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A Wiener-process-based degradation model with a recursive filter algorithm for remaining useful life estimation

机译:基于维纳过程的退化模型,具有递归过滤算法,可用于估计剩余使用寿命

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摘要

Remaining useful life estimation (RUL) is an essential part in prognostics and health management. This paper addresses the problem of estimating the RUL from the observed degradation data. A Wiener-process-based degradation model with a recursive filter algorithm is developed to achieve the aim. A novel contribution made in this paper is the use of both a recursive filter to update the drift coefficient in the Wiener process and the expectation maximization (EM) algorithm to update all other parameters. Both updating are done at the time that a new piece of degradation data becomes available. This makes the model depend on the observed degradation data history, which the conventional Wiener-process-based models did not consider. Another contribution is to take into account the distribution in the drift coefficient when updating, rather than using a point estimate as an approximation. An exact RUL distribution considering the distribution of the drift coefficient is obtained based on the concept of the first hitting time. A practical case study for gyros in an inertial navigation system is provided to substantiate the superiority of the proposed model compared with competing models reported in the literature. The results show that our developed model can provide better RUL estimation accuracy.
机译:剩余使用寿命估计(RUL)是预测和健康管理的重要组成部分。本文解决了从观察到的退化数据估算RUL的问题。为了达到该目的,开发了基于Wiener过程的具有递归过滤算法的退化模型。本文做出的新贡献是使用递归滤波器来更新维纳过程中的漂移系数,并使用期望最大化(EM)算法来更新所有其他参数。当有新的降级数据可用时,将完成两个更新。这使得模型依赖于观察到的退化数据历史记录,而传统的基于维纳过程的模型并未考虑这些历史记录。另一个贡献是在更新时考虑了漂移系数的分布,而不是使用点估计作为近似值。基于第一击中时间的概念,获得了考虑漂移系数分布的精确RUL分布。提供了一个惯性导航系统中陀螺仪的实际案例研究,以证实所提出模型与文献中报道的竞争模型相比的优越性。结果表明,我们开发的模型可以提供更好的RUL估计精度。

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