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An Unsupervised Fault-Detection Method for Railway Turnouts

机译:一种无监督的火车投票故障检测方法

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Railway turnouts require high-performance condition monitoring to prevent disastrous railway accidents. In industrial practice, turnouts' monitoring is usually done by railway workers who visually inspect the operating current curves. This results in huge labor costs and prone to human mistakes. Thus, automating the process of turnouts' monitoring via fault-detection algorithms is imperative. The available turnout field data bring three difficulties to fault detection: 1) large amounts of data do not have any labels; 2) data collected in normal condition have multiple unknown modes; and 3) there are only a small number of samples in some modes. To address these difficulties, this article develops a novel unsupervised fault-detection method by using deep autoencoders, which is composed of an unknown modes' mining stage and a multimode fault-detection stage. First, unknown modes are identified through clustering and employing engineer expertise. Then, an ensemble monitoring model, consisting of local monitoring models developed with individual fault-free modes and a global monitoring model developed by merging the data in all fault-free modes, is proposed to improve the overall fault-detection performance. In addition, to construct local models for the modes with a small number of samples, a one-class transfer learning algorithm is presented. In online monitoring, the decision of a newly arrived sample exploits both local models and the global model. Using both the simulated turnout data and the field data collected from a high-speed railway in China, the efficacy and robustness of the proposed approach are demonstrated by comparisons with other methods.
机译:铁路投票站需要高性能的情况监控,以防止灾难性的铁路事故。在工业实践中,投票率的监测通常由在目前检查操作电流曲线的铁路工人进行的。这导致巨大的劳动力成本和易于人类错误。因此,通过故障检测算法自动化投票过程的过程是必要的。可用的截止场所数据带来了三个故障检测困难:1)大量数据没有任何标签; 2)正常情况收集的数据具有多种未知模式; 3)某些模式中只有少量样品。为了解决这些困难,本文通过使用深度自动码器开发了一种新颖的无监督故障检测方法,该方法由未知模式的挖掘阶段和多模故障检测阶段组成。首先,通过聚类和使用工程师专业知识来确定未知模式。然后,建议组成的集合监测模型,由具有单独无故障模式开发的本地监测模型以及通过利用所有无故障模式中的数据开发的全球监测模型,以提高整体故障检测性能。此外,为构造具有少量样本的模式的本地模型,提出了一种单级传输学习算法。在线监控中,新到达样本的决定利用本地模型和全局模型。使用模拟的润路票数据和来自中国的高速铁路收集的现场数据,通过与其他方法的比较来证明所提出的方法的功效和稳健性。

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