Night-time and daytime operating speed distribution in urban arterials

Marco Bassani1, Lorenzo Catani1, Cinzia Cirillo2, Guglielmina Mutani3
1Politecnico di Torino – Department of Environment, Land and Infrastructures Engineering, 24, corso Duca degli Abruzzi, Torino, I-10129, Italy
2University of Maryland – Department of Civil and Environmental Engineering, 3250, Kim Building, 20742 College Park, MD, United States
3Politecnico di Torino – Department of Energy, 24, corso Duca degli Abruzzi, Torino, I-10129, Italy

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