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Chapter 26 Anomaly Detection and Forecasting Methods Applied to Point Machine Monitoring Data for Prevention of Railway Switch Failures

机译:第26章自然检测和预测方法应用于Point机器监测数据,用于预防铁路交换机故障

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Railway switches are a crucial asset since they enable trains to change tracks without stopping. Switch failures can compromise a larger part of the railway infrastructure, which can have a negative impact on reputation and revenues. Switches are a costly asset due to frequent inspections, maintenance and renewal of components. Therefore knowing current and future asset condition can be helpful in optimizing switch maintenance to prevent complete failure. The goal of the research presented here is to exploit switch condition monitoring and weather data to identify switch failures on an early stage. Approaches for detection of anomalous switch behavior and prediction of failures are developed. To validate the anomaly detection results obtained by applying the Isolation Forest algorithm, two different annotated data sets are considered. It is found that the anomaly detection approach performs well when applied to a switch, which is characterized by narrow feature distributions within temperature bins. Moreover first results from an Autoregressive Integrated Moving Average model for failure evolution prediction are presented.
机译:铁路交换机是一个关键资产,因为它们使火车能够在不停止的情况下更改轨道。切换故障可能会损害铁路基础设施的大部分,这可能对声誉和收入产生负面影响。由于频繁检查,维护和更新,开关是一种昂贵的资产。因此,了解当前和未来的资产条件可以有助于优化开关维护以防止完全失败。这里提出的研究的目标是利用切换条件监控和天气数据来识别早期阶段的交换机故障。开发了检测异常开关行为的方法和故障预测。为了验证通过应用隔离林算法获得的异常检测结果,考虑了两个不同的注释数据集。发现当施加到开关时,异常检测方法执行良好,其特征在于温度箱内的窄特征分布。此外,提出了一种来自自回归的综合移动平均模型的失败进化预测的结果。

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