Traffic Flow Estimation Models Using Cellular Phone Data

Traffic volume is a parameter used to quantify demand in transportation studies, and it is commonly collected by using on-road (fixed) sensors such as inductive loops, cameras, etc. The installation of fixed sensors to cover all roads is neither practical nor economically feasible; therefore, they are only installed on a subset of links. Cellular phone tracking has been an emerging topic developed and investigated during the last few years to extract traffic information. Cellular systems provide alternative methods to detect phones in motion without the cost and coverage limitations associated with those infrastructure-based solutions. Utilizing existing cellular systems to capture traffic volume has a major advantage compared with other solutions, since it avoids new and expensive hardware installations of sensors, with a large number of cellular phones acting as probes. This paper proposes a set of models for inferring the number of vehicles moving from one cell to another by means of anonymous call data of phones. The models contain, in their functional form, terms related to the users' calling behavior and other characteristics of the phenomenon such as hourly intensity in calls and vehicles. A set of intercell boundaries with different traffic background and characteristics were selected for the field test. The experiment results show that reasonable estimates are achieved by comparison with volume measurements collected by detectors located in the same study area. The motion of phones while being involved in calls can be used as an easily accessible, fast, and low-cost alternative to deriving volume data on intercell boundaries.

[1]  H. Akaike,et al.  Information Theory and an Extension of the Maximum Likelihood Principle , 1973 .

[2]  G. Schwarz Estimating the Dimension of a Model , 1978 .

[3]  Yilin Zhao,et al.  Mobile phone location determination and its impact on intelligent transportation systems , 2000, IEEE Trans. Intell. Transp. Syst..

[4]  Franco Davoli,et al.  Road traffic estimation from location tracking data in the mobile cellular network , 2000, 2000 IEEE Wireless Communications and Networking Conference. Conference Record (Cat. No.00TH8540).

[5]  J.-L. Ygnace,et al.  Cellular telecommunication and transportation convergence: a case study of a research conducted in California and in France on cellular positioning techniques and transportation issues , 2001, ITSC 2001. 2001 IEEE Intelligent Transportation Systems. Proceedings (Cat. No.01TH8585).

[6]  Michel Daoud Yacoub Wireless Technology: Protocols, Standards, and Techniques , 2001 .

[7]  John D. Lee,et al.  Real-Time Detection of Driver Cognitive Distraction Using Support Vector Machines , 2007, IEEE Transactions on Intelligent Transportation Systems.

[8]  Karsten Lemmer,et al.  CELLULAR DATA FOR TRAFFIC MANAGEMENT - FIRST RESULTS OF A FIELD TEST , 2007 .

[9]  Deborah Estrin,et al.  Determining transportation mode on mobile phones , 2008, 2008 12th IEEE International Symposium on Wearable Computers.

[10]  S. Bekhor,et al.  Identifying Spatial and Temporal Congestion Characteristics Using Passive Mobile Phone Data , 2008 .

[11]  Francisco G. Benitez,et al.  Review of traffic data estimations extracted from cellular networks , 2008 .

[12]  Thomas Otterstaetter,et al.  Mobile Phone Data for Telematic Applications , 2008 .

[13]  Keemin Sohn,et al.  Space-Based Passing Time Estimation on a Freeway Using Cell Phones as Traffic Probes , 2008, IEEE Transactions on Intelligent Transportation Systems.

[14]  Albert-László Barabási,et al.  Understanding individual human mobility patterns , 2008, Nature.

[15]  Daehyun Kim,et al.  Dynamic Origin–Destination Flow Estimation Using Cellular Communication System , 2008, IEEE Transactions on Vehicular Technology.

[16]  Carlo Ratti,et al.  The Geography of Taste: Analyzing Cell-Phone Mobility and Social Events , 2010, Pervasive.

[17]  Carlo Ratti,et al.  Transportation mode inference from anonymized and aggregated mobile phone call detail records , 2010, 13th International IEEE Conference on Intelligent Transportation Systems.

[18]  Carlo Ratti,et al.  Real-Time Urban Monitoring Using Cell Phones: A Case Study in Rome , 2011, IEEE Transactions on Intelligent Transportation Systems.

[19]  Luis M. Romero,et al.  Inferring origin–destination trip matrices from aggregate volumes on groups of links: a case study using volumes inferred from mobile phone data , 2013 .