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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Transfer of learning with the co-evolutionary decomposition-based algorithm-II: a realization on the bi-level production-distribution planning system
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Transfer of learning with the co-evolutionary decomposition-based algorithm-II: a realization on the bi-level production-distribution planning system

机译:与基于共同进化分解的算法-II的学习转移:双级生产分布规划系统的实现

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摘要

Bi-Level Optimization Problem (BLOP) is a class of challenging problems with two levels of optimization tasks. The main goal is to optimize the upper level problem, which has another optimization problem as a constraint. In this way, the evaluation of each upper level solution requires finding an optimal solution to the corresponding lower level problem, which is computationally so expensive. For this reason, most proposed bi-level resolution methods have been restricted to solve the simplest case (linear continuous BLOPs). This fact has attracted the evolutionary computation community to solve such complex problems. Besides, to enhance the search performance of Evolutionary Algorithms (EAs), reusing knowledge captured from past optimization experiences along the search process has been proposed in the literature, and was demonstrated much promise. Motivated by this observation, we propose in this paper, a memetic version of our proposed Co-evolutionary Decomposition-based Algorithm-II (CODBA-II), that we named M-CODBA-II, to solve combinatorial BLOPs. The main motivation of this paper is to incorporate transfer learning within our recently proposed CODBA-II scheme to make the search process more effective and more efficient. Our proposed hybrid algorithm is investigated on two bi-level production-distribution problems in supply chain management formulated to: (1) Bi-CVRP and (2) Bi-MDVRP. The experimental results reveal a potential advantage of memes incorporation in CODBA-II. Most notably, the results emphasize that transfer learning allows not only accelerating the convergence but also finding better solutions.
机译:双级优化问题(BLOP)是一类具有两级优化任务的具有挑战性问题。主要目标是优化上层问题,这具有另一个优化问题作为约束。以这种方式,每个上层解决方案的评估需要找到对应的较低水平问题的最佳解决方案,这是计算方式如此昂贵。因此,最拟提出的双层分辨率方法被限制为解决最简单的情况(线性连续跳闸)。这一事实吸引了进化计算界来解决这些复杂的问题。此外,为了增强进化算法的搜索性能(EAS),在文献中提出了从过去优化经验中捕获的重用知识,并在文献中提出了许多承诺。通过这种观察,我们提出了本文,这篇论文是我们所提出的基于共同进化分解的算法-II(CODBA-II)的迭代版,我们将M-CODBA-II命名为求解组合障碍。本文的主要动机是在我们最近提出的CODBA-II计划中纳入转移学习,以使搜索过程更有效,更高效。我们提出的杂交算法在供应链管理中制定的两个双级生产分布问题进行了调查:(1)Bi-CVRP和(2)Bi-MDVRP。实验结果揭示了MEMES掺入CODBA-II中的潜在优势。最值得注意的是,结果强调转移学习不仅可以加速收敛而且找到更好的解决方案。

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