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Analysis on Train Stopping Accuracy based on Regression Algorithms

机译:基于回归算法的列车停车精度分析

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Stopping accuracy is one of the most important indexes of efficiency of automatic train operation (ATO) systems. Traditional stopping control algorithms in ATO systems have some drawbacks, as many factors have not been taken into account. In the large amount of field-collected data about stopping accuracy there are many factors (e.g. system delays, stopping time, net pressure) which affecting stopping accuracy. In this paper, three popular data mining methods are proposed to analyze the train stopping accuracy. Firstly, we find fifteen factors which have impact on the stopping accuracy. Then, ridge regression, lasso regression and elastic net regression are employed to mine models to reflecting the relationship between the fifteen factors and the stopping accuracy. Then, the three models are compared by using Akaike information criterion (AIC), a model selection criterion which considering the trade-off between accuracy and complexity. The computational results show that elastic net regression model has a best performance on AIC value. Finally, we obtain the parameters which can make the train stop more accurately which can provide a reference to improve stopping accuracy for ATO systems.
机译:停车精度是自动火车运行(ATO)系统效率的最重要指标之一。由于尚未考虑许多因素,ATO系统中的传统停止控制算法存在一些缺陷。在大量现场收集的有关停止精度的数据中,有许多因素会影响停止精度(例如系统延迟,停止时间,净压力)。本文提出了三种流行的数据挖掘方法来分析列车的停车精度。首先,我们发现影响制动精度的十五个因素。然后,采用岭回归,套索回归和弹性网回归对模型进行挖掘,以反映出这十五个因素与止动精度之间的关系。然后,使用Akaike信息标准(AIC)对这三个模型进行比较,该模型选择标准考虑了准确性和复杂性之间的权衡。计算结果表明,弹性净回归模型在AIC值上具有最佳性能。最后,我们获得了可以使列车更准确地停车的参数,可以为提高ATO系统的停车精度提供参考。

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