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Nonlinear adaptive backstepping control of a friction based electro-hydraulic load simulator using chebyshev neural networks

机译:基于切比雪夫神经网络的基于摩擦的电液载荷模拟器的非线性自适应反步控制

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This paper deals with the output torque tracking control of a friction based electro-hydraulic load simulator (FEHLS) with time-varying spring stiffness and bearing friction. Although the FEHLS has no extra torque, the friction of the bearings will cause uncertain friction torque. Besides, due to the special mechanical structure of the FEHLS, the spring stiffness will vary near the zero position of the hydraulic cylinder and also cause uncertain torque. To compensate for the uncertain torque and improve the torque tracking accuracy of the FEHLS, an adaptive backstepping controller based on Chebyshev neural network (CNN) is proposed. First, the nonlinear control model of the FEHLS is established where the uncertain torque is lumped into unknown disturbance. Then, the CNN is used to approximate the lumped unknown distrubance. Based on the CNN approximation, an adaptive backstepping controller is designed. Finally, simulation studies are carried out to show the effectiveness of the proposed controller.
机译:本文研究具有时变弹簧刚度和轴承摩擦的基于摩擦的电动液压负载模拟器(FEHLS)的输出转矩跟踪控制。尽管FEHLS没有额外的扭矩,但轴承的摩擦将导致不确定的摩擦扭矩。此外,由于FEHLS的特殊机械结构,弹簧刚度会在液压缸的零位置附近变化,并导致不确定的扭矩。为了补偿不确定的转矩并提高FEHLS的转矩跟踪精度,提出了一种基于切比雪夫神经网络的自适应反推控制器。首先,建立了FEHLS的非线性控制模型,将不确定的扭矩集中到未知的干扰中。然后,使用CNN估算集总的未知干扰。基于CNN近似,设计了一种自适应反推控制器。最后,进行仿真研究以显示所提出控制器的有效性。

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