深度学习方法在不同时段交通流预测中的性能评价

Y. Duan, Yisheng Lv, Feiyue Wang
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引用次数: 29

摘要

交通流预测在智能交通系统的部署中具有十分重要的意义。基于我们之前对交通数据预测的深度学习方法的研究,我们进一步评估了SAE模型在白天和夜间交通流预测中的性能。通过250个实验任务对SAE模型进行训练,并以3个不同的准则对其白天和夜间的性能进行评估,我们分别在工作日和非工作日的不同时间获得了每个准则的超参数的最佳组合。实验结果表明,白天的MAE和RMSE大于夜间,而白天的MRE小于夜间。对于不同的准则,SAE模型的超参数也应相应变化。本文的研究结果表明,在实际应用中,使用深度学习方法进行交通流预测可以是多个SAE模型的组合,这些模型具有不同的参数,适用于不同的时期,这对未来的研究具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance evaluation of the deep learning approach for traffic flow prediction at different times
Traffic flow prediction is very important in the deployment of intelligent transportation system. Based on our previous research on deep learning approach for traffic data prediction, we further evaluates the performance of the SAE model for traffic flow prediction at daytime and nighttime. Through 250 experimental tasks training a SAE model and evaluating its performance at daytime and nighttime with 3 different criteria, we obtain the best combination of hyper parameters for each criterion at different times on weekday and non-weekday, respectively. Experimental results show that the MAE and RMSE at daytime are larger than that at nighttime, while the MRE at daytime are smaller than that at nighttime. For different criteria, the hyper parameters of the SAE model should vary accordingly. The results in this paper indicate that in real applications, traffic flow prediction using the deep learning approach can be a combination of multiple SAE models with different parameters suitable for different periods, which is of significance in future research.
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