Author:
Lei Yi,Liu Mingsheng,Xie Yunchi,Nie Xuefang
Abstract
Abstract
As a significant part, flow forecasting is crucial to road planning, traffic control, and planning. Aiming at the problem of insufficient dependence of traffic prediction methods, we proposes an Attention-based Gating mechanism Graph Convolution Network (AGGCN). Firstly, it constructures traffic flow data and adjacency matrix based on the graph data construction method. Secondly, it utilized the diffusion graph convolution method to model the traffic flow in the traffic road network. Finally, the attention mechanism to predict the traffic flow. The experiments were carried out on two highway datasets PeMS04 and PeMS08 in California, USA. Compared with the 7 commonly used algorithms in traffic flow prediction, the MAE, MAPE, and RMSE of the AGGCN model are better than other baseline experiments.
Subject
Computer Science Applications,History,Education
Reference10 articles.
1. City-wide traffic congestion prediction based on CNN, LSTM and transpose CNN;Ranjan;IEEE Access,2020
2. Lc-rnn: A deep learning model for traffic speed prediction;Lv,2018
3. Guest editorial: Urban computing;Zheng;IEEE Transactions on Big Data,2017