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Residual life estimation based on nonlinear-multivariate Wiener processes

机译:基于非线性多元维纳过程的剩余寿命估计

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摘要

For some operable products with critical reliability constraints, it is important to estimate accurately their residual lives so that maintenance actions can be arranged suitably and efficiently. In the literature, most publications have dealt with this issue by only considering one-dimensional degradation data. However, this may be not reasonable in situations wherein a product may have two or more performance characteristics (PCs). In such situations, multi-dimensional degradation data should be taken into account. Here, for the target product with multivariate PCs, methods of residual life (RL) estimation are developed. This is done with the assumption that the degradation of PCs over time is governed by a multivariate Wiener process with nonlinear drifts. Both the population-based degradation information and the degradation history of the target product up-to-date are combined to estimate the RL of the product. Specifically, the population-based degradation information is first used to obtain the estimates of the unknown parameters of the model through the EM algorithm. Then, the degradation history of the target product is adopted to update the degradation model, based on which the RL is estimated accordingly. To illustrate the validity and the usefulness of the proposed method, a numerical example about fatigue cracks is finally presented and analysed.
机译:对于某些具有严格可靠性限制的可操作产品,重要的是准确估算其剩余寿命,以便可以适当而有效地安排维护措施。在文献中,大多数出版物仅通过考虑一维降级数据来解决此问题。但是,在产品可能具有两个或多个性能特征(PC)的情况下,这可能不合理。在这种情况下,应考虑多维降级数据。在此,针对具有多变量PC的目标产品,开发了剩余寿命(RL)估算方法。这是通过以下假设完成的:PC随时间的退化是由具有非线性漂移的多元Wiener过程控制的。将基于种群的降解信息和目标产品的最新降解历史结合起来以估算产品的RL。具体而言,首先使用基于种群的退化信息通过EM算法获得模型未知参数的估计值。然后,采用目标产品的降级历史记录来更新降级模型,并据此估算RL。为了说明该方法的有效性和实用性,最后给出了一个疲劳裂纹的数值例子并进行了分析。

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