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Analog compound orthogonal neural network control of robotic manipulators

机译:机器人的模拟复合正交神经网络控制。

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An analog compound orthogonal neural network is presented which is based on digital compound orthogonal neural networks. The compound neural network's control performance was investigated as applied to a robot control problem. The analog neural network is a Chebyshev neural network with a high speed-learning rate in an on-line manner. Its control algorithm does not relate to controlled plant models. The analog neural network is used as the feedforward controller, and PD is used as the feedback controller in the control system of robots. The excellent performance in system response, tracking accuracy, and robustness was verified through a simulation experiment applied to a robotic manipulator with friction and nonlinear disturbances. The trajectory tracking control showed results in satisfactory effectiveness. This analog neural controller provides a novel approach for the control of uncertain or unknown systems.
机译:提出了一种基于数字复合正交神经网络的模拟复合正交神经网络。研究了复合神经网络的控制性能,并将其应用于机器人控制问题。模拟神经网络是切比雪夫神经网络,具有在线学习方式的高速学习率。它的控制算法与受控工厂模型无关。在机器人控制系统中,模拟神经网络用作前馈控制器,PD用作反馈控制器。通过应用于摩擦和非线性干扰的机械手的仿真实验,验证了系统响应,跟踪精度和鲁棒性方面的出色性能。轨迹跟踪控制表明效果令人满意。这种模拟神经控制器为不确定或未知系统的控制提供了一种新颖的方法。

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