Reinforcement Learning for Robots with special reference to the Inverse kinematics solutions

Priya Shukla, G. Nandi
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引用次数: 1

Abstract

Reinforcement learning is an important learning paradigm apart from supervised and unsupervised learning which is particularly suitable for Robotics system due to its inherent structural complexity, high degrees of nonlinearity and few parameter predictability. As a result of which an accurate mathematical model is difficult to build which has close resemblance with the field behaviours of the robot. To help solve this problem, Q learning based reinforcement algorithm has been proposed for learning the inverse kinematics mapping. The results have been compared with the analytical solutions of the well-known inverse kinematics solution.
机器人的强化学习,特别是运动学逆解
强化学习是除监督学习和无监督学习之外的一种重要的学习范式,由于其固有的结构复杂性、高度非线性和参数可预测性小,特别适用于机器人系统。因此,很难建立与机器人野外行为非常相似的精确数学模型。为了解决这一问题,提出了基于Q学习的强化算法来学习逆运动学映射。结果与著名的运动学反解的解析解进行了比较。
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