Evolutionary structured RBF neural network based control of a seven-link redundant manipulator

T. Nanayakkara, K. Watanabe, K. Kiguchi, K. Izumi
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引用次数: 2

Abstract

A method for the identification of complex nonlinear dynamics of a multilink robot manipulator using Runge-Kutta-Gill neural networks (RKGNN) in the absence of input torque information is proposed. The RKGNN constructed using shape adaptive radial basis functions (RBF) are trained using an evolutionary algorithm. Due to the fact that the main function network is divided into subnetworks to represent detailed properties of the dynamics of a manipulator, the neural networks have greater information processing capacity and they can be tested for properties such as positive definiteness of the inertia matrix. Dynamics of an industrial seven-link manipulator are identified using only input-output position and their velocity data. Promising experimental control results are obtained to prove the ability of the proposed method in capturing highly nonlinear dynamics of a multilink manipulator in an effective manner.
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基于演化结构RBF神经网络的七连杆冗余机械臂控制
提出了一种基于Runge-Kutta-Gill神经网络(RKGNN)的多连杆机器人复杂非线性动力学辨识方法。基于形状自适应径向基函数(RBF)构造的RKGNN采用进化算法进行训练。由于将主函数网络划分为子网络来表示机械臂动力学的详细特性,因此神经网络具有更大的信息处理能力,并且可以测试其惯量矩阵的正确定性等特性。仅利用输入-输出位置和速度数据对工业七连杆机械臂的动力学特性进行了辨识。实验结果表明,该方法能够有效地捕获多连杆机械臂的高度非线性动力学。
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