A New Algorithm for Solving Inverse Kinematics of Robot Based on BP and RBF Neural Network

Tianming Yuan, Yi Feng
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引用次数: 5

Abstract

A parallel neural network algorithm based on BP and RBF neural network for solving inverse kinematics of robot is proposed in this paper. Concrete steps of this method and related matters that should be noticed are presented. BP network is trained by LM algorithm and RBF network increases radial basis neurons automatically. The simulation results of PUMA560 show that this algorithm is simple and reliable, making the error of the whole system become smaller. In addition, the algorithm effectively solves the problem of inverse kinematics and overcomes the defects of traditional methods for solving inverse kinematics, such as large amount of calculation, slow convergence rate and low accuracy.
基于BP和RBF神经网络求解机器人逆运动学的新算法
提出了一种基于BP神经网络和RBF神经网络的求解机器人逆运动学的并行神经网络算法。介绍了该方法的具体步骤及应注意的有关事项。BP网络采用LM算法训练,RBF网络自动增加径向基神经元。PUMA560的仿真结果表明,该算法简单可靠,使整个系统的误差变小。此外,该算法有效地解决了逆运动学问题,克服了传统求解逆运动学方法计算量大、收敛速度慢、精度低等缺陷。
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