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Improving preciseness of time to failure predictions: Application to APU starter

机译:提高故障预测时间的准确性:在APU启动器中的应用

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Despite the availability of huge amounts of data and a variety of powerful data analysis methods, prognostic models are still often failing to provide accurate and precise time to failure estimations. This paper addresses this problem by integrating several machine learning algorithms. The approach proposed relies on a classification system to determine the likelihood of component failures and to provide rough indications of remaining life. It then introduces clustering and SVM-based local regression to refine the time to failure estimations provided by the classification system. The paper illustrates the applicability of the proposed approach through a real world aerospace application and discusses data pre-processing requirements. The preliminary results show that the proposed method can reduce uncertainty in time to failure estimates, which in turn helps augment the usefulness of prognostics.
机译:尽管可获得大量数据和各种强大的数据分析方法,但预测模型仍常常无法提供准确而准确的故障估计时间。本文通过集成几种机器学习算法解决了这个问题。提出的方法依赖于分类系统来确定组件故障的可能性并提供剩余寿命的粗略指示。然后,它引入了聚类和基于SVM的局部回归,以优化分类系统提供的故障估计时间。本文说明了该方法在现实世界中的航空应用中的适用性,并讨论了数据预处理要求。初步结果表明,所提出的方法可以减少故障估计时间的不确定性,进而有助于提高预测的实用性。

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