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Map-Reduce Decentralized PCA for Big Data Monitoring and Diagnosis of Faults in High-Speed Train Bearings ?

机译:Map-Reduce分散式PCA,用于大数据监视和高速火车轴承故障的诊断

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Real-time fault detection and diagnosis of high speed trains is essential for the operation safety. Traditional methods mainly employ rule-based alarms to detect faults when the measured single variable deviates too far from the expected range, with multivariate data correlations ignored. In this paper, a Map-Reduce decentralized PCA algorithm and its dynamic extension are proposed to deal with the large amount of data collected from high speed trains. In addition, the Map-Reduce algorithm is implemented in a Hadoop-based big data platform. The experimental results using real high-speed train operation data demonstrate the advantages and effectiveness of the proposed methods for five faulty cases.
机译:高速列车的实时故障检测和诊断对于运行安全至关重要。传统方法主要采用基于规则的警报来检测故障,即当所测的单个变量偏离预期范围太远时,将忽略多变量数据相关性。本文提出了一种Map-Reduce分散式PCA算法及其动态扩展,以处理从高速列车中收集到的大量数据。此外,Map-Reduce算法在基于Hadoop的大数据平台中实现。使用实际高速列车运行数据的实验结果证明了该方法在五个故障情况下的优势和有效性。

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