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NEURAL NETWORK AND EXTENDED STATE OBSERVER BASED SLIDING MODE CONTROL OF ELECTRO-HYDROSTATIC ACTUATORS

机译:基于神经网络和基于电静压执行器的滑动模式控制的神经网络和扩展状态观测器

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Electro-hydrostatic actuators (EHA) are integrated, electrically powered, hydraulic actuators that are used to drive aircraft control surfaces or other moving parts that need hydraulic power. Some of the advantages of EHA are improved reliability, efficiency and reduction in the overall weight of the actuation system. However, design of a high performance EHA controller is challenging because of the variations of its parameters, nonlinear actuator friction, leakages and model uncertainty. To achieve the desired performance of an EHA, this paper proposes a hybrid control algorithm that combines the merits of radial basis function neural network (RBFNN) and sliding mode control (SMC). An RBFNN is used to approximate the uncertainties of EHA and the weights of its output layers are updated based on Lyapunov stability analysis. Besides, implementation of this control method demands full state availability of EHA and an extended state observer is designed. Furthermore, the mathematical model of an EHA involves derivative of a friction force and it is obtained by using a continuous approximation of a LuGre friction model. The performance of the proposed controller is compared with a PID controller. Simulation results illustrated the chattering elimination, superior tracking performance and robustness of the RBFNN based SMC.
机译:电静压致动器(EHA)是集成,电动供电的液压执行器,用于驱动飞机控制表面或需要液压动力的其他运动部件。 EHA的一些优点是提高了致动系统总重量的可靠性,效率和降低。然而,由于其参数,非线性执行器摩擦,泄漏和模型不确定性的变化,高性能EHA控制器的设计具有具有挑战性。为了实现EHA的所需性能,本文提出了一种混合控制算法,其结合了径向基函数神经网络(RBFNN)和滑模控制(SMC)的优点。 RBFNN用于近似EHA的不确定性,并且基于Lyapunov稳定性分析更新其输出层的权重。此外,该控制方法的实现要求EHA的全状态可用性和扩展状态观察者的设计。此外,EHA的数学模型涉及摩擦力的衍生物,并且通过使用Lugre摩擦模型的连续近似来获得。将所提出的控制器的性能与PID控制器进行比较。仿真结果说明了基于RBFNN的SMC的抖动消除,卓越的跟踪性能和鲁棒性。

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