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Prediction of the remaining useful life: An integrated framework for model estimation and failure prognostics

机译:剩余使用寿命的预测:模型评估和故障预测的集成框架

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摘要

Machine failure prognostic is concerned with the generation of long term predictions and the estimation of the probability density function of the remaining useful life. Nowadays, a commonly used approach for this task is to make the prediction using a dynamical state-space model of the fault evolution. However, the main limitation of this approach is that it requires the values of the model parameters to be known. This work aims to alleviate the need for extensive prior efforts related to finding the exact model. For this we propose a framework for data-driven prediction of RUL with on-line model estimation. This is achieved by combining the state estimation algorithm with Maximum-Likelihood parameter estimation in the form of the Expectation-Maximization algorithm. We show that the proposed algorithm can be used with different classes of both black-box and grey-box models. First, a detailed solution for linear black-box models with the Kalman filter is presented followed by the extension to nonlinear models using either the Unscented Kalman filter or the particle filter. The performance of the algorithms is demonstrated using the experimental data from a single stage gearbox.
机译:机器故障的预后与长期预测的产生以及剩余使用寿命的概率密度函数的估计有关。如今,用于此任务的常用方法是使用故障演化的动态状态空间模型进行预测。但是,这种方法的主要局限性在于它要求知道模型参数的值。这项工作旨在减轻与寻找精确模型有关的大量先验工作的需要。为此,我们提出了一种用于在线模型估计的数据驱动RUL预测的框架。这是通过将状态估计算法与最大期望参数估计(以Expectation-Maximization算法的形式)相结合来实现的。我们表明,所提出的算法可以与黑盒模型和灰盒模型的不同类别一起使用。首先,提出了使用卡尔曼滤波器的线性黑盒模型的详细解决方案,然后扩展到使用无味卡尔曼滤波器或粒子滤波器的非线性模型。使用单级变速箱的实验数据证明了算法的性能。

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