Two-Phase Degradation Modeling and Residual Life Prediction Based on Nonlinear Wiener Process

Huang Jiaxing, Sun Meng, Jing Bo, Liu Jingyuan, Cao Xin
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Abstract

Aiming at the problem of inaccurate description of two-phase degradation of products, a two-phase nonlinear Wiener model was established, and a residual life prediction method was proposed. Firstly, considering the random effect of the degenerate change-point, a two-phase nonlinear Wiener degradation model is established by using the normal distribution to describe the drift parameters of each phase. Secondly, based on Bayesian theory, the posteriori distribution of model parameters is derived, and the MHGS method is proposed to estimate the parameters of the two-phase degradation model. Then, a method to determine the degradation stage was proposed, based on DIC criterion. Combined with the state-space model and Kalman filter, the online updating process and residual life probability distribution of the two-phase degradation model were deduced. Finally, the proposed model and method are validated by solder joint degradation data. The results show that the proposed method can accurately estimate the model parameters and predict the residual life. Compared with the two-phase model of linear Wiener process, the two-phase model of nonlinear Wiener process proposed in this paper has higher prediction accuracy.
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基于非线性维纳过程的两相退化建模及剩余寿命预测
针对产品两相退化描述不准确的问题,建立了两相非线性维纳模型,提出了一种剩余寿命预测方法。首先,考虑退化变点的随机效应,采用正态分布描述各相漂移参数,建立了两相非线性Wiener退化模型;其次,基于贝叶斯理论推导了模型参数的后验分布,并提出了MHGS方法对两相退化模型的参数进行估计;然后,提出了一种基于DIC准则的退化阶段确定方法。结合状态空间模型和卡尔曼滤波,推导了两相退化模型的在线更新过程和剩余寿命概率分布。最后,利用焊点退化数据对模型和方法进行了验证。结果表明,该方法能准确估计模型参数,预测剩余寿命。与线性维纳过程的两相模型相比,本文提出的非线性维纳过程的两相模型具有更高的预测精度。
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