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A Sequential Bayesian Updated Wiener Process Model for Remaining Useful Life Prediction

机译:一个序贯贝叶斯更新的维纳流程模型,用于剩余使用寿命预测

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摘要

Wiener processes have been extensively used to model the degradation processes exhibiting a linear trend for predicting the remaining useful life (RUL) of degrading components. To incorporate the real-time degradation monitoring information into degradation modeling, the Bayesian method has been frequently utilized to update the model parameter, particularly for the drift parameter in Wiener process. However, due to the inherent independent increment and Markov properties of Wiener process, the Bayesian updated drift parameter only utilizes the current degradation measurement and cannot incorporate the whole degradation measurements up to now. As such, once the updated degradation model in this way is used to predict the RUL, the obtained result may be dominated by partial degradation observations or lower the prognosis accuracy. In this paper, we propose a sequential Bayesian updated Wiener process model for RUL prediction. First, a Wiener process model with random drift efficient is used to model the degradation process with the linear trend. To estimate the model parameters, the historical degradation measurements are used to determine the initial model parameters based on the maximum likelihood estimation (MLE) method. Then, for the degrading component in service, a sequential Bayesian method is proposed to update the random drift parameter in Wiener process model. Differing from existing studies using the Bayesian method, the proposed sequential method uses the Bayesian estimate for random drift parameter in the last time as the prior of the next time. As such, the Bayesian estimate for random drift parameter in the current time is dependent on the whole degradation measurements up to current time, and thus the problem of depending only on the current degradation measurement is solved. Finally, we derive the analytical expressions of the RUL distribution based on the concept of the first passage time (FPT). Two case studies associated with the gyroscope drift data and lithium-ion battery data are provided to show the effectiveness and superiority of the proposed method. The results indicate that the proposed method can improve the RUL prediction accuracy.
机译:维纳工艺已被广泛地用于模拟表现出线性趋势的劣化过程,以预测降解组分的剩余使用寿命(RUL)。为了将实时劣化监测信息纳入劣化建模,经常利用贝叶斯方法来更新模型参数,特别是在维纳过程中的漂移参数。然而,由于维纳流程的固有的独立增量和马尔可夫属性,贝叶斯更新的漂移参数仅利用当前的劣化测量,并且不能将整个劣化测量纳入现在。这样,一旦以这种方式使用更新的劣化模型来预测RUL,所获得的结果可以通过部分劣化观察或降低预后精度来支配。在本文中,我们提出了一种用于RUL预测的顺序贝叶斯更新的维纳流程模型。首先,使用随机漂移有效的维纳流程模型用于使用线性趋势来模拟劣化过程。为了估计模型参数,历史降解测量用于基于最大似然估计(MLE)方法来确定初始模型参数。然后,对于服务中的劣化组件,提出了一种顺序贝叶斯方法来更新维纳过程模型中的随机漂移参数。使用贝叶斯方法的现有研究不同,所提出的顺序方法使用贝叶斯估计在下次在下一次之前的最后一次随机漂移参数。这样,当前时间的随机漂移参数的贝叶斯估计取决于整个劣化测量到当前时间,因此解决了根据电流劣化测量的问题。最后,我们基于第一次通过时间(FPT)的概念来得出rul分布的分析表达。提供了与陀螺仪漂移数据和锂离子电池数据相关的两个案例研究以显示所提出的方法的有效性和优越性。结果表明该方法可以提高鲁尔预测精度。

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