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Root Cause Analysis of Traffic Anomalies Using Uneven Diffusion Model

journal contribution
posted on 2024-11-02, 10:50 authored by Guangli Huang, Ke DengKe Deng, Yongli RenYongli Ren, Jianxin Li
Detection and analysis of traffic anomalies are important for the development of intelligent transportation systems. In particular, the root causes of traffic anomalies in road networks as well as their propagation and influence to the surrounding areas are highly meaningful. The root cause analysis of traffic anomalies aims to identify those road segments, where the traffic anomalies are detected by the traffic statuses significantly deviating from the usual condition and are originated due to incidents occurring in those roads such as traffic accidents or social events. The existing methods for traffic anomaly root cause analysis detect all traffic anomalies first and then apply, implicitly or explicitly, specified causal propagation rules to infer the root cause. However, these methods require reliable detection techniques to accurately identify all traffic anomalies and extensive domain knowledge of city traffic to specify plausible causal propagation rules in road networks. In contrast, this paper proposes an innovative and integrated root cause analysis method. The proposed method is featured by 1) defining a visible outlier index as the probabilistic indicator of traffic anomalies/disturbances and 2) automatically learning spatiotemporal causal relationship from historical data to build an uneven diffusion model for root cause analysis. The accuracy and effectiveness of the proposed method have been demonstrated by experiments conducted on a trajectory dataset with 2.5 billion location records of 27 266 taxies in Shenzhen city.

Funding

Effective and Efficient Query Processing over Dynamic Social Networks

Australian Research Council

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History

Journal

IEEE Access

Volume

7

Number

8620189

Start page

16206

End page

16216

Total pages

11

Publisher

IEEE

Place published

United States

Language

English

Copyright

© 2019 IEEE

Former Identifier

2006092091

Esploro creation date

2020-06-22

Fedora creation date

2019-07-18

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