Research on preventive maintenance strategy of Coating Machine based on dynamic failure rate

Gu Dongwei, Ni Ruihua, Han Wenbo, Chen Guang, Jia Ligang
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Abstract

In this paper, a dynamic preventive maintenance strategy is proposed for the problem of high maintenance cost rate due to excessive maintenance caused by unreasonable maintenance threshold setting when complex electromechanical equipment maintenance strategy is formulated. Increasing failure rate factor and decreasing service age factor are introduced to describe the evolution rules of failure rate during the maintenance of the coating machine, and the BP-LSTM (BP-Long Short Term Memory Network, BP-LSTM) model is combined to predict the failure rate of the coating machine. A Dynamic preventive maintenance Model (DM) that relies on dynamic failure rate thresholds to classify the three preventive maintenance modes of minor, medium and major repairs is constructed. A dynamic preventive maintenance strategy optimization process based on Genetic-Particle Swarm Optimization (GPSO) algorithm with the lowest cost rate per unit time in service phase is built to solve the difficult problem of dynamic failure rate threshold finding. Based on the historical operating data of the coating machine, a case study of the dynamic preventive maintenance strategy of the coating machine was conducted to verify the effectiveness of the model and the developed maintenance strategy proposed in this paper. The results show that the maintenance strategy developed in this paper can ensure better economy and applicability.
基于动态故障率的涂布机预防性维修策略研究
针对复杂机电设备在制定维修策略时,由于维修阈值设置不合理导致维修过多,导致维修成本率过高的问题,提出了一种动态预防性维修策略。引入故障率增加因子和服役年限减少因子来描述镀膜机维修过程中故障率的演变规律,并结合BP-LSTM (bp -长短期记忆网络,BP-LSTM)模型对镀膜机的故障率进行预测。建立了一个基于动态故障率阈值的动态预防性维修模型(DM),对小修、中修和大修三种预防性维修模式进行了分类。为解决动态故障率阈值查找难题,构建了一种基于GPSO算法的服役阶段单位时间成本率最低的动态预防性维修策略优化过程。基于镀膜机的历史运行数据,对镀膜机的动态预防性维护策略进行了实例研究,验证了模型的有效性和所提出的维护策略。结果表明,本文提出的维修策略具有较好的经济性和适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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