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Maintenance scheduling in manufacturing systems based on predicted machine degradation

机译:基于预测的机器退化的制造系统中的维护计划

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摘要

In this paper, we propose a new method for scheduling of maintenance operations in a manufacturing system using the continuous assessment and prediction of the level of performance degradation of manufacturing 1equipment, as well as the complex interaction between the production process and maintenance operations. Effects of any maintenance schedule are evaluated through a discrete-event simulation that utilizes predicted probabilities of machine failures in the manufacturing system, where predicted probabilities of failure are assumed to be available either from historical equipment reliability information or based on the newly available predictive algorithms. A Genetic Algorithm based optimization procedure is used to search for the most cost-effective maintenance schedule, considering both production gains and maintenance expenses. The algorithm is implemented in a simulated environment and benchmarked against several traditional maintenance strategies, such as corrective maintenance, scheduled maintenance and condition-based maintenance. In all cases that were studied, application of the newly proposed maintenance scheduling tool resulted in a noticeable increase in the cost-benefits, which indicates that the use of predictive information about equipment performance through the newly proposed maintenance scheduling method could result in significant gains obtained by optimal maintenance scheduling.
机译:在本文中,我们提出了一种用于对制造系统中的维护操作进行调度的新方法,该方法使用对制造1设备性能下降水平的持续评估和预测以及生产过程与维护操作之间的复杂相互作用来进行调度。通过使用制造系统中机器故障的预测概率的离散事件模拟,可以评估任何维护计划的效果,在该模拟中,假定从历史设备可靠性信息或基于新的可用预测算法可获得预测的故障概率。同时考虑生产收益和维护费用,使用基于遗传算法的优化程序来搜索最具成本效益的维护计划。该算法在模拟环境中实现,并针对几种传统维护策略进行了基准测试,例如纠正性维护,定期维护和基于条件的维护。在所研究的所有情况下,新提出的维护计划工具的应用都会导致成本收益显着增加,这表明通过新提出的维护计划方法使用有关设备性能的预测信息可能会带来可观的收益。通过最佳的维护计划。

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