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首页> 外文期刊>IAENG Internaitonal journal of computer science >Inverse Kinematics Solution for Robot Manipulator based on Neural Network under Joint Subspace
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Inverse Kinematics Solution for Robot Manipulator based on Neural Network under Joint Subspace

机译:联合子空间下基于神经网络的机械臂逆运动学解决方案

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Neural networks with their inherent learning ability have been widely applied to solve the robot manipulator inverse kinematics problems. However, there are still two open problems: (1) without knowing inverse kinematic expressions, these solutions have the difficulty of how to collect training sets, and (2) the gradient-based learning algorithms can cause a very slow training process, especially for a complex configuration, or a large set of training data. Unlike these traditional implementations, the proposed metho trains neural network in joint subspace which can be easily calculated with electromagnetism-like method. The kinematics equation and its inverse are one-to-one mapping within the subspace. Thus the constrained training sets can be easily collected by forward kinematics relations. For issue 2, this paper uses a novel learning algorithm called extreme learning machine (ELM) which randomly choose the input weights and analytically determines the output weights of the single hidden layer feedforward neural networks (SLFNs). In theory, this algorithm tends to provide the best generalization performance at extremely fast learning speed. The results show that the proposed approach has not only greatly reduced the computation time but also improved the precision.
机译:具有固有学习能力的神经网络已被广泛应用于解决机器人操纵器逆运动学问题。但是,仍然存在两个未解决的问题:(1)在不知道逆运动学表达式的情况下,这些解决方案存在如何收集训练集的困难;(2)基于梯度的学习算法可能会导致训练过程非常缓慢,尤其是对于复杂的配置或大量的训练数据。与这些传统实现方式不同,所提出的方法在联合子空间中训练神经网络,可以使用类似电磁的方法轻松计算出该方法。运动方程及其逆是子空间内的一对一映射。因此,可以通过正向运动学关系轻松地收集受约束的训练集。对于问题2,本文使用一种称为极限学习机(ELM)的新颖学习算法,该算法随机选择输入权重并通过解析确定单隐藏层前馈神经网络(SLFN)的输出权重。从理论上讲,该算法倾向于以极快的学习速度提供最佳的泛化性能。结果表明,该方法不仅大大减少了计算时间,而且提高了精度。

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