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Neural networks L2-gain control for robot system

机译:机器人系统的神经网络L 2 -GAIN控制

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A new L2-gain disturbance rejection controller and adaptive adjustment are combined into a hybrid robust control scheme, which is proposed for robot tracking control systems. The proposed controller deals mainly with external disturbances and nonlinear uncertainty in motion control. A neural network (NN) is used to approximate the uncertainties in a robotic system. Meanwhile, the approximating error of the NN is attenuated to a prescribed level by the adaptive robust controller. The adaptive techniques of NN will improve robustness with respect to uncertainty of system, as a result, improving the dynamic performance of robot system. A simulation example demonstrates the effectiveness of the proposed control strategy.
机译:新的L 2 -gain扰动抑制控制器和自适应调整组合成混合鲁棒控制方案,该方案提出用于机器人跟踪控制系统。该拟议的控制器主要涉及运动控制中的外部干扰和非线性不确定性。神经网络(NN)用于近似机器人系统中的不确定性。同时,NN的近似误差由自适应稳健控制器衰减到规定的水平。结果,NN的自适应技术将改善系统不确定性的鲁棒性,从而提高机器人系统的动态性能。模拟示例展示了所提出的控制策略的有效性。

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