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Improving the optimization performance of NSGA-II algorithm by experiment design methods

机译:通过实验设计方法提高NSGA-II算法的优化性能

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摘要

NSGA-II is an effective multi-objective optimization algorithm, and how to further improve its optimizing performance is an interesting but difficult problem. The Orthogonal Array method(OA) and the Taguchi method are two important kinds of experiment design methods. In this paper, the classical genetic operators are replaced by these experiment design methods to generate new individuals in NSGA-II. This results into two hybrid NSGA-II algorithms, whose optimizing ability is approved by the experiments on the typical multi-objective test functions, and the algorithm combined with Taguchi method is better than the other one with OA, while the calculation complexity of the former is a little higher. In fact, the differences between NSGA-II and the two hybrid algorithms are just the steps to generate new individuals, and the hybrid algorithms don't change any other operations of NSGA-II, which makes them easy for implementation.
机译:NSGA-II是一种有效的多目标优化算法,如何进一步提高其优化性能是一个有趣但困难的问题。正交阵列法和田口法是两种重要的实验设计方法。在本文中,经典的遗传算子被这些实验设计方法所取代,从而在NSGA-II中产生了新的个体。这产生了两种混合的NSGA-II算法,其优化能力已通过对典型多目标测试函数的实验验证,并且与Taguchi方法相结合的算法优于另一种与OA相结合的算法,而前者的计算复杂性高一点。实际上,NSGA-II与两种混合算法之间的差异只是生成新个体的步骤,并且混合算法不会更改NSGA-II的任何其他操作,因此易于实现。

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