比较一种多目标优化的协同进化遗传算法

J. Lohn, W. Kraus, G. Haith
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引用次数: 91

摘要

我们介绍了一项研究的结果,比较了最近开发的共同进化遗传算法(CGA)和一组使用多目标优化基准的进化算法。CGA体现了竞争协同进化,采用了一种简单、直接的目标种群表示和基于发展学习理论的适应度计算。由于这些属性,设置额外的种群非常简单,使得实现并不比使用标准遗传算法更难。使用一组双目标测试函数的经验结果表明,该CGA在寻找凸、非凸、离散和欺骗性帕累托最优前沿的解决方案方面表现良好,同时在非均匀优化方面给出了可观的结果。在多模态帕累托前线,CGA在帕累托前线的覆盖率很低,但它找到了一个优于其他八种算法产生的所有解决方案的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing a coevolutionary genetic algorithm for multiobjective optimization
We present results from a study comparing a recently developed coevolutionary genetic algorithm (CGA) against a set of evolutionary algorithms using a suite of multiobjective optimization benchmarks. The CGA embodies competitive coevolution and employs a simple, straightforward target population representation and fitness calculation based on developmental theory of learning. Because of these properties, setting up the additional population is trivial making implementation no more difficult than using a standard GA. Empirical results using a suite of two-objective test functions indicate that this CGA performs well at finding solutions on convex, nonconvex, discrete, and deceptive Pareto-optimal fronts, while giving respectable results on a nonuniform optimization. On a multimodal Pareto front, the CGA yields poor coverage across the Pareto front, yet finds a solution that dominates all the solutions produced by the eight other algorithms.
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