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Robot path planning based on deep reinforcement learning

机译:基于深度加强学习的机器人路径规划

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Q-learning algorithm based on Markov decision process as a reinforcement learning algorithm can achieve better path planning effect for mobile robot in continuous trial and error. However, Q-learning needs a huge Q-value table, which is easy to cause dimension disaster in decision-making, and it is difficult to get a good path in complex situations. By combining deep learning with reinforcement learning and using the perceptual advantages of deep learning to solve the decision-making problem of reinforcement learning, the deficiency of Q-learning algorithm can be improved. At the same time, the path planning of deep reinforcement learning is simulated by MATLAB, the simulation results show that the deep reinforcement learning can effectively realize the obstacle avoidance of the robot and plan a collision free optimal path for the robot from the starting point to the end point.
机译:基于马尔可夫决策过程的Q学习算法作为加强学习算法,可以在连续试验和误差中实现移动机器人的更好路径规划效果。然而,Q-Learning需要一个巨大的Q值表,这很容易导致决策中的尺寸灾难,并且很难在复杂的情况下获得良好的道路。通过将深度学习与强化学习结合起来,利用深度学习解决钢筋学习的决策问题的感知优势,可以提高Q学习算法的缺陷。同时,深增强学习的路径规划由MATLAB模拟,仿真结果表明,深度加强学习可以有效地实现机器人的避免避免,并从起点到机器人施加碰撞最佳路径终点。

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