Affiliation of Author(s):计算机科学与技术学院/人工智能学院/软件学院
Journal:IEEE Trans. Intell. Transp. Syst.
Abstract:Traffic congestion estimation in arterial networks with sparse GPS probe data is a practically important while substantially challenging research issue. The effectiveness and efficiency of the existing GPS probe data-based traffic estimation models are largely limited due to the following two challenges. First, due to the low sampling frequency of GPS probes, probe data are usually sparse, especially for some road links not located in the central urban areas. Second, due to the very complex temporal and spatial dependencies among the road links, the variable space of the existing traffic estimation models is huge. It is time consuming to get an accurate estimation of a large arterial road network with thousands of road links. To address the abovementioned issues, this paper proposes to extract traffic event signals from social media and incorporate them with GPS probe data to alleviate the data sparse issue. We first collect traffic-related posts that report various traffic events, including traffic jam, accident, and road construction from Twitter. By considering the GPS probe readings and the traffic event tweets as two types of observations, we next extend the conventional coupled hidden Markov model for integrating the two types of data to obtain a more accurate estimation of traffic conditions. To address the computational challenge, a parallel importance sampling-based electromagnetic algorithm is further introduced. We evaluate our model on the arterial network of downtown Chicago. The experimental results demonstrate the superior performance of the model in both effectiveness and efficiency. © 2000-2011 IEEE.
ISSN No.:1524-9050
Translation or Not:no
Date of Publication:2019-08-01
Co-author:Zhang, Xiaoming,Li, Fengxiang,Yu, Philip S.,Huang, Zhiqiu
Correspondence Author:王森章
Date of Publication:2019-08-01
王森章
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Education Level:北京航空航天大学
Alma Mater:北京航空航天大学
Paper Publications
Efficient Traffic Estimation with Multi-Sourced Data by Parallel Coupled Hidden Markov Model
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