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Improving Trajectory Tracking of a Three Axis SCARA Robot Using Neural Networks

机译:使用神经网络提高三轴围巾机器人的轨迹跟踪

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In this paper, a neural-network based robust adaptive controller is proposed to control an industrial robot considering non- linearities, uncertainties and external perturbations. Three-axis SCARA robots is used to test the performance of this controller. The nonlinear system is treated as a partially known system. The known dynamic is used to design a nominal feedback controller based on the well-known feedback linearization method and PD controller. A Variable Structure Controller is added to the PD loop to provide robustness to uncertainties in the model of the system in order to improve accuracy of the trajectory tracking. A Neural Network (NN) based robust adaptive tracking controller is applied to further improves the control action. The outputs of the NNs are used to compensate the effects of the system uncertainties and to improve the tracking performance. Using this scheme, strong robustness with respect to uncertain dynamics and nonlinearities can be obtained, the output tracking error between the plant output and the desired reference output can asymptotically converge to zero as well. This controller exhibited superior performance characteristics where the maximum absolute error for the three-axis SCARA robot is considerably reduced.
机译:在本文中,一个神经网络基于鲁棒自适应控制器被提出来控制的工业用机器人考虑非线性化,不确定性和外部扰动。三轴水平多关节机器人是用来测试该控制器的性能。非线性系统被视为部分已知系统。已知的动态被用来设计基于该公知的反馈线性化方法和PD控制器的标称反馈控制器。变结构控制器被添加到PD回路,以提高轨道跟踪的准确性提供鲁棒性的系统的模型不确定性。基于神经网络(NN)鲁棒自适应跟踪控制器应用到进一步提高了控制动作。所述神经网络的输出用于补偿系统的不确定性的影响,并且改善跟踪性能。使用该方案,可以得到相对于不确定动力学和非线性鲁棒性强,电站输出和期望的参考输出之间的输出跟踪误差可以渐近收敛到零。该控制器显示出优异的性能特性,其中对于三个轴SCARA机器人的最大绝对误差显着减少。

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