Stochastic modeling of driver behavior by Langevin equations

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作者
Michael Langner
Joachim Peinke
机构
[1] OFFIS,Institute of Physics
[2] Carl-von-Ossietzky University,undefined
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Statistical and Nonlinear Physics;
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摘要
A procedure based on stochastic Langevin equations is presented and shows how a stochastic model of driver behavior can be estimated directly from given data. The Langevin analysis allows the separation of a given data-set into a stochastic diffusion- and a deterministic drift field. Form the drift field a potential can be derived. In particular the method is here applied on driving data from a simulator. We overcome typical problems like varying sampling rates, low noise levels, low data amounts, inefficient coordinate systems, and non-stationary situations. From the estimation of the drift- and diffusion vector-fields derived from the data, we show different ways how to set up Monte-Carlo simulations for the driver behavior.
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