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A co-training-based approach for prediction of remaining useful life utilizing both failure and suspension data

机译:基于联合训练的方法,利用故障和悬架数据预测剩余使用寿命

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摘要

Traditional data-driven prognostics often requires some amount of failure data for the offline training in order to achieve good accuracy for the online prediction. Failure data refer to condition monitoring data collected from the very beginning of an engineered system's lifetime till the occurrence of its failure. However, in many engineered systems, failure data are fairly expensive and time-consuming to obtain while suspension data are readily available. Suspension data refer to condition monitoring data acquired from the very beginning of an engineered system's lifetime till planned inspection or maintenance when the system is taken out of service. In such cases, it becomes essentially critical to utilize suspension data which may carry rich information regarding the degradation trend and help achieve more accurate remaining useful life (RUL) prediction. To this end, this paper proposes a co-training-based data-driven prognostic approach, denoted by COPROG, which uses two data-driven algorithms with each predicting RULs of suspension units for the other. After a suspension unit is chosen and its RUL is predicted by an individual algorithm, it becomes a virtual failure unit that is added to the training data set of the other individual algorithm. Results obtained from two case studies suggest that COPROG gives more accurate RUL prediction, as compared to any individual algorithm with no use of suspension data, and that COPROG can effectively exploit suspension data to improve the prognostic accuracy.
机译:传统的数据驱动的预测通常需要一些故障数据来进行离线培训,以实现在线预测的良好准确性。故障数据是指从工程系统的整个生命周期开始到发生故障之前收集的状态监视数据。但是,在许多工程系统中,获取故障数据相当昂贵且耗时,而悬架数据很容易获得。暂停数据是指从工程系统的整个生命周期开始直至系统停止运行时计划的检查或维护所获得的状态监视数据。在这种情况下,利用悬浮数据可能至关重要,该数据可以携带有关降解趋势的丰富信息并有助于实现更准确的剩余使用寿命(RUL)预测。为此,本文提出了一种基于协同训练的数据驱动的预测方法,以COPROG表示,该方法使用两种数据驱动的算法,每种算法分别预测悬架单元的RUL。选择悬架单元并通过单独的算法预测其RUL后,它会变成虚拟故障单元,并添加到其他单独算法的训练数据集中。从两个案例研究中获得的结果表明,与不使用悬浮数据的任何单个算法相比,COPROG可以提供更准确的RUL预测,并且COPROG可以有效地利用悬浮数据来提高预后准确性。

著录项

  • 来源
    《Mechanical systems and signal processing》 |2015年第10期|75-90|共16页
  • 作者单位

    Department of Mechanical Engineering, the University of Maryland at College Park, College Park, MD 20742, USA,Medtronic Energy and Component Center, Medtronic Inc., Minneapolis, MN 55430, USA;

    School of Mechanical and Aerospace Engineering, the Seoul National University, Seoul 151-742, Korea;

    School of Mechanical and Aerospace Engineering, the Seoul National University, Seoul 151-742, Korea;

    Department of Industrial and Manufacturing Engineering, the Wichita State University, Wichita, KS 67260, USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Co-training; Semi-supervised learning; Suspension data; Data-driven prognostics; RUL prediction;

    机译:联合培训;半监督学习;悬架数据;数据驱动的预测RUL预测;

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