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A Hybrid Method for Modeling and Solving Supply Chain Optimization Problems with Soft and Logical Constraints

机译:一种柔软和逻辑约束建模和解决供应链优化问题的混合方法

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摘要

This paper presents a hybrid method for modeling and solving supply chain optimization problems with soft, hard, and logical constraints. Ability to implement soft and logical constraints is a very important functionality for supply chain optimization models. Such constraints are particularly useful for modeling problems resulting from commercial agreements, contracts, competition, technology, safety, and environmental conditions. Two programming and solving environments, mathematical programming (MP) and constraint logic programming (CLP), were combined in the hybrid method. This integration, hybridization, and the adequate multidimensional transformation of the problem (as a presolving method) helped to substantially reduce the search space of combinatorial models for supply chain optimization problems. The operation research MP and declarative CLP, where constraints are modeled in different ways and different solving procedures are implemented, were linked together to use the strengths of both. This approach is particularly important for the decision and combinatorial optimization models with the objective function and constraints, there are many decision variables, and these are summed (common in manufacturing, supply chain management, project management, and logistic problems). The ECLiPSe system with Eplex library was proposed to implement a hybrid method. Additionally, the proposed hybrid transformed model is compared with the MILP-Mixed Integer Linear Programming model on the same data instances. For illustrative models, its use allowed finding optimal solutions eight to one hundred times faster and reducing the size of the combinatorial problem to a significant extent.
机译:本文介绍了一种用于建模和解决具有柔软,硬,逻辑约束的供应链优化问题的混合方法。实现软和逻辑约束的能力是供应链优化模型的一个非常重要的功能。这种约束对于建模造成商业协议,合同,竞争,技术,安全和环境条件产生的问题特别有用。两个编程和解决环境,数学编程(MP)和约束逻辑编程(CLP)在混合方法中组合。这种整合,杂交和问题的充分的多维变换(作为预定方法)有助于大大减少组合​​模型的搜索空间以供应链优化问题。通过不同方式和不同的解决程序建模的约束的操作研究MP和声明性CLP,将它们连接在一起以使用两者的优势。这种方法对于具有目标函数和约束的决策和组合优化模型尤为重要,存在许多决策变量,这些方法是(制造,供应链管理,项目管理和逻辑问题)的总结。建议使用EPLECT库的Eclipse系统实现混合方法。另外,将所提出的混合转换模型与相同数据实例的MILP混合整数线性编程模型进行比较。对于说明性型号,它使用允许在很大程度上更快地找到八到一百次百分之八次,并在很大程度上降低组合问题的大小。

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