Understanding City Traffic Dynamics Utilizing Sensor and Textual Observations

Authors

  • Pramod Anantharam Wright State University
  • Krishnaprasad Thirunarayan Wright State University
  • Surendra Marupudi Wright State University
  • Amit Sheth Wright State University
  • Tanvi Banerjee Wright State University

DOI:

https://doi.org/10.1609/aaai.v30i1.9902

Keywords:

Time Series Analysis, Linear Dynamical Systems, Anomaly Detection, Social Data, Sensor Data, Traffic Analytics

Abstract

Understanding speed and travel-time dynamics in response to various city related events is an important and challenging problem. Sensor data (numerical) containing average speed of vehicles passing through a road link can be interpreted in terms of traffic related incident reports from city authorities and social media data (textual), providing a complementary understanding of traffic dynamics. State-of-the-art research is focused on either analyzing sensor observations or citizen observations; we seek to exploit both in a synergistic manner. We demonstrate the role of domain knowledge in capturing the non-linearity of speed and travel-time dynamics by segmenting speed and travel-time observations into simpler components amenable to description using linear models such as Linear Dynamical System (LDS). Specifically, we propose Restricted Switching Linear Dynamical System (RSLDS) to model normal speed and travel time dynamics and thereby characterize anomalous dynamics. We utilize the city traffic events extracted from text to explain anomalous dynamics. We present a large scale evaluation of the proposed approach on a real-world traffic and twitter dataset collected over a year with promising results.

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Published

2016-03-05

How to Cite

Anantharam, P., Thirunarayan, K., Marupudi, S., Sheth, A., & Banerjee, T. (2016). Understanding City Traffic Dynamics Utilizing Sensor and Textual Observations. Proceedings of the AAAI Conference on Artificial Intelligence, 30(1). https://doi.org/10.1609/aaai.v30i1.9902

Issue

Section

Special Track: Computational Sustainability