供应链问题建模与优化的混合多目标规划框架

P. Sitek
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引用次数: 2

摘要

提出了一种求解供应链多目标优化问题的混合规划框架。该方法将约束逻辑规划和数学规划这两种建模和求解环境进行集成和混合,从而获得一个比传统运筹学方法具有显著优势的规划框架。这两个组件的长处在混合框架中结合在一起,通过引入转换,可以显著减少问题的规模,并且更快地找到最佳解决方案。这在多目标优化中尤其重要,因为问题必须反复解决才能找到一组帕累托最优解。对于说明性的例子,其大小减少了两千多倍,与数学规划方法相比,求解的速度也减少了几百倍。此外,建议的框架允许引入在运筹学环境中难以或不可能建模的逻辑约束。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid multi-objective programming framework for modeling and optimization of supply chain problems
This paper presents a hybrid programming framework for solving multi-objective optimization problems in supply chain. The proposed approach consists of the integration and hybridization of two modeling and solving environments, i.e., constraint logic programming and mathematical programming, to obtain a programming framework that offers significant advantages over the classical approach derived from operational research. The strongest points of both components are combined in the hybrid framework, which by introducing transformation allows a significant reduction in size of a problem and the optimal solution is found a lot faster. This is particularly important in the multi-objective optimization where problems have to be solved over and over again to find a set of Pareto-optimal solutions. An over two thousand-fold reduction in size was obtained for the illustrative examples together with a few hundred-fold reduction in the speed of finding the solution in relation to the mathematical programming method. In addition, the proposed framework allows the introduction of logical constraints that are difficult or impossible to model in operational research environments.
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