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Integrated rescheduling and preventive maintenance for arrival of new jobs through evolutionary multi-objective optimization

机译:集成的调度和预防性维护,通过进化的多目标优化来实现新工作的到来

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摘要

In this paper, we study a rescheduling problem in response to arrival of new jobs in single machine layout, where preventive maintenance should be determined. Preventive maintenance together with controllable processing time could alleviate the inherent deteriorating effect in manufacturing system. Processing sequence of original and new jobs, compression of each job, and position of maintenance should be optimized simultaneously with regards to total operational cost (job's total completion times, maintenance cost and compression cost) and total completion time deviation. An improved elitist non-dominated sorting genetic algorithm (NSGA-II) has been proposed to solve the rescheduling problem. To address the key problem of balancing between exploration and exploitation, we hybridize differential evolution mutation operation with NSGA-II to enhance diversity, constitute high-quality initial solution based on assignment model for exploitation, and incorporate analytic property of non-dominated solutions for exploration. Finally computational study is designed by randomly generating various instances with regards to the problem size from given distributions. By use of existing performance indicators for convergence and diversity of Pareto fronts, we illustrate the effectiveness of the hybrid algorithm and the incorporation of domain knowledge into evolutionary optimization in rescheduling.
机译:在本文中,我们研究了在单个机器布局中响应新作业的到来的重新计划问题,在该情况下应确定预防性维护。预防性维护以及可控的处理时间可以减轻制造系统中固有的恶化作用。应同时针对总运营成本(任务的总完成时间,维护成本和压缩成本)和总完成时间偏差,对原始和新工作的处理顺序,每个工作的压缩以及维护位置进行优化。提出了一种改进的精英非支配排序遗传算法(NSGA-II)来解决调度问题。为了解决勘探与开发之间平衡的关键问题,我们将差异进化突变操作与NSGA-II混合以增强多样性,基于开发分配模型构成高质量的初始解决方案,并结合非主要解决方案的分析性质。最后,通过从给定分布中随机生成有关问题大小的各种实例来设计计算研究。通过使用现有的性能指标进行Pareto前沿的收敛和多样性,我们说明了混合算法的有效性以及在重新调度中将领域知识纳入进化优化中。

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