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Railway Incident Ranking with Machine Learning

机译:机器学习对铁路事故的排名

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摘要

Modern railway networks include thousands of failure registration devices, and prompt response to detected failures is critical to normal network operation. However, a large share of produced alerts may be formed by false alarms associated with maintenance or faulty diagnostics, thus hindering the processing of actual failures. It is therefore very desirable to perform fast automated intelligent ranking of incidents before they are analyzed by human operators. In this paper we describe a machine-learning-based incident ranking model that we have developed and deployed at the Moscow Railway network (a large network with 500+ stations). The model estimates the probability of failure using multiple features of the incident at hand. The model was constructed using the XGBoost library and a database of 5 million historical incidents. The model shows high accuracy (AUC 0.901) in the deployment environment.
机译:现代铁路网络包括成千上万的故障记录设备,对检测到的故障做出迅速响应对于正常的网络运行至关重要。但是,与维护相关联的虚假警报或诊断错误会形成大量的警报,从而阻碍了实际故障的处理。因此,非常需要在人员进行分析之前对事件进行快速自动的智能排名。在本文中,我们描述了一种基于机器学习的事件排名模型,该模型已经在莫斯科铁路网络(一个拥有500多个站点的大型网络)中开发和部署。该模型使用当前事件的多个特征来估计失败的可能性。该模型是使用XGBoost库和500万个历史事件的数据库构建的。该模型在部署环境中显示出很高的准确性(AUC 0.901)。

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