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Mathematical characterization of spatiotemporal congested traffic patterns: mixed speed data analysis in the greater Toronto and Hamilton area,Canada
Authors:Natalia Kyriakopoulou  Pavlos Kanaroglou
Affiliation:1. School of Rural and Surveying Engineering, National Technical University of Athens, 9 Iroon Polytechniou, Zographou Campus, 157 80 Athens, Greece;2. Center for Spatial Analysis (CSpA), School of Geography and Earth Sciences, McMaster University, Hamilton, Ontario, Canada, L8S-4K1
Abstract:This paper formulates a comprehensive methodology for analyzing, quantifying and identifying congestion characteristics based on speed distribution. Utilizing vehicle speed data, a mathematical approach is applied, in order to characterize roadway segments, in terms of travel reliability, congestion severity and duration. We argue that the Gaussian mixture model (GMM) and its parameter combination is the appropriate tool if we are to obtain quantitative congestion measures and rank roadway performance. A significant contribution of our approach is that it is based on assumptions regarding mixed components as well as speed distribution and can be applied to large databases. We test our framework on the greater Toronto and Hamilton area in Ontario, Canada, and conclude that congestion quantification through the application of the GMM can be successfully accomplished. Results indicate that speed patterns differ significantly between counties as well as days of the week.
Keywords:Traffic congestion  Gaussian mixture model  expectation-maximization algorithm  bimodal distribution
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