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首页> 外文期刊>IEEE transactions on automation science and engineering: a publication of the IEEE Robotics and Automation Society >Optimization for a Joint Predictive Maintenance and Job Scheduling Problem With Endogenous Yield Rates
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Optimization for a Joint Predictive Maintenance and Job Scheduling Problem With Endogenous Yield Rates

机译:优化具有内生良率的联合预测性维护和作业调度问题

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While job scheduling problems have been studied extensively, scheduling problems with endogenous yield rates that may be affected by predictive maintenance is not thoroughly investigated. In this study, we consider the optimization of a joint predictive maintenance and job scheduling problem for the minimization of total shortage penalty. As maintenance may be conducted to raise machine yield rates, machine production rates and job processing times become endogenous, and the optimization problem is different from traditional scheduling problems. We formulate a mixed integer program for this problem and develop a heuristic algorithm based on Tabu search. We demonstrate the effectiveness of our algorithm through numerical experiments and a way of estimating the yield declining rate with industry defect and maintenance records. Note to Practitioners—This work is motivated by the real need of our industry collaborator, red electronics manufacturer. Every morning, the manufacturer chooses up to three out of eleven photolithography machines to conduct maintenance. Conducting maintenance helps raise machine yield rates to decrease the number of defects in expectation. However, the production schedule of some jobs must be postponed, and delay and shortage may arise. The decision is thus to schedule jobs as well as maintenance to find a balance between yield loss and shortage loss. We help the manufacturer by formulating an optimization model and develop an algorithm to solve the model. The algorithm may be applied to similar cases when one needs to schedule maintenance and production processes at the same time.
机译:虽然作业调度问题已被广泛研究,但尚未彻底研究可能受预测性维护影响的内生产量率调度问题。在这项研究中,我们考虑了联合预测性维护和作业调度问题的优化,以最小化总短缺损失。由于可以进行维护以提高机器的良率,因此机器的生产率和作业处理时间成为内生的,优化问题与传统的调度问题不同。针对该问题,我们制定了一个混合整数程序,并开发了一种基于禁忌搜索的启发式算法。我们通过数值实验和一种通过行业缺陷和维护记录估计良率下降率的方法证明了我们的算法的有效性。从业者须知 - 这项工作的动机是我们的行业合作者红色电子制造商的真正需求。每天早上,制造商都会从11台光刻机中选择多达3台进行维护。进行维护有助于提高机器良品率,从而减少预期的缺陷数量。但是,某些作业的生产进度必须推迟,可能会出现延迟和短缺。因此,决定是安排工作和维护,以在产量损失和短缺损失之间找到平衡。我们通过制定优化模型来帮助制造商,并开发求解模型的算法。当需要同时安排维护和生产过程时,该算法可以应用于类似情况。

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