEA、强度Pareto进化算法2 (SPEA2)和协同进化(CC)。针对七个DTLZ测试问题(一组目标(3至5个目标),进行了可扩展性测试,以评估和比较SPEA2- CC与原始SPEA2。结果清楚地表明,随着目标数量的增加,SPEA2- cc的性能可扩展性明显优于原始SPEA2。
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Performance Scalability of a Cooperative Coevolution Multiobjective Evolutionary Algorithm
Recently, numerous Multiobjective Evolutionary Algorithms (MOEAs) have been presented to solve real life problems. However, a number of issues still remain with regards to MOEAs such as convergence to the true Pareto front as well as scalability to many objective problems rather than just bi-objective problems. The performance of these algorithms may be augmented by incorporating the coevolutionary concept. Hence, in this paper, a new algorithm for multiobjective optimization called SPEA2-CC is illustrated. SPEA2-CC combines an MOEA, Strength Pareto Evolutionary Algorithm 2 (SPEA2) with Cooperative Coevolution (CC). Scalability tests have been conducted to evaluate and compare the SPEA2- CC against the original SPEA2 for seven DTLZ test problems with a set of objectives (3 to 5 objectives). The results show clearly that the performance scalability of SPEA2-CC was significantly better compared to the original SPEA2 as the number of objectives becomes higher.
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