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An Orthogonal Multi-objective Evolutionary Algorithm for Multi-objective Optimization Problems with Constraints

机译:约束多目标优化问题的正交多目标进化算法

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摘要

In this paper, an orthogonal multi-objective evolutionary algorithm (OMOEA) is proposed for multi-objective optimization problems (MOPs) with constraints. Firstly, these constraints are taken into account when determining Pareto dominance. As a result, a strict partial-ordered relation is obtained, and feasibility is not considered later in the selection process. Then, the orthogonal design and the statistical optimal method are generalized to MOPs, and a new type of multi-objective evolutionary algorithm (MOEA) is constructed. In this framework, an original niche evolves first, and splits into a group of sub-niches. Then every sub-niche repeats the above process. Due to the uniformity of the search, the optimality of the statistics, and the exponential increase of the splitting frequency of the niches, OMOEA uses a deterministic search without blindness or stochasticity. It can soon yield a large set of solutions which converges to the Pareto-optimal set with high precision and uniform distribution. We take six test problems designed by Deb, Zitzler et al., and an engineering problem (W) with constraints provided by Ray et al. to test the new technique. The numerical experiments show that our algorithm is superior to other MOGAS and MOEAs, such as FFGA, NSGAII, SPEA2, and so on, in terms of the precision, quantity and distribution of solutions. Notably, for the engineering problem W, it finds the Pareto-optimal set, which was previously unknown.
机译:针对具有约束的多目标优化问题,提出了一种正交多目标进化算法(OMOEA)。首先,在确定帕累托优势时要考虑这些约束。结果,获得了严格的偏序关系,并且稍后在选择过程中不考虑可行性。然后,将正交设计和统计最优方法推广到MOP,构造了一种新型的多目标进化算法(MOEA)。在此框架中,原始的利基首先发展,然后分成一组子利基。然后,每个子细分市场都重复上述过程。由于搜索的均匀性,统计的最优性以及适当位置分裂频率的指数增长,因此OMOEA使用了确定性搜索,而没有盲目性或随机性。它很快就会产生大量解决方案,这些解决方案以高精度和均匀分布收敛到帕累托最优集。我们采用Deb,Zitzler等人设计的六个测试问题,以及Ray等人提供的带有约束的工程问题(W)。测试新技术。数值实验表明,在解的精度,数量和分布上,我们的算法优于其他的MOGAS和MOEA,例如FFGA,NSGAII,SPEA2等。值得注意的是,对于工程问题W,它找到了先前未知的帕累托最优集。

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