Metro Traffic Flow Prediction via Knowledge Graph and Spatiotemporal Graph Neural Network

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Abstract

Existing traffic flow prediction methods generally only consider the spatiotemporal characteristics of traffic flow. However, in addition to the spatiotemporal characteristics, the interference of various external factors needs to be considered in traffic flow prediction, including severe weather, major events, traffic control, and metro failures. The current research still cannot fully use the information contained in these external factors. To address this issue, we propose a novel metro traffic flow prediction method (KGR-STGNN) based on knowledge graph representation learning. We construct a knowledge graph that stores factors related to metro traffic networks. Through the knowledge graph representation learning technology, we can learn the influence representation of external factors from the traffic knowledge graph, which can better incorporate the influence of external factors into the prediction model based on the spatiotemporal graph neural network. Experimental results demonstrate the effectiveness of our proposed model.

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Wang, S., Lv, Y., Peng, Y., Piao, X., & Zhang, Y. (2022). Metro Traffic Flow Prediction via Knowledge Graph and Spatiotemporal Graph Neural Network. Journal of Advanced Transportation, 2022. https://doi.org/10.1155/2022/2348375

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