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Robust adaptive H_{infty }H∞ gain neural observer for a class of non-linear systems

机译:一类非线性系统的鲁棒自适应H_ {infty}H∞增益神经观测器

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摘要

This study investigates the design of robust adaptive H∞ gain neural observer (RA H∞NO) for a large class of non-linear systems with unknown constant parameters in the presence of bounded external perturbations on the state vector and on the output of the original system. The proposed adaptive observer incorporates radial basis functions (RBFs) neural networks (NN) to approximate the unknown non-linearities existing in the system. The weight dynamics of every RBFNN are adjusted on-line by using an adaptive projection algorithm. The proof of the asymptotic convergence of the state and parameter estimate errors is achieved by using Lyapunov arguments under a well-defined persistent exciting condition, and without recourse to the strictly positive real condition. The effect of unknown disturbances is reduced by integrating a H∞ gain performance criterion into the proposed estimation scheme. The existence condition of the proposed observer such that all estimated signals are uniformly ultimately bounded is expressed in the form of the linear matrix inequality problem. To evaluate the performance of the proposed observer, three simulations are made.
机译:这项研究研究了在状态向量和原始输出存在有界外部扰动的情况下,一类常数参数未知的非线性系统的鲁棒自适应H∞增益神经观测器(RAH∞NO)的设计。系统。提出的自适应观测器结合了径向基函数(RBF)神经网络(NN)来近似估算系统中存在的未知非线性。使用自适应投影算法在线调整每个RBFNN的权重动态。状态和参数估计误差的渐近收敛性的证明是通过使用Lyapunov自变量在明确定义的持久激励条件下实现的,而无需求助于严格的正实数条件。通过将H∞增益性能标准整合到所提出的估计方案中,可以减少未知干扰的影响。以线性矩阵不等式问题的形式表示提出的观察者的存在条件,以使所有估计的信号均匀地最终有界。为了评估建议的观察者的性能,进行了三个模拟。

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