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Pre-training Framework for Improving Learning Speed of Reinforcement Learning based Autonomous Vehicles

机译:提高基于钢筋自治车辆的学习速度的预训练框架

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Reinforcement learning based autonomous vehicles have the disadvantage of long learning time. The paper proposes a pre-training framework for improving learning speed of autonomous vehicles (PRELSA) in reinforcement learning. PRELSA framework pre-learns the agent's neural network before actual learning by pre-initializing the agent's policy gradient neural network. Simulation results show that PRELSA framework improves learning speed by about 20 percent compared to existing learning method.
机译:基于钢筋的自治车辆具有长学习时间的缺点。本文提出了提高加固学习中自治车辆(PRELSA)的学习速度的训练框架。 Prelsa Framework通过预先初始化代理的政策梯度神经网络,在实际学习之前预先了解代理的神经网络。仿真结果表明,与现有的学习方法相比,PRELSA框架将学习速度提高了大约20%。

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