Accurate forecasting of traffic conditions is critical for improving safety, stability, and efficiency of a city transportation system. In reality, it is challenging to produce accurate traffic forecasts due to the complex and dynamic spatiotemporal correlations. Most existing works only consider partial characteristics and features of traffic data, and result in unsatisfactory performances on modeling and forecasting. In this paper, we propose a periodic spatial-temporal deep neural network (PSTN) with three pivotal modules to improve the forecasting performance of traffic conditions through a novel integration of three types of information. First, the historical traffic information is folded and fed into a module consisting of a graph convolutional network and a temporal convolutional network. Second, the recent traffic information together with the historical output passes through the second module consisting of a graph convolutional network and a gated recurrent unit framework. Finally, a multi-layer perceptron is applied to process the auxiliary road attributes and output the final predictions. Experimental results on two publicly accessible real-world urban traffic data sets show that the proposed PSTN outperforms the state-of-the-art benchmarks by significant margins for short-term traffic conditions forecasting
翻译:准确预测交通条件对于改善城市交通系统的安全、稳定和效率至关重要,在现实中,由于复杂和动态的时空关系,准确的交通预报具有挑战性;大多数现有工程只考虑交通数据的部分特点和特点,造成模型和预测的性能不尽人意;在本文件中,我们提议建立一个定期的时空深神经网络(PSTN),其中有三个关键模块,通过将三类信息进行新颖的整合,改进交通状况预报。第一,历史交通信息被叠叠并输入一个模块,由图表革命网络和时空革命网络组成。第二,最近的交通信息连同历史产出通过第二个模块,包括图表革命网络和一个封闭的经常性单元框架。最后,一个多层感应器用于处理辅助道路属性和输出最后预测。两个向公众开放的实时城市交通数据中的实验结果显示,拟议的PSTN在短期交通预测条件下,以显著的幅度,超越了最新基准。