Hybrid CODBA-II Algorithm Coupling a Co-Evolutionary Decomposition-Based Algorithm with Local Search Method to Solve Bi-Level Combinatorial Optimization

Abir Chaabani, L. B. Said
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引用次数: 1

Abstract

Bi-level optimization problems (BLOPs) are a class of challenging problems with two levels of optimization tasks. The usefulness of bi-level optimization in designing hierarchical decision processes prompted several researchers, in particular the evolutionary computation community, to pay more attention to such kind of problems. Several solution approaches have been proposed to solve these problems; however, most of them are restricted to the continuous case. Motivated by this observation, we have recently proposed a Co-evolutionary Decomposition-based Algorithm (CODBA-II) to solve combinatorial bi-level problems. CODBA-II scheme has been able to improve the bi-level performance and to bring down the computational expense significantly as compared to other competitive approaches within this research area. In this paper, we present an extension of the recently proposed CODBA-II algorithm. The improved version, called CODBA-IILS, further improves the algorithm by incorporating a local search process to both upper and lower levels in order to help in faster convergence of the algorithm. The improved results have been demonstrated on two different sets of test problems based on the bi-level production-distribution problems in supply chain management, and comparison results against the contemporary approaches are also provided.
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基于协同进化分解和局部搜索的混合CODBA-II算法求解双层次组合优化问题
双层优化问题(blop)是一类具有两层优化任务的挑战性问题。双层优化在设计分层决策过程中的作用促使一些研究者,特别是进化计算界对这类问题给予了更多的关注。为解决这些问题,提出了几种解决方法;然而,它们中的大多数都被限制在连续情况下。基于这一观察,我们最近提出了一种基于协同进化分解的算法(CODBA-II)来解决组合双级问题。与该研究领域的其他竞争方法相比,CODBA-II方案能够提高双级性能并显著降低计算费用。在本文中,我们提出了最近提出的CODBA-II算法的扩展。改进的版本称为CODBA-IILS,它进一步改进了算法,将本地搜索过程合并到上层和下层,以帮助更快地收敛算法。本文以供应链管理中的双层次生产-分配问题为例,对两组不同的测试问题进行了验证,并与现有方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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