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Adaptive trajectory modeling of humanoid robot 3-DOF arm using inverse neural MIMO NARX model

机译:基于逆神经MIMO NARX模型的人形机器人三自由度手臂自适应轨迹建模

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In this paper, a novel inverse adaptive neural MIMO NARX model is used for modeling and identifying the inverse kinematics of the humanoid robot 3-DOF arm system. The nonlinear features of the inverse kinematics of the industrial robot arm drive are thoroughly modeled based on the inverse adaptive neural NARX model-based identification process using experimental input-output training data. This paper proposes the novel use of a back propagation (BP) algorithm to generate the inverse neural MIMO NARX (INMN) model for the inverse kinematics of the humanoid robot 3-DOF arm. The results show that the proposed adaptive neural NARX model trained by Back Propagation learning algorithm yields outstanding performance and perfect accuracy.
机译:本文采用一种新型的逆自适应神经MIMO NARX模型对人形机器人3-DOF手臂系统的逆运动学进行建模和识别。基于逆向自适应神经NARX模型的识别过程,使用实验输入输出训练数据,对工业机器人手臂驱动的逆运动学的非线性特征进行了彻底建模。本文提出了一种新颖的反向传播(BP)算法,用于为人形机器人3-DOF手臂的逆运动学生成逆神经MIMO NARX(INMN)模型。结果表明,所提出的自适应BP神经网络模型经过反向传播学习算法训练后,具有优异的性能和良好的精度。

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