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Developing machine learning-based models to estimate time to failure for PHM

机译:开发基于机器学习的模型来估计PHM的故障时间

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The core of PHM (Prognostic and Health Monitoring) technology is prognostics which is able to estimate time to failure (TTF) for the monitored components or systems using the built-in predictive models. However the development of predictive models for TTF estimation remains a challenge. To address this issue, we proposed to develop machine learning-based models for TTF estimation by using the techniques from machine learning and data mining. In the past decade, we have been working on the development of machine learning-based models for estimating TTF and applied the developed technology to various real-world applications such as train wheel prognostics, and aircraft engine prognostics. In this paper, we report two kinds of machine learning-based models for estimating TTF, including multistage classification, on-demand regression. The multistage classification improves the TTF estimation over one stage classification by dividing the time window into more small narrow time windows. A case study, APU prognostics, demonstrates the usefulness of the developed methods. The results from the case study show that the machine learning-based modeling method is an effective and feasible way to develop predictive models to estimate TTF for PHM.
机译:PHM(预后和健康监视)技术的核心是预后,它可以使用内置的预测模型来估计受监视组件或系统的故障时间(TTF)。但是,开发用于TTF估计的预测模型仍然是一个挑战。为了解决这个问题,我们建议通过使用来自机器学习和数据挖掘的技术来开发基于机器学习的TTF估计模型。在过去的十年中,我们一直在致力于开发基于机器学习的模型来估算TTF,并将开发的技术应用于各种实际应用中,例如轮毂预测和飞机发动机预测。在本文中,我们报告了两种基于机器学习的TTF估计模型,包括多阶段分类,按需回归。通过将时间窗口划分为更多较小的窄时间窗口,多级分类在一级分类中改进了TTF估计。案例研究APU预后论证了所开发方法的有用性。案例研究的结果表明,基于机器学习的建模方法是开发预测模型以估计PHM的TTF的有效途径。

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