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Uncertainty Quantification in Remaining Useful Life Prediction Using First-Order Reliability Methods

机译:一阶可靠性方法在剩余使用寿命预测中的不确定度量化

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摘要

In this paper, we investigate the use of first-order reliability methods to quantify the uncertainty in the remaining useful life (RUL) estimate of components used in engineering applications. The prediction of RUL is affected by several sources of uncertainty, and it is important to systematically quantify their combined effect on the RUL prediction in order to aid risk assessment, risk mitigation, and decision-making. While sampling-based algorithms have been conventionally used for quantifying the uncertainty in RUL, analytical approaches are computationally cheaper, and sometimes they are better suited for online decision-making. Exact analytical algorithms may not be available for practical engineering applications, but effective approximations can be made using first-order reliability methods. This paper describes three first-order reliability-based methods for RUL uncertainty quantification: first-order second moment method (FOSM), the first-order reliability method (FORM), and the inverse first-order reliability method (inverse-FORM). The inverse-FORM methodology is particularly useful in the context of online health monitoring, and this method is illustrated using the power system of an unmanned aerial vehicle, where the goal is to predict the end of discharge of a lithium-ion battery.
机译:在本文中,我们研究了使用一阶可靠性方法来量化工程应用中使用的组件的剩余使用寿命(RUL)估计中的不确定性。 RUL的预测受多种不确定性因素的影响,重要的是系统地量化其对RUL预测的综合影响,以帮助风险评估,风险缓解和决策制定。尽管通常将基于采样的算法用于量化RUL中的不确定性,但是分析方法在计算上更便宜,有时它们更适合于在线决策。确切的分析算法可能不适用于实际的工程应用,但是可以使用一阶可靠性方法进行有效的近似。本文介绍了三种用于RUL不确定性的基于一阶可靠性的方法:一阶第二矩方法(FOSM),一阶可靠性方法(FORM)和反一阶可靠性方法(inverse-FORM)。逆格式方法在在线健康监控中特别有用,该方法使用无人飞行器的动力系统进行了说明,其目的是预测锂离子电池的放电结束。

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