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A hybrid VNS approach for the short-term production planning and scheduling: A case study in the pulp and paper industry

机译:短期生产计划和调度的混合VNS方法:以纸浆和造纸行业为例

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摘要

Mathematical formulations for production planning are increasing complexity, in order to improve their realism. In short-term planning, the desirable level of detail is particularly high. Exact solvers fail to generate good quality solutions for those complex models on medium- and large-sized instances within feasible time. Motivated by a real-world case study in the pulp and paper industry, this paper provides an efficient solution method to tackle the short-term production planning and scheduling in an integrated mill. Decisions on the paper machine setup pattern and on the production rate of the pulp digester (which is constrained to a maximum variation) complicate the problem. The approach is built on top of a mixed integer programming (MIP) formulation derived from the multi-stage general lotsizing and scheduling problem. It combines a Variable Neighbourhood Search procedure which manages the setup-related variables, a specific heuristic to determine the digester's production speeds and an exact method to optimize the production and flow movement decisions. Different strategies are explored to speed-up the solution procedure and alternative variants of the algorithm are tested on instances based on real data from the case study. The algorithm is benchmarked against exact procedures.
机译:生产计划的数学公式越来越复杂,以提高其真实性。在短期计划中,所需的详细程度特别高。确切的求解器无法在可行的时间内为中型和大型实例上的那些复杂模型生成高质量的解决方案。基于制浆造纸行业的实际案例研究,本文提供了一种有效的解决方案方法,可以解决综合工厂中的短期生产计划和调度问题。关于造纸机设置模式和纸浆蒸煮器生产率(受最大偏差限制)的决策使问题复杂化。该方法建立在混合整数规划(MIP)公式的基础上,该公式是从多阶段通用批处理和调度问题得出的。它结合了可管理与设置相关的变量的可变邻域搜索程序,用于确定蒸煮器生产速度的特定试探法以及用于优化生产和流动移动决策的精确方法。探索了不同的策略来加快解决程序的速度,并基于实例研究中的真实数据在实例上测试了该算法的其他变体。该算法针对确切的程序进行了基准测试。

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