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Title: DeepSTD: Mining Spatio-Temporal Disturbances of Multiple Context Factors for Citywide Traffic Flow Prediction
Authors: Zheng, Chuanpan
Participants: Fan, Xiaoliang
Wen, Chenglu
Chen, Longbiao
Wang, Cheng
Li, Jonathan
Issue Date: 2020
Publisher: IEEE Xplore
Series/Report no.: IEEE Transactions on Intelligent Transportation Systems ( Volume: 21, Issue: 9, Sept. 2020)
Abstract: Deep learning techniques have been widely applied to traffic flow prediction, considering underlying routine patterns, and multiple context factors (e.g., time and weather). However, the complex spatio-temporal dependencies between inherent traffic patterns and multiple disturbances have not been fully addressed. In this paper, we propose a two-phase end-to-end deep learning framework, namely DeepSTD to uncover the spatio-temporal disturbances (STD) to predict the citywide traffic flow. In the STD Modeling phase, we propose an STD modeling method to model both the different regional disturbances caused by various region functions and the spatio-temporal propagating effects. In the Prediction phase, we eliminate the STD from the historical traffic flow to enhance the leaning of inherent traffic patterns and combine the STD at the prediction time interval to consider the future disturbances. The experimental results on two real-world datasets demonstrate that DeepSTD outperforms the state-of-the-art methods
URI: http://tailieuso.tlu.edu.vn/handle/DHTL/10637
Source: https://doi.org/10.1109/TITS.2019.2932785
Appears in Collections:Tài liệu hỗ trợ nghiên cứu khoa học
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