Scheduling a Stochastic Remanufacturing Process with Disassembly, Reprocessing and Reassembly

Yaping Fu, Xiwang Guo, Liang Qi
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Abstract

Remanufacturing has attracted increasing interest in recent years since it plays important roles in environmental protection and energy-saving. This work presents a scheduling problem from an uncertain remanufacturing process including three subsystems, i.e., disassembly, reprocessing and reassembly ones. Disassembly and reassembly shops contain multiple workstations in parallel to disassemble end-of-life (EOL) products and reassemble the components, respectively. A reprocessing shop is a hybrid flow shop to process the components disassembled from EOL products. A stochastic programming model is established to minimize the expected makespan. In order to solve it efficiently, a learning-based shuffled frog-leaping algorithm is proposed, where a learning mechanism by using obtained searching information is developed to strengthen its exploration and exploitation abilities. Extensive experiments are performed on a set of test problems. The proposed algorithm is compared with a genetic algorithm and simulated annealing algorithm used in some existing studies. The results demonstrate that it is a more promising optimizer to solve the concerned problem than them.
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具有拆解、再加工和再组装的随机再制造过程调度
由于再制造在环保和节能方面的重要作用,近年来引起了越来越多的关注。本文研究了一个不确定再制造过程的调度问题,该过程包括拆卸、再加工和再组装三个子系统。拆卸和重新组装车间包含多个并行工作站,分别拆卸寿命终止(EOL)产品和重新组装组件。再加工车间是一个混合流程车间,用于处理从EOL产品中拆卸下来的部件。建立了最小化期望完工时间的随机规划模型。为了有效地解决这一问题,提出了一种基于学习的洗牌蛙跳算法,该算法利用获得的搜索信息建立了学习机制,增强了洗牌蛙跳算法的探索和利用能力。对一组测试问题进行了广泛的实验。将该算法与已有的遗传算法和模拟退火算法进行了比较。结果表明,它是一种比它们更有前途的优化器。
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