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A condition monitoring approach for real-time monitoring of degrading systems using Kalman filter and logistic regression

机译:使用卡尔曼滤波和逻辑回归的实时监测降解系统的状态监测方法

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摘要

We present a new model for reliability analysis that is able to employ condition monitoring data in order to simultaneously monitor the latent degradation level and track failure progress over time. The method presented in this paper is a bridge between Bayesian filtering and classical binary classification, both of which have been employed successfully in various application domains. The Kalman filter is used to model a discrete-time continuous-state degradation process that is hidden and for which only indirect information is available through a multi-dimensional observation process. Logistic regression is then used to connect the latent degradation state with the failure process that is itself a discrete-space stochastic process. We present a closed-form solution for the marginal log-likelihood function and provide formulas for few important reliability measures. A dynamic cost-effective maintenance policy is finally introduced that can employ sensor signals for real-time decision-making. We finally demonstrate the accuracy and usefulness of our framework via numerical experiments.
机译:我们提出了一种用于可靠性分析的新模型,该模型能够使用状态监视数据,以便同时监视潜在的退化级别并跟踪随时间推移的故障进度。本文提出的方法是贝叶斯滤波和经典二进制分类之间的桥梁,两者都已成功地在各种应用领域中使用。卡尔曼滤波器用于对离散时间连续状态退化过程进行建模,该过程是隐藏的,通过多维观测过程只能获得间接信息。然后使用逻辑回归将潜在的退化状态与故障过程联系起来,而故障过程本身就是离散空间随机过程。我们为边际对数似然函数提供了一种封闭形式的解决方案,并提供了一些重要可靠性指标的公式。最终引入了一种动态的,具有成本效益的维护策略,该策略可以使用传感器信号进行实时决策。我们最终通过数值实验证明了我们框架的准确性和实用性。

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