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首页> 外文期刊>The Open Electrical & Electronic Engineering Journal >Hierarchical Reinforcement Learning Based Self-balancing Algorithm for Two-wheeled Robots
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Hierarchical Reinforcement Learning Based Self-balancing Algorithm for Two-wheeled Robots

机译:基于分层强化学习的两轮机器人自平衡算法

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Self-balancing control is the basis for applications of two-wheeled robots. In order to improve the self-balancing of two-wheeled robots, we propose a hierarchical reinforcement learning algorithm for controlling the balance of two-wheeled robots. After describing the subgoals of hierarchical reinforcement learning, we extract features for subgoals, define a feature value vector and its corresponding weight vector, and propose a reward function with additional subgoal reward function. Finally, we give a hierarchical reinforcement learning algorithm for finding the optimal strategy. Simulation experiments show that, the proposed algorithm is more effectiveness than traditional reinforcement learning algorithm in convergent speed. So in our system, the robots can get self-balanced very quickly.
机译:自平衡控制是两轮机器人应用的基础。为了提高两轮机器人的自平衡,我们提出了一种用于控制两轮机器人平衡的分层强化学习算法。在描述了分层强化学习的子目标之后,我们提取子目标的特征,定义特征值向量及其相应的权重向量,并提出带有附加子目标奖励函数的奖励函数。最后,我们给出了一种分层的强化学习算法,以找到最佳策略。仿真实验表明,该算法在收敛速度上比传统的强化学习算法更具有效性。因此,在我们的系统中,机器人可以非常快速地实现自我平衡。

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