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首页> 外文期刊>Journal of Intelligent Manufacturing >Prognostics of multiple failure modes in rotating machinery using a pattern-based classifier and cumulative incidence functions
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Prognostics of multiple failure modes in rotating machinery using a pattern-based classifier and cumulative incidence functions

机译:使用基于模式的分类器和累积型入射功能旋转机械多种故障模式的预测

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摘要

This paper presents a novel methodology for multiple failure modes prognostics in rotating machinery. The methodology merges a machine learning and pattern recognition approach, called logical analysis of data (LAD), with non-parametric cumulative incidence functions (CIFs). It considers the condition monitoring data collected from a system that experiences several competing failure modes over its life span. LAD is used as a non-statistical classification technique to detect the actual state of the system, based on the condition monitoring data. The CIF provides an estimate for the marginal probability of each failure mode in the presence of the other competing failure modes. Accordingly, the assumption of independence between the failure modes, which is essential in many prognostic methods, is irrelevant in this paper. The proposed methodology is validated using vibration data collected from bearing test rigs. The obtained results are compared to those of two common machine learning prediction techniques: the artificial neural network and support vector regression. The comparison shows that the proposed methodology has a stable performance and can predict the remaining useful life of an individual system accurately, in the presence of multiple failure modes.
机译:本文提出了一种新的旋转机械预测预后的新方法。该方法合并了机器学习和模式识别方法,称为数据(LAD)的逻辑分析,具有非参数累积函数(CIFS)。它考虑了从一个系统中收集的状态监测数据,这些数据在其寿命中经历了几种竞争失败模式。 LAD用作非统计分类技术,以检测系统的实际状态,基于状态监测数据。 CIF在存在其他竞争失败模式的情况下提供每个故障模式的边际概率的估计。因此,本文在许多预后方法之间是必不可少的故障模式之间的独立性的假设是无关的。使用从轴承试验台收集的振动数据进行验证所提出的方法。将得到的结果与两个公共机器学习预测技术的结果进行比较:人工神经网络和支持向量回归。比较表明,所提出的方法具有稳定的性能,并且可以在多种故障模式存在下准确地预测单个系统的剩余使用寿命。

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