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A hybrid model to improve the train running time prediction ability during high-speed railway disruptions

机译:一种混合模型,以改善高速铁路中断期间的火车运行时间预测能力

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摘要

This study aims to propose a hybrid model that comprises support vector regression (SVR) and a Kalman filter (KF) to improve the train running time prediction accuracy of machine learning models during railway disruptions. The SVR was trained using offline data, whereas the KF updated the SVR prediction using real-time information. Thus, the hybrid model mitigates the time-consuming online training of machine learning models and their inability to reflect real-time information when using offline training. To obtain a high-performance prediction model, four key SVR parameters were first optimized based on cross-validation. Then, SVR predictions were evaluated using the mean absolute and percentage errors of the test datasets by considering the trains that suffered disruptions. The results from this evaluation show that the SVR notably outperformed other benchmark models but was unable to provide satisfactory predictions under unexpected situations. Next, we applied the KF to update the SVR prediction using real-time information and conducted model performance evaluation of the predictions based on the hybrid model. The corresponding results show that the KF significantly improved the SVR prediction accuracy under unexpected disruption situations. Furthermore, using offline training, along with the KF instead of online training, substantially reduced the computational time.
机译:本研究旨在提出一种混合模型,包括支持向量回归(SVR)和卡尔曼滤波器(KF),以改善铁路中断期间机器学习模型的列车运行时间预测精度。使用离线数据培训SVR,而KF使用实时信息更新了SVR预测。因此,混合模型减轻了机器学习模型的耗时的在线培训,并且在使用离线训练时无法反映实时信息。为了获得高性能预测模型,首先基于交叉验证优化四个密钥SVR参数。然后,通过考虑遭受中断的列车,使用测试数据集的平均绝对和百分比误差来评估SVR预测。该评估结果表明,SVR显着优于其他基准模型,但无法在意外情况下提供令人满意的预测。接下来,我们将KF应用于使用实时信息进行更新SVR预测,并基于混合模型对预测进行模型性能评估。相应的结果表明,KF在意外的中断情况下显着提高了SVR预测精度。此外,使用离线培训以及KF而不是在线培训,大大减少了计算时间。

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