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Hybrid simulated annealing and MIP-based heuristics for stochastic lot-sizing and scheduling problem in capacitated multi-stage production system

机译:混合模拟退火和基于MIP的启发式方法求解容量多阶段生产系统中的随机批量确定和调度问题

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This paper addresses lot sizing and scheduling problem of a flow shop system with capacity constraints, sequence-dependent setups, uncertain processing times and uncertain multi-product and multi-period demand. The evolution of the uncertain parameters is modeled by means of probability distributions and chance-constrained programming (CCP) theory. A new mixed-integer programming (MIP) model with big bucket time approach is proposed to formulate the problem. Due to the complexity of problem, two MlP-based heuristics with rolling horizon framework named non-permutation heuristic (NPH) and permutation heuristic (PH) have been performed to solve this model. Also, a hybrid meta-heuristic based on a combination of simulated annealing, firefly algorithm and proposed heuristic for scheduling is developed to solve the problem. Additionally, Taguchi method is conducted to calibrate the parameters of the meta-heuristic and select the optimal levels of the algorithm's performance influential factors. Computational results on a set of randomly generated instances show the efficiency of the hybrid meta-heuristic against exact solution algorithm and heuristics.
机译:本文针对具有容量限制,依赖于序列的设置,不确定的处理时间以及不确定的多产品和多期间需求的流水车间系统,解决了批量计划和调度问题。不确定性参数的演化是通过概率分布和机会约束编程(CCP)理论建模的。提出了一种新的具有大存储桶时间方法的混合整数规划(MIP)模型来解决该问题。由于问题的复杂性,已经执行了两种具有滚动水平框架的基于MIP的启发式方法,分别称为非置换启发式(NPH)和置换启发式(PH),以解决该模型。此外,还开发了一种基于模拟退火,萤火虫算法和拟议的启发式算法相结合的混合元启发式算法来解决该问题。另外,使用Taguchi方法来校准元启发式算法的参数,并选择算法性能影响因素的最佳水平。在一组随机生成的实例上的计算结果表明,混合元启发式算法相对于精确解算法和启发式算法的效率较高。

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