Passenger request prediction is essential for operations planning, control, and management in ride-sharing platforms. While the demand prediction problem has been studied extensively, the Origin-Destination (OD) flow prediction of passengers has received less attention from the research community. This paper develops a Graph Neural Network framework along with the Attention Mechanism to predict the OD flow of passengers. The proposed framework exploits various linear and non-linear dependencies that arise among requests originating from different locations and captures the repetition pattern and the contextual data of that place. Moreover, the optimal size of the grid cell that covers the road network and preserves the complexity and accuracy of the model is determined. Extensive simulations are conducted to examine the characteristics of our proposed approach and its various components. The results show the superior performance of our proposed model compared to the existing baselines.
翻译:虽然对需求预测问题进行了广泛研究,但研究界对旅客的原产地-目的地(OD)流量预测没有给予足够的注意,本文件与关注机制一起开发了一个图表神经网络框架,以预测乘客的流量,拟议框架利用了不同地点提出的各种线性和非线性依赖性,并捕捉了来自不同地点的请求之间的重复模式和该地点的背景数据。此外,还确定了覆盖公路网络并保持模型复杂性和准确性的电网单元的最佳规模。进行了广泛的模拟,以审查我们拟议方法的特点及其各组成部分。结果显示,与现有基线相比,我们拟议模型的优异性。