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A Many-Objective Optimization Algorithm Based on Weight Vector Adjustment

机译:基于权向量调整的多目标优化算法

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摘要

In order to improve the convergence and distribution of a many-objective evolutionary algorithm, this paper proposes an improved NSGA-III algorithm based on weight vector adjustment (called NSGA-III-WA). First, an adaptive weight vector adjustment strategy is proposed to decompose the objective space into several subspaces. According to different subspace densities, the weight vector is sparse or densely adjusted to ensure the uniformity of the weight vector distribution on the Pareto front surface. Secondly, the evolutionary model that combines the new differential evolution strategy and genetic evolution strategy is proposed to generate new individuals and enhance the exploration ability of the weight vector in each subspace. The proposed algorithm is tested on the optimization problem of 3–15 objectives on the DTLZ standard test set and WFG test instances, and it is compared with the five algorithms with better effect. In this paper, the Whitney–Wilcoxon rank-sum test is used to test the significance of the algorithm. The experimental results show that NSGA-III-WA has a good effect in terms of convergence and distribution.
机译:为了提高多目标进化算法的收敛性和分布性,提出了一种基于加权矢量调整的改进NSGA-III算法(称为NSGA-III-WA)。首先,提出了一种自适应加权矢量调整策略,将目标空间分解为几个子空间。根据不同的子空间密度,可以稀疏或密集地调整权重向量,以确保权重向量在帕累托正面上的分布均匀。其次,提出了将新的差分进化策略和遗传进​​化策略相结合的进化模型,以生成新个体并增强每个子空间中权向量的探索能力。在DTLZ标准测试集和WFG测试实例上针对3–15个目标的优化问题对提出的算法进行了测试,并将其与五种算法进行比较,效果更好。在本文中,Whitney–Wilcoxon秩和检验用于检验算法的重要性。实验结果表明,NSGA-III-WA在收敛和分布方面具有良好的效果。

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