考虑个体差异的系统退化建模与半Markov过程维修决策  被引量:3

System degradation modeling with individual differences and maintenance decision based on semi-Markov process

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作  者:李琦 李婧 蒋增强[1] 边靖媛 LI Qi;LI Jing;JIANG Zengqiang;BIAN Jingyuan(School of Mechanical, Electronic and Control Engineering, Beijing Jiaotong University, Beijing 100044, China)

机构地区:[1]北京交通大学机械与电子控制工程学院

出  处:《计算机集成制造系统》2020年第2期331-339,共9页Computer Integrated Manufacturing Systems

基  金:北京市自然科学基金资助项目(9184030);中央高校基本科研业务费专项资金资助项目(2019JBM053)~~

摘  要:为了在采样不完全、个体差异明显的条件下对缓慢退化系统的维修策略进行研究,针对具有个体差异的缓慢退化系统,选择线性混合效应模型进行退化建模,并利用自回归方法对模型残差中的时间序列相关性进行调节,提高了模型的准确性。在此基础上构造合理的状态空间和维修决策空间,求解退化过程的状态转移概率,并使用策略迭代算法求解最小化单位时间长期预计成本的最优化维修策略。以激光退化实际案例求解了基于半Markov决策过程的维修策略,并与经典的基于役龄的维修策略和周期检查的维修策略进行比较,证明了所提方法能够更加精确地刻画系统的退化过程,并可帮助制定兼顾成本与可靠性的维修策略。To study the maintenance strategy of slow degradation system under the condition of incomplete sampling and individual differences,a linear mixed effect model was employed to model the slow degradation system with individual differences,and autoregressive method was used to adjust the correlation of time series in the model residuals,which had improved the accuracy of model.On this basis,a reasonable state space and maintenance decision space were constructed to solve the state transition probability of degradation process,and the optimal maintenance strategy was solved by using policy iteration algorithm to minimize the long-term estimated cost per unit time.The maintenance strategy based on semi-Markov decision process was demonstrated by a practical case of laser degradation.Compared with the classical maintenance strategy based on service life and periodic inspection,the results showed that the proposed method could describe the degradation process more accurately and help to formulate maintenance strategy considering both cost and reliability.

关 键 词:半MARKOV决策过程 缓慢退化系统 线性混合效应模型 策略迭代算法 

分 类 号:TB114.3[理学—概率论与数理统计]

 

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