论文标题
多交通模式的短期乘客流量预测:基于变压器和剩余网络的多任务学习方法
Short-term passenger flow prediction for multi-traffic modes: A Transformer and residual network based multi-task learning method
论文作者
论文摘要
随着移动性作为服务(MAA)的普遍,同时且合作地管理多人流模式变得越来越重要。作为MAA的重要组成部分,因此,多交易模式的短期乘客流量预测已成为焦点。这是一个具有挑战性的问题,因为多交易模式的时空特征非常复杂。此外,多流量模式的乘客流量会显着区分和波动。为了解决这些问题,本文提出了一个基于多任务学习的模型,称为RES-Transformer,以用于多交通模式(地铁,出租车和总线)的短期流入预测。每个流量模式都被视为模型中的一个任务。重新转化器由两个部分组成:(1)几个修改后的变压器层组成了Conv-Transformer层和多头注意机制,这有助于提取多交通模式的空间和时间特征,(2)残留网络的结构可用于获得不同流量模式和渐变的渐进式启动和渐变的eSplitient anderient anderient andertient和Overfortf。在来自中国北京的两个大规模现实数据集上评估了RES-Transformer模型。一个是交通中心的区域,另一个是住宅区的区域。进行实验以比较提出的模型的性能与多个基线模型。结果证明了所提出的方法的有效性和鲁棒性。本文可以对多流量模式的短期流入预测提供重要的见解。
With the prevailing of mobility as a service (MaaS), it becomes increasingly important to manage multi-traffic modes simultaneously and cooperatively. As an important component of MaaS, short-term passenger flow prediction for multi-traffic modes has thus been brought into focus. It is a challenging problem because the spatiotemporal features of multi-traffic modes are critically complex. Moreover, the passenger flows of multi-traffic modes differentiate and fluctuate significantly. To solve these problems, this paper proposes a multitask learning-based model, called Res-Transformer, for short-term inflow prediction of multi-traffic modes (subway, taxi, and bus). Each traffic mode is treated as a single task in the model. The Res-Transformer consists of two parts: (1) several modified Transformer layers comprising the conv-Transformer layer and the multi-head attention mechanism, which helps to extract the spatial and temporal features of multi-traffic modes, (2) the structure of residual network is utilized to obtain the correlations of different traffic modes and prevent gradient vanishing, gradient explosion, and overfitting. The Res-Transformer model is evaluated on two large-scale real-world datasets from Beijing, China. One is the region of a traffic hub and the other is the region of a residential area. Experiments are conducted to compare the performance of the proposed model with several baseline models. Results prove the effectiveness and robustness of the proposed method. This paper can give critical insights into the short-term inflow prediction for multi-traffic modes.