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Remaining Useful Life Prediction for Degradation Processes With Long-Range Dependence

机译:长期依赖的降解过程的剩余使用寿命预测

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摘要

A prerequisite for the existing remaining useful life prediction methods based on stochastic processes is the assumption of independent increments. However, this is in sharp contrast to some practical systems including batteries and blast furnace walls, in which the degradation processes have the property of long-range dependence. Based on the fractional Brownian motion, we adopt a degradation process with long-range dependence to predict the remaining useful life of the above systems. Because the degradation process with long-range dependence is neither a Markovian process nor a semimartingale, the exact analytical first passage time is difficult to derive directly. To address this problem, a weak convergence theorem is first adopted to approximately transform a fractional Brownian motion-based degradation process into a Brownian motion-based one with a time-varying coefficient. Then, with a space-time transformation, the first passage time of the degradation process with long-range dependence can be obtained in a closed form. Unknown parameters in the degradation model can be identified using discrete dyadic wavelet transform and maximum likelihood estimation. Numerical simulations and a practical example of a blast furnace wall are given to verify the effectiveness of the proposed method.
机译:现有的基于随机过程的剩余使用寿命预测方法的前提是独立增量的假设。然而,这与包括电池和高炉壁的某些实用系统形成鲜明对比,在这些系统中,降解过程具有长期依赖性。基于分数布朗运动,我们采用具有长期依赖性的降级过程来预测上述系统的剩余使用寿命。由于具有长期依赖性的降解过程既不是马尔可夫过程也不是半mart,因此很难直接得出确切的分析首次通过时间。为了解决这个问题,首先采用弱收敛定理,将基于分数布朗运动的降级过程近似转换为具有时变系数的布朗运动。然后,通过时空变换,可以以封闭的形式获得具有长期依赖性的降解过程的第一通过时间。可以使用离散二进小波变换和最大似然估计来识别降级模型中的未知参数。数值模拟和高炉炉壁的实际例子证明了所提方法的有效性。

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