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Performance-oriented asymptotic tracking control of hydraulic systems with radial basis function network disturbance observer:

机译:具有径向基函数网络扰动观测器的液压系统的性能导向渐近跟踪控制:

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Uncertainties, including parametric uncertainties and uncertain nonlinearities, always exist in positioning servo systems driven by a hydraulic actuator, which would degrade their tracking accuracy. In this article, an integrated control scheme, which combines adaptive robust control together with radial basis function neural network–based disturbance observer, is proposed for high-accuracy motion control of hydraulic systems. Not only parametric uncertainties but also uncertain nonlinearities (i.e. nonlinear friction, external disturbances, and/or unmodeled dynamics) are taken into consideration in the proposed controller. The above uncertainties are compensated, respectively, by adaptive control and radial basis function neural network, which are ultimately integrated together by applying feedforward compensation technique, in which the global stabilization of the controller is ensured via a robust feedback path. A new kind of parameter and weight adaptation law is designed on the basis of Lyapunov stab...
机译:由液压执行器驱动的定位伺服系统中始终存在不确定性,包括参数不确定性和不确定性非线性,这会降低其跟踪精度。在本文中,提出了一种将自适应鲁棒控制与基于径向基函数神经网络的扰动观测器相结合的集成控制方案,用于液压系统的高精度运动控制。在提出的控制器中,不仅要考虑参数不确定性,还要考虑不确定性的非线性(即非线性摩擦,外部干扰和/或未建模的动力学)。上述不确定性分别通过自适应控制和径向基函数神经网络进行补偿,然后通过应用前馈补偿技术将它们最终整合在一起,其中通过可靠的反馈路径确保控制器的整体稳定性。在Lyapunov稳定的基础上设计了一种新的参数和权重自适应律。

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