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arxiv: 1209.5802 · v1 · pith:5N3Q6KXLnew · submitted 2012-09-26 · 🧮 math.PR · nlin.CG

On Cellular Automata Models of Traffic Flow with Look-Ahead Potential

classification 🧮 math.PR nlin.CG
keywords modellook-aheadpotentialautomatacellularcoarse-graineddemonstrateflow
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We study the statistical properties of a cellular automata model of traffic flow with the look-ahead potential. The model defines stochastic rules for the movement of cars on a lattice. We analyze the underlying statistical assumptions needed for the derivation of the coarse-grained model and demonstrate that it is possible to relax some of them to obtain an improved coarse-grained ODE model. We also demonstrate that spatial correlations play a crucial role in the presence of the look-ahead potential and propose a simple empirical correction to account for the spatial dependence between neighboring cells.

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