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MOEA/D with adaptive weight adjustment

机译:具有自适应权重调整的MOEA / D

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摘要

Recently, MOEA/D (multi-objective evolutionary algorithm based on decomposition) has achieved great success in the field of evolutionary multi-objective optimization and has attracted a lot of attention. It decomposes a multi-objective optimization problem (MOP) into a set of scalar subproblems using uniformly distributed aggregation weight vectors and provides an excellent general algorithmic framework of evolutionary multi-objective optimization. Generally, the uniformity of weight vectors in MOEA/D can ensure the diversity of the Pareto optimal solutions, however, it cannot work as well when the target MOP has a complex Pareto front (PF; i.e., discontinuous PF or PF with sharp peak or low tail). To remedy this, we propose an improved MOEA/D with adaptive weight vector adjustment (MOEA/D-AWA). According to the analysis of the geometric relationship between the weight vectors and the optimal solutions under the Chebyshev decomposition scheme, a new weight vector initialization method and an adaptive weight vector adjustment strategy are introduced in MOEA/D-AWA. The weights are adjusted periodically so that the weights of subproblems can be redistributed adaptively to obtain better uniformity of solutions. Meanwhile, computing efforts devoted to subproblems with duplicate optimal solution can be saved. Moreover, an external elite population is introduced to help adding new subproblems into real sparse regions rather than pseudo sparse regions of the complex PF, that is, discontinuous regions of the PF. MOEA/D-AWA has been compared with four state of the art MOEAs, namely the original MOEA/D, Adaptive-MOEA/D, -MOEA/D, and NSGA-II on 10 widely used test problems, two newly constructed complex problems, and two many-objective problems. Experimental results indicate that MOEA/D-AWA outperforms the benchmark algorithms in terms of the IGD metric, particularly when the PF of the MOP is complex.
机译:近年来,MOEA / D(基于分解的多目标进化算法)在进化多目标优化领域取得了巨大的成功,并引起了广泛的关注。它使用均匀分布的聚集权重向量将多目标优化问题(MOP)分解为一组标量子问题,并为演化多目标优化提供了出色的通用算法框架。通常,MOEA / D中权重向量的均匀性可以确保Pareto最优解的多样性,但是,当目标MOP具有复杂的Pareto前沿(PF;即不连续的PF或具有尖锐峰值或低尾巴)。为了解决这个问题,我们提出了一种具有自适应权重向量调整(MOEA / D-AWA)的改进型MOEA / D。通过分析Chebyshev分解方案下权向量与最优解之间的几何关系,在MOEA / D-AWA中引入了新的权向量初始化方法和自适应权向量调整策略。定期调整权重,以便可以自适应地重新分配子问题的权重,以获得更好的解决方案均匀性。同时,可以节省用于重复问题最优解决方案的子问题的计算工作。此外,引入了外部精英群体来帮助将新的子问题添加到复杂PF的实际稀疏区域而非伪稀疏区域,即PF的不连续区域。 MOEA / D-AWA已与四个最先进的MOEA(即原始MOEA / D,Adaptive-MOEA / D,-MOEA / D和NSGA-II)进行了比较,涉及10个广泛使用的测试问题,两个新建的复杂问题,以及两个多目标问题。实验结果表明,就IGD度量而言,MOEA / D-AWA优于基准算法,尤其是当MOP的PF复杂时。

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