Traffic Flow Turbulence Characteristics Research Based on the Cellular Automaton Model

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Abstract:

Turbulence coefficient r is introduced to simulate traffic disorder traffic flow characteristics. By analyzing the disturbance vehicles in the driving environment of different disordered state, the values of model simulation under different conditions analysis, using the traffic flow turbulence coefficient r disorder defined traffic flow characteristics, offers new reference for the study of the traffic flow theory. The accident rate and traffic flow turbulence characteristics are simulated and analyzed, which provides the theoretical gist for the simulation study of traffic flow.

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3022-3025

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January 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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