Publication | Closed Access
Learning to Drive a Real Car in 20 Minutes
92
Citations
9
References
2007
Year
Unknown Venue
Artificial IntelligenceEngineeringQ IterationDriver BehaviorVehicle ControlValue Function ApproximationSystems EngineeringDriver PerformanceReal CarComputer ScienceIntelligent SystemsRobot LearningLearning ControlAutonomous DrivingRobotics
The paper describes our first experiments on reinforcement learning to steer a real robot car. The applied method, neural fitted Q iteration (NFQ) is purely data-driven based on data directly collected from real-life experiments, i.e. no transition model and no simulation is used. The RL approach is based on learning a neural Q value function, which means that no prior selection of the structure of the control law is required. We demonstrate, that the controller is able to learn a steering task in less than 20 minutes directly on the real car. We consider this as an important step towards the competitive application of neural Q function based RL methods in real-life environments.
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