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
The lecture outlines the most important mathematical facts about stochastic processes which are desc...
A stochastic algorithm based on the Langevin equation has been recently proposed to simulate rarefie...
One of the major challenges in the field of nonlin-ear time series analysis is the development of su...
Based on experimental data taken from a driving simulator, we present different ways of how a stocha...
Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way t...
Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way t...
Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way t...
Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way t...
A model has two main aims: predicting the behavior of a physical system and understanding its nature...
A model has two main aims: predicting the behavior of a physical system and understanding its nature...
Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way t...
We introduce a scheme for deriving an optimally-parametrised Langevin dynamics of few collective var...
A stochastic algorithm based on the Langevin equation has been recently proposed to simulate rarefie...
A stochastic algorithm based on the Langevin equation has been recently proposed to simulate rarefie...
The lecture outlines the most important mathematical facts about stochastic processes which are desc...
The lecture outlines the most important mathematical facts about stochastic processes which are desc...
A stochastic algorithm based on the Langevin equation has been recently proposed to simulate rarefie...
One of the major challenges in the field of nonlin-ear time series analysis is the development of su...
Based on experimental data taken from a driving simulator, we present different ways of how a stocha...
Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way t...
Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way t...
Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way t...
Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way t...
A model has two main aims: predicting the behavior of a physical system and understanding its nature...
A model has two main aims: predicting the behavior of a physical system and understanding its nature...
Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way t...
We introduce a scheme for deriving an optimally-parametrised Langevin dynamics of few collective var...
A stochastic algorithm based on the Langevin equation has been recently proposed to simulate rarefie...
A stochastic algorithm based on the Langevin equation has been recently proposed to simulate rarefie...
The lecture outlines the most important mathematical facts about stochastic processes which are desc...
The lecture outlines the most important mathematical facts about stochastic processes which are desc...
A stochastic algorithm based on the Langevin equation has been recently proposed to simulate rarefie...
One of the major challenges in the field of nonlin-ear time series analysis is the development of su...