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Repeated anticipatory network traffic control using iterative optimization accounting for model bias correction
Institution:1. Leuven Mobility Research Center, CIB, KU Leuven, Belgium;2. Faculty of Science, Technology and Communication, University of Luxembourg, Luxembourg;1. National Key Laboratory for Novel Software Technology, Department of Computer Science and Technology, Nanjing University, Nanjing, PR China;2. 6211 Sudikoff Lab, Dartmouth College Hanover, NH 03755, United States;1. RIKEN, Advanced Institute for Computational Science, Kobe, Japan;2. Kobe University, Kobe, Japan;3. Fujitsu Systems East Co.Ltd., Nagano, Japan;4. University of Tokyo, Institute of Industrial Science, Tokyo, Japan;1. Department of Thoracic and Cardiovascular Surgery, Konkuk University School of Medicine, Seoul 143-729, Republic of Korea;2. School of Computer Science and Engineering, Seoul National University, Seoul 151-742, Republic of Korea;3. Translational Bioinformatics Lab (TBL), Samsung Genome Institute (SGI), Samsung Medical Center, Seoul 135-710, Republic of Korea;4. Department of Pharmacology, Inje University College of Medicine, Busan 614-735, Republic of Korea;1. Center for Artificial Intelligence and Robotics, Defence Research and Development Organisation, CV Raman Nagar, Bengaluru 560093, India;2. Faculty of Informatics, Masaryk Univerzity, Czechia
Abstract:Anticipatory signal control in traffic networks adapts the signal timings with the aim of controlling the resulting (equilibrium) flows and route choice patterns in the network. This study investigates a method to support control decisions for successful applications in real traffic systems that operate repeatedly, for instance from day to day, month to month, etc. The route choice response to signal control is usually predicted through models; however this leads to suboptimality because of unavoidable prediction errors between model and reality. This paper proposes an iterative optimizing control method to drive the traffic network towards the real optimal performance by observing modeling errors and correcting for them. Theoretical analysis of this Iterative Optimizing Control with Model Bias Correction (IOCMBC) on matching properties between the modeled optimal solution and the real optimum is presented, and the advantages over conventional iterative schemes are demonstrated. A local convergence analysis is also elaborated to investigate conditions required for a convergent scheme. The main innovation is the calculation of the sensitivity (Jacobian) information of the real route choice behavior with respect to signal control variables. To avoid performing additional perturbations, we introduce a measurement-based implementation method for estimating the operational Jacobian that is associated with the reality. Numerical tests confirm the effectiveness of the proposed IOCMBC method in tackling modeling errors, as well as the influence of the optimization step size on the reality-tracking convergence.
Keywords:Anticipatory traffic control  Modeling error  Iterative optimization  Model bias correction
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