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Joint optimization of opportunistic maintenance and production scheduling considering batch production mode and varying operational conditions

机译:考虑批量生产模式和不同运行条件的机会维护和生产调度联合优化

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摘要

The joint optimization of production scheduling and maintenance has been a hot topic. Most of the existing publications assume that the operational condition (OC) of a machine is constant during the entire production task. However, it is practical that a machine may experience several different OCs due to the requirement of different jobs. The varying OC may impact the deterioration of machines and their maintenance decisions. In addition, in a batch production system, a maintenance action has to be advanced before or postponed after a processing batch. Even if a machine is maintained preventively, it cannot be renewed since preventive maintenance (PM) is usually imperfect. In addition, minimal repair should be considered, which is costly and time consuming upon machine failure. The above concerns are practical but insufficiently considered in an integrated manner. Due to this integration, the complexity of the joint optimization problem is enhanced. An improved genetic algorithm (GA) based on random keys, convex set theory and the Jaya algorithm is proposed to solve the joint optimization problem of opportunistic PM and production scheduling in a batch production system under varying OCs. A series of comparative cases are conducted to illustrate the effectiveness of the proposed methods.
机译:生产调度和维护的联合优化一直是一个热门话题。大多数现有出版物假设机器的操作条件(OC)在整个生产任务期间是恒定的。然而,由于不同作业的要求,机器可能会经历几种不同的OC。不同的OC可能会影响机器的恶化及其维护决策。此外,在批量生产系统中,在处理批次后,必须先进的维护动作或推迟。即使在预防性维持机器,它也无法续签,因为预防性维护(PM)通常是不完美的。此外,应考虑最小的修复,这是机器故障时的昂贵且耗时。以上担忧是实际的,但以综合方式考虑不足。由于这种集成,联合优化问题的复杂性得到了增强。提出了一种改进的基于随机键,凸集理论和Jaya算法的遗传算法(GA),以解决各种OCS下批量生产系统的机会主义PM和生产调度的联合优化问题。进行了一系列比较病例以说明所提出的方法的有效性。

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