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Real-time freeway traffic state estimation based on extended Kalman filter: Adaptive capabilities and real data testing
Authors:Yibing Wang   Markos Papageorgiou  Albert Messmer  
Affiliation:aInstitute of Transport Studies, Department of Civil Engineering, Monash University, Victoria 3800, Australia;bDynamic Systems and Simulation Laboratory, Technical University of Crete, 73100 Chania, Greece;cGroebenseeweg 2, D-82402, Seeshaupt, Germany
Abstract:This paper reports on real data testing of a real-time freeway traffic state estimator, with a particular focus on its adaptive capabilities. The pursued general approach to the real-time adaptive estimation of complete traffic state in freeway stretches or networks is based on stochastic macroscopic traffic flow modeling and extended Kalman filtering. One major innovative feature of the traffic state estimator is the online joint estimation of important model parameters (free speed, critical density, and capacity) and traffic flow variables (flows, mean speeds, and densities), which leads to three significant advantages of the estimator: (1) avoidance of prior model calibration; (2) automatic adaptation to changing external conditions (e.g. weather and lighting conditions, traffic composition, control measures); (3) enabling of incident alarms. These three advantages are demonstrated via suitable real data testing. The achieved testing results are satisfactory and promising for subsequent applications.
Keywords:Stochastic macroscopic traffic flow model   Extended Kalman filter   Freeway traffic state estimation   Online model parameter estimation   Adaptive capabilities   Changing external conditions   Traffic incidents   Incident alarm
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