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Novel Adaptive Forward Neural MIMO NARX Model for the Identification of Industrial 3-DOF Robot Arm Kinematics

机译:新型自适应前进神经MIMO鼻鼻型模型,用于识别工业3-DOF机器人ARM运动学

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摘要

In this paper, a novel forward adaptive neural MIMO NARX model is used for modelling and identifying the forward kinematics of an industrial 3-DOF robot arm system. The nonlinear features of the forward kinematics of the industrial robot arm drive are thoroughly modelled based on the forward adaptive neural NARX model-based identification process using experimental input-output training data. This paper proposes a novel use of a back propagation (BP) algorithm to generate the forward neural MIMO NARX (FNMN) model for the forward kinematics of the industrial 3-DOF robot arm. The results show that the proposed adaptive neural NARX model trained by a Back Propagation learning algorithm yields outstanding performance and perfect accuracy.
机译:本文采用了一种新型的正向自适应神经MIMO NARX模型来建模和识别工业3-DOF机器人臂系统的前向运动学。 工业机器人臂驱动的前向运动学的非线性特征基于使用实验输入输出训练数据的基于前向自适应神经NARX模型的识别过程进行了彻底建模。 本文提出了一种新颖的使用反向传播(BP)算法来生成工业3-DOF机器人臂的前向运动学的前向神经MIMO NARX(FNMN)模型。 结果表明,由后传播学习算法训练的拟议的自适应神经NARX模型产生出色的性能和完美的准确性。

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