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Quantum-inspired multi-objective optimization evolutionary algorithm based on decomposition

机译:基于分解的量子启发式多目标优化进化算法

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摘要

As an important multi-objective optimization algorithm, multi-objective evolutionary algorithm based on decomposition (MOEA/D) attracts more and more attention recently. In this paper, some methods inspired from quantum behavior are integrated in MOEA/D. A new algorithm, quantum-inspired MOEA/D (QMOEA/D), is proposed and proved to be effective to improve the performance of MOEA/D. In the new algorithm, a global solution (GS) and a local solution (LS) are stored for each subproblem. The attractor and characteristic length in quantum-inspired method are designed with GS and LS. The LS is selected as the attractor for each subproblem. And the characteristic length is associated with the difference between the LS and GS. The algorithm based on nondominated sorting is used for comparing firstly. Then the original and some advanced versions of MOEA/D are used as the comparison algorithms. Through the comparison it can be found that GS and LS are helpful to retain the diversity of the solutions. A wide Pareto front can be obtained on most of the test suites. And the quantum-inspired generator is effective to obtain better solutions with GS and LS.
机译:作为一种重要的多目标优化算法,基于分解的多目标进化算法(MOEA / D)近来引起了越来越多的关注。本文将一些受量子行为启发的方法集成到MOEA / D中。提出了一种新的算法,即量子启发的MOEA / D(QMOEA / D),并被证明可有效提高MOEA / D的性能。在新算法中,为每个子问题存储了全局解(GS)和局部解(LS)。利用GS和LS设计了量子启发方法中的吸引子和特征长度。选择LS作为每个子问题的吸引子。特征长度与LS和GS之间的差异有关。首先使用基于非支配排序的算法进行比较。然后将MOEA / D的原始版本和某些高级版本用作比较算法。通过比较可以发现,GS和LS有助于保留解决方案的多样性。大多数测试套件均可获得广泛的帕累托优势。量子激发发生器可以有效地获得GS和LS的更好解决方案。

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