基于自适应神经网络的机械臂辨识与跟踪控制

R. Ahmed, K. Rattan, O. Abdallah
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引用次数: 6

摘要

有效的机械臂控制策略需要实时在线计算机器人动力学模型。然而,由于机器人动力学模型的复杂性,这在实际应用中很难实现。由于神经网络具有学习和近似函数的能力,因此它是机器人操纵器识别和控制的一个有吸引力的替代方案。本文介绍了一种自适应多层神经网络(MNN)作为机器人机械臂前馈控制器的发展。利用改进的反向传播技术训练MNN识别未知的非线性对象(机械臂的逆动力学)。在反馈回路中采用PD控制器,保证了系统的全局渐近稳定性。此外,PD控制器的输出用作在线学习的学习信号,以调整MNN的权重以捕获任何参数变化和/或干扰。仿真了所开发的控制器体系结构,评估了其对机械臂轨迹跟踪性能的影响,并与传统的自适应控制器进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive neural network for identification and tracking control of a robotic manipulator
Effective control strategies for robotic manipulators require on-line computation of the robot dynamic model in real-time. However, the complexity of robot dynamic model makes this difficult to achieve in practice. Neural networks are an attractive alternative for identification and control of robotic manipulators, because of their ability to learn and approximate functions. This paper presents the development of an adaptive Multilayer Neural Network (MNN) as a feedforward controller for a robotic manipulator. The MNN is trained to identify the unknown nonlinear plant (inverse dynamics of a robotic manipulator) using a modified back-propagation technique. A PD controller is used in the feedback loop to guarantee global asymptotic stability. Also, the output of the PD controller is used as a learning signal for the on-line learning to adjust the weights of the MNN to capture any parameters variation and/or disturbances. The controller architecture developed has been simulated and its effect on the trajectory tracking performance of a manipulator has been evaluated and compared to the conventional adaptive controller.
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