Driving Decision and Control for Autonomous Lane Change based on Deep Reinforcement Learning
We apply Deep Q-network (DQN) with the consideration of safety during the task for deciding whether to conduct the maneuver. Furthermore, we design two similar Deep Q learning frameworks with quadratic approximator for deciding how to select a comfortable gap and just follow the preceding vehicle. F...
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Zusammenfassung: | We apply Deep Q-network (DQN) with the consideration of safety during the
task for deciding whether to conduct the maneuver. Furthermore, we design two
similar Deep Q learning frameworks with quadratic approximator for deciding how
to select a comfortable gap and just follow the preceding vehicle. Finally, a
polynomial lane change trajectory is generated and Pure Pursuit Control is
implemented for path tracking. We demonstrate the effectiveness of this
framework in simulation, from both the decision-making and control layers. The
proposed architecture also has the potential to be extended to other autonomous
driving scenarios. |
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DOI: | 10.48550/arxiv.1904.10171 |