Forward and Inverse Kinematics Solution of A 3-DOF Articulated Robotic Manipulator Using Artificial Neural Network

Abdel-Nasser Sharkawy, S. S. Khairullah
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引用次数: 1

Abstract

In this research paper, the multilayer feedforward neural network (MLFFNN) is architected and described for solving the forward and inverse kinematics of the 3-DOF articulated robot. When designing the MLFFNN network for forward kinematics, the joints' variables are used as inputs to the network, and the positions and orientations of the robot end-effector are used as outputs. In the case of inverse kinematics, the MLFFNN network is designed using only the positions of the robot end-effector as the inputs, whereas the joints’ variables are the outputs. For both cases, the training of the proposed multilayer network is accomplished by Levenberg Marquardt (LM) method. A sinusoidal type of motion using variable frequencies is commanded to the three joints of the articulated manipulator, and then the data is collected for the training, testing, and validation processes. The experimental simulation results demonstrate that the proposed artificial neural network that is inspired by biological processes is trained very effectively, as indicated by the calculated mean squared error (MSE), which is approximately equal to zero. The resulted in smallest MSE in the case of the forward kinematics is 4.592×10^(-8) in the case of the inverse kinematics, is 9.071×10^(-7). This proves that the proposed MLFFNN artificial network is highly reliable and robust in minimizing error. The proposed method is applied to a 3-DOF manipulator and could be used in more complex types of robots like 6-DOF or 7-DOF robots.
基于人工神经网络的三自由度关节式机械臂正逆解
本文提出并描述了多层前馈神经网络(MLFFNN)用于求解3-DOF关节机器人的正运动学和逆运动学。在设计MLFFNN正运动学网络时,将关节变量作为网络的输入,将机器人末端执行器的位置和姿态作为网络的输出。在逆运动学的情况下,MLFFNN网络仅使用机器人末端执行器的位置作为输入,而关节变量作为输出。对于这两种情况,所提出的多层网络的训练是由Levenberg Marquardt (LM)方法完成的。命令关节式机械手的三个关节进行频率可变的正弦运动,然后收集数据用于训练、测试和验证过程。实验仿真结果表明,受生物过程启发的人工神经网络训练非常有效,计算出的均方误差(MSE)近似为零。在正运动学的情况下,最小的MSE是4.592×10^(-8)在逆运动学的情况下,是9.071×10^(-7)这证明了所提出的MLFFNN人工网络具有较高的可靠性和鲁棒性。该方法适用于3自由度机械臂,并可用于更复杂类型的机器人,如6自由度或7自由度机器人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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