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多阶段榜样学习算法求解多级供应链网络最优均衡状态(MMLA for SCN)

已有 1032 次阅读 2023-9-15 07:51 |个人分类:论文发表|系统分类:论文交流

A novel variational inequality approach for modeling the optimal equilibrium in multi-tiered supply chain networks

Sheng-Xue HeYun-Ting Cui

  • Department of Transportation, Business School, University of Shanghai for Science and Technology, Shanghai, China

Abstract

We present a novel variational inequality model (VIM) to capture the complex real decision-making process in multi-tiered supply chain networks (MSCN) without strictly limiting the features of related functions. The VIM is formulated with the equilibrium conditions on links as the optimization goal and the flow conservation condition as the main constraints. We transform the VIM into a series of equivalent Non-Linear Programming Models (NLPMs) to solve. To address this challenge, we propose a novel population-based heuristic algorithm called the Multiscale Model Learning Algorithm (MMLA). The MMLA is inspired by the learning behavior of individuals in a group and can converge to an optimal equilibrium state of the MSCN. The MMLA has two key operations: zooming in on the search field and learning search in a learning stage. The excellent performers, called medalists, are imitated by other learners. With the increase in learning stages, the learning efficiency is improved, and the searching energy is concentrated in a more promising area. We employ sixteen benchmark optimization problems and two supply chain networks to demonstrate the effectiveness of the MMLA and the rationality of the equilibrium models. The results obtained by MMLA for the NLPM show that the MMLA can solve the equilibrium model effectively, and multiple optimal equilibrium states may exist for an MSCN. The flexibility of the NLPM makes it possible to consider more complicated decision-making mechanisms in the model.

Keywords

Supply chain; Learning algorithm;Nonlinear programming;Network equilibrium;Variational inequalities


https://doi.org/10.1016/j.sca.2023.100039


文章下载:

1-s2.0-S2949863523000389-main.pdf




https://wap.sciencenet.cn/blog-3367056-1402667.html

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