In recent years, the importance of studying traffic flows and making predictions on alternative mobility (sharing services) has become increasingly important, as accurate and timely information on the travel flow is important for the successful implementation of systems that increase the quality of sharing services. This need has been accentuated by the current health crisis that requires alternative transport mobility such as electric bike and electric scooter sharing. Considering the new approaches in the world of deep learning and the difficulty due to the strong spatial and temporal dependence of this problem, we propose a framework, called STREED-Net, with multi-attention (Spatial and Temporal) able to better mining the high-level spatial and temporal features. We conduct experiments on three real datasets to predict the Inflow and Outflow of the different regions into which the city has been divided. The results indicate that the proposed STREED-Net model improves the state-of-the-art for this problem.
翻译:近年来,研究交通流量和预测替代流动(共享服务)的重要性越来越重要,因为准确和及时的旅行流动信息对于成功实施提高共享服务质量的系统非常重要,当前的健康危机更突出了这种需要,因为目前的健康危机需要替代交通流动,如电动自行车和电动摩托车共享。考虑到世界上的深层次学习新方法以及由于这一问题在空间和时间上高度依赖造成的困难,我们提议了一个称为STREED-Net的框架,使多关注(空间和时空)能够更好地挖掘高空间和时空特征。我们对三个真实数据集进行实验,以预测城市分裂的不同地区的流入和流出。结果显示,拟议的STREED-Net模型改善了这一问题的现状。