This paper introduces a method for automatically training a general-purpose driver model, applied to the case of a truck-trailer combination. A genetic algorithm is used to optimize a structure of rules and actions, and their parameters, to achieve the desired driving behavior. The training is carried out in a simulated environment, using a two-stage process. The method is then applied to a highway driving case, where it is shown that it generates a model that matches or surpasses the performance of a commonly used reference model. Furthermore, the generality of the model is demonstrated by applying it to an overtaking situation on a rural road with oncoming traffic
High-fidelity driving simulators immerse a driver in a highly realistic virtual environment for the ...
Modeling driver behavior is a key aspect of traffic simulations. Accurate driver models can be used ...
This paper presents a back-to-back performance comparison of lane-change maneuvers using two automat...
This paper introduces a method for automatically training a general-purpose driver model, applied to...
Simulation is often used to gain an understanding of vehicle directional response. Furthermore, it i...
This paper discusses a driving simulation framework, which focuses on the decision-making role perfo...
Genetic Algorithms (GAs) are stochastic search and optimization methods inspired by the mechanisms o...
The goal of this thesis has been to study the behaviour of the closed loop driver-vehicle-environmen...
This paper proposes a framework for automated highway driving of an A-double long vehicle combinatio...
Lane-changing is an important operation of an autonomous vehicle driving on the road. Safety and com...
Traffic flow describes the flow of traffic formed by multiple vehicles moving continuously on a road...
As advanced driver-assistance systems (ADAS) such as smart cruise control and lane keeping have beco...
This paper develops control laws for backing up a simulated truck-and-trailer to a loading dock in a...
Abstract. The techniques and the technologies supporting Automatic Vehicle Guidance are an important...
Proceedings of: 10th International Conference on Parallel Problem Solving From Nature, PPSN 2008. D...
High-fidelity driving simulators immerse a driver in a highly realistic virtual environment for the ...
Modeling driver behavior is a key aspect of traffic simulations. Accurate driver models can be used ...
This paper presents a back-to-back performance comparison of lane-change maneuvers using two automat...
This paper introduces a method for automatically training a general-purpose driver model, applied to...
Simulation is often used to gain an understanding of vehicle directional response. Furthermore, it i...
This paper discusses a driving simulation framework, which focuses on the decision-making role perfo...
Genetic Algorithms (GAs) are stochastic search and optimization methods inspired by the mechanisms o...
The goal of this thesis has been to study the behaviour of the closed loop driver-vehicle-environmen...
This paper proposes a framework for automated highway driving of an A-double long vehicle combinatio...
Lane-changing is an important operation of an autonomous vehicle driving on the road. Safety and com...
Traffic flow describes the flow of traffic formed by multiple vehicles moving continuously on a road...
As advanced driver-assistance systems (ADAS) such as smart cruise control and lane keeping have beco...
This paper develops control laws for backing up a simulated truck-and-trailer to a loading dock in a...
Abstract. The techniques and the technologies supporting Automatic Vehicle Guidance are an important...
Proceedings of: 10th International Conference on Parallel Problem Solving From Nature, PPSN 2008. D...
High-fidelity driving simulators immerse a driver in a highly realistic virtual environment for the ...
Modeling driver behavior is a key aspect of traffic simulations. Accurate driver models can be used ...
This paper presents a back-to-back performance comparison of lane-change maneuvers using two automat...