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Towards Safety-Risk Prediction of CBTC Systems With Deep Learning and Formal Methods

机译:以深入学习和正式方法的CBTC系统安全风险预测

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Communication-Based Train Control System (CBTC) system is an automated system for train control based on bidirectional train-ground communication. Safety-risk estimation is a vital approach that strives to guide the CBTC system to guarantee the safe operation of vehicles. We propose a deep learning method to predict safety-risk states that combined with formal methods. First, the impact factors are selected, and the movement authorization (MA) failure rate is calculated by statistical model checking. Then, we use a deep neural network to model the relationship between the safe-risk states and the train operation status. Experimental results show that our method can achieve an accuracy of 97.4 & x0025; on safety-risk prediction, and exceeds the baseline methods.
机译:基于通信的火车控制系统(CBTC)系统是一种基于双向列车地面通信的列车控制自动化系统。安全风险估算是一种重要的方法,努力引导CBTC系统以保证车辆的安全运行。我们提出了一种深入的学习方法,以预测与正式方法相结合的安全风险状态。首先,选择冲击因子,通过统计模型检查计算运动授权(MA)故障率。然后,我们使用深神经网络来模拟安全风险状态和列车运行状态之间的关系。实验结果表明,我们的方法可以达到97.4&X0025的准确性;关于安全风险预测,超过基线方法。

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