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Prognostic Degradation Models for Computing and Updating Residual Life Distributions in a Time-Varying Environment

机译:时变环境下计算和更新剩余寿命分布的预测退化模型

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摘要

This paper presents a degradation modeling framework for computing condition-based residual life distributions of partially degraded systems and/or components functioning under time-varying environmental and/or operational conditions. Our approach is to mathematically model degradation-based signals from a population of components using stochastic models that combine three main sources of information: real-time degradation characteristics of component obtained by observing the component's in-situ degradation signal, the degradation characteristics of the component's population, and the real-time status of the environmental conditions under which the component is operating. Prior degradation information is used to estimate the model coefficients. The resulting generalized stochastic degradation model is then used to predict an initial residual life distribution for the component being monitored. In-situ degradation signals, along with real-time information related to the environmental conditions, are then used to update the residual life distributions in real-time. Because these updated distributions capture current health information and the latest environmental conditions, they provide precise lifetime estimates. The performance of the proposed models is evaluated using real world vibration-based degradation signals from a rotating machinery application.
机译:本文提出了一种退化建模框架,用于计算在时变环境和/或操作条件下运行的部分退化系统和/或组件的基于条件的剩余寿命分布。我们的方法是使用随机模型来数学建模一组组件中基于退化的信号,该模型结合了三个主要信息源:通过观察组件的原位退化信号获得的组件的实时退化特性,组件的实时退化特性。人口,以及组件正在运行的环境条件的实时状态。先验退化信息用于估计模型系数。然后,将所得的广义随机退化模型用于预测所监视组件的初始剩余寿命分布。然后,使用原位降级信号以及与环境条件有关的实时信息来实时更新剩余寿命分布。由于这些更新的分布捕获了当前的健康信息和最新的环境状况,因此它们提供了精确的寿命估计。使用来自旋转机械应用程序的基于现实世界的基于振动的劣化信号来评估所提出模型的性能。

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