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通过时间变换分析剩余使用寿命动态与不确定性

Analysis of RUL dynamics and uncertainty via time transformation

Reliability Engineering and System Safety · 2025
被引 2
ABS 3

中文导读

提出一种新方法,通过时间变换使平均剩余寿命线性化,推导出剩余使用寿命的显式置信区间,量化随机不确定性,适用于参数与非参数寿命分布,并用LED、并行系统和涡扇发动机数据验证。

Abstract

This work introduces a novel analytical method to analyze the dynamics of remaining useful life (RUL) and quantify uncertainty in its estimation. The approach employs a time transformation that makes the mean residual life (MRL) a linear function of transformed time, enabling the derivation of explicit RUL confidence bounds. Once mapped back to physical space, the bounds quantify aleatoric (stochastic) uncertainty in RUL and yield asymmetrical confidence intervals for both parametric and non-parametric lifetime distributions. The approach leverages a key feature of reliability distributions: the average RUL loss rate, k , in transformed time, facilitating a direct derivation of confidence bounds. In parametric cases, k is uniquely defined by the reliability distribution parameters, while for non-parametric distributions, it is derived from data by estimating the coefficient of variation. Higher slopes indicate faster degradation, leading to narrower confidence intervals and lower RUL variance. The method’s applicability to stochastic processes and robustness under different data volumes are also investigated and discussed. The novel approach reveals heretofore unknown insights into classical reliability distributions. It is demonstrated through real-world applications, including LED reliability assessment, parallel system RUL estimation, and turbofan lifespan prediction using NASA N-CMAPSS data, offering a new perspective on the evolving dynamics of mean residual life and remaining useful life.

可靠性工程寿命预测不确定性量化统计方法