Prognostics of Non-Markovian Degradation Processes with Fractal Property and Measurement Uncertainty

Xiaopeng Xi, Donghua Zhou, Maoyin Chen
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引用次数: 1

Abstract

Non-Markovian stochastic degradation processes exist extensively in the practical industrial systems. For instance, a blast furnace should be operated continuously subject to harsh conditions of high temperature, sulfuration, and nitration, resulting in biased random walks among the degrading performance variables. This phenomenon can be well interpreted as the memory effects, which implies the future states may rely on each of the past ones. The other tough issue is that the degradation processes would be contaminated with measurement noises from unidentified sources. Large level of measurement uncertainty seems adverse to the accurate extraction of non-Markovian diffusions, and hence impacts the prognostics of the system. To overcome these difficulties, we mainly present a remaining useful life (RUL) prediction method on the framework of a state space model incorporating both the fractional Brownian motion (FBM) and the Gaussian noise. Attributing to the fractal property of longterm dependency, FBM naturally adapts to the non-Markovian degradation modeling. Considering the nonlinearity, a variant form of sigmoid function is also adopted as the fixed drift item. The hidden states and the unknown parameters are estimated synchronously using a composite identification algorithm, while the RUL distributions are derived by a Monte Carlo method. A simulation example further verifies the validity of the proposed prognostics scheme.
具有分形特性和测量不确定度的非马尔可夫退化过程的预测
非马尔可夫随机退化过程广泛存在于实际工业系统中。例如,高炉应在高温、硫化、硝化等恶劣条件下连续运行,导致性能退化变量之间存在有偏随机游走。这种现象可以很好地解释为记忆效应,这意味着未来的状态可能依赖于过去的每一个状态。另一个棘手的问题是,退化过程将受到来自不明来源的测量噪声的污染。大的测量不确定度似乎不利于非马尔可夫扩散的准确提取,从而影响系统的预测。为了克服这些困难,我们主要提出了一种结合分数阶布朗运动(FBM)和高斯噪声的状态空间模型框架的剩余使用寿命(RUL)预测方法。由于长期依赖的分形特性,FBM自然地适应于非马尔可夫退化建模。考虑到非线性,还采用了一种变型的s型函数作为固定漂移项。采用复合辨识算法对隐状态和未知参数进行同步估计,同时采用蒙特卡罗方法推导了RUL分布。仿真算例进一步验证了所提预测方案的有效性。
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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