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Evaluating Unsupervised Anomaly Detection Models to Detect Faults in Heavy Haul Railway Operations

机译:评估重载铁路运营中的无监督异常检测模型以检测故障

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Tuning a fault detector to balance false positive and false negative rates is fundamental to optimize maintenance operations. Unbalanced detectors can either lead to a high demand rate on the maintenance team (biased to false positives) or let failures happen with no preventive action (biased to false negatives), causing stoppages and accidents. In the context of railway operations, the use of sensors and their maintenance history generates rich data sources that can be explored to detect, identify, predict and treat faults before a possible incident. Machine Learning has been applied to this fault management context, in which supervised and semi-supervised models are extensively used to discriminate faulty observations. Supervised and semi-supervised models are effective for wellknown cases, but they are limited in novel cases, since faults can happen in unpredictable ways. Thus, unsupervised models are an alternative approach to deal with this limitation. This paper aims to evaluate the metrics and effectiveness of two unsupervised anomaly detection models – Isolation Forest and Autoencoders – to detect faults on rail cars. These models were applied to real measurements obtained from thermal, acoustic and impact sensors installed in a heavy haul railway line in Brazil. The results were compared to maintenance rules that guide general decisions for field inspections from railway operators. As main outcomes, Autoencoders produced balanced results in different scenarios, showing that these models can autonomously detect faults with great robustness. Therefore, they can compose predictive methods, improving the efficiency of maintenance tasks and railway operations.
机译:调整故障检测器以平衡误报率和误报率是优化维护操作的基础。不平衡的探测器可能导致维护团队的高需求率(倾向于误报),或者在没有预防措施的情况下导致故障发生(倾向于误报),从而导致停工和事故。在铁路运营中,传感器及其维护历史记录的使用会生成丰富的数据源,可对这些数据源进行探索,以在可能的事件发生之前检测,识别,预测和处理故障。机器学习已应用于此故障管理环境,在该环境中,广泛使用监督和半监督模型来区分错误的观察结果。监督模型和半监督模型对众所周知的情况有效,但在新情况下它们受到限制,因为故障可能以不可预测的方式发生。因此,无监督模型是解决此限制的另一种方法。本文旨在评估两个无监督的异常检测模型(隔离林和自动编码器)的度量标准和有效性,以检测轨道车辆的故障。这些模型被应用于从安装在巴西重载铁路线上的热,声和冲击传感器获得的真实测量结果。将结果与维护规则进行比较,维护规则指导铁路运营商进行现场检查的一般决策。作为主要结果,自动编码器在不同情况下产生了平衡的结果,表明这些模型可以以强大的鲁棒性自动检测故障。因此,他们可以组合预测方法,从而提高维护任务和铁路运营的效率。

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