预测土耳其安卡拉-埃斯基谢希尔高速铁路列车到达延误情况

Özgül Ardıç
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引用次数: 0

摘要

由于技术问题或天气原因,铁路运营可能会出现延误。准确预测此类延误可提高铁路运输服务质量和铁路运营效率。本研究基于土耳其安卡拉-埃斯基谢希尔高速列车线路的列车运行数据,利用随机森林回归法开发了到达延误预测模型。该模型可同时预测该线路上所有下游车站的到达延迟情况,并在获得新的列车运行信息后不断更新这些预测结果。在 1 分钟的预测误差下,模型的准确率从 76% 到 99% 不等。结果表明,将与天气条件和列车控制系统技术问题相关的变量纳入模型可提高预测性能。这些变量对模型性能的贡献随着预测范围的扩大而增加。模型结果表明,模型预测可以帮助网络管理人员做出更好的列车运行决策。为了从乘客的角度评估模型的性能,研究提出了两种方法:延迟预测的比例和预测的稳定性。研究结果表明,大多数列车(96.7% 至 99%)在目标车站的到站延误预测都比较稳定。延迟 2 分钟(或更长时间)的预测比例,即预测延误时间超过实际延误时间 2 分钟或更多,在 14%到 0.5%之间波动,具体取决于预测期限。虽然短时间内(提前一站)的比例相对较低,但在使用模型预测结果通知乘客时仍需谨慎,因为短时间内迟到 1 分钟以上的预测结果可能会产生负面影响(如误导乘客离开车站)。
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Forecasting train arrival delays on the Ankara – Eskişehir high-speed line in Turkey

Railway operations may experience delays due to technical issues or weather conditions. Accurate prediction of such delays can enhance the quality of rail transport services and the effectiveness of railway operations. The study has developed the arrival delay prediction model using random forest regression based on the train operation data from the Ankara - Eskişehir high-speed train line in Turkey. The model can simultaneously predict arrival delays at all downstream stations on this line and continuously update these predictions as new information about train movements becomes available. The accuracy rates of the model vary from 76% to 99% under a 1-min prediction error. The results show that incorporating variables related to weather conditions and technical problems related to train control systems into the model improves prediction performance. The contribution of these variables to the model performance increases as the prediction horizon widens. The model results suggest that the model predictions may assist network managers in making better decisions about train operations. In order to evaluate the model's performance from the passengers' point of view, the study has proposed two methods: the proportion of late predictions and the stability of forecasts. The findings indicate that most trains (between 96.7% and 99%) have stable arrival delay predictions at target stations. The proportion of 2-min (or greater) late predictions, which means that the predicted delay exceeds the actual delay by 2 min or more, fluctuates from 14% to 0.5%, depending on the prediction horizon. Although the ratio for the short horizons (one station ahead) becomes relatively low, it is necessary to be cautious when using the model predictions to inform passengers because a prediction of more than 1 min late for short horizons might have negative consequences (e.g., misleading passengers to leave stations).

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CiteScore
7.10
自引率
8.10%
发文量
41
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