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Neural Learning Control with Disturbance

机译:扰动神经学习控制

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Deterministic learning theory was presented and investigated recently. Due to the existence of time varying disturbances, learning capability may be influenced. In this paper, deterministic learning theory will be analyzed in environments with disturbances. With appropriately designed adaptive neural controller, the disturbances are attenuated and partial Persistent Excitation (PE) for radial basis function neural network (RBF NN) is satisfied. By utilizing partial PE condition and Uniform Complete Observability (UCO) technique, the nominal part of the error subsystem is exponentially stable. Furthermore, all signals of the error subsystem converge to a neighborhood of zero exponentially and the size of the neighborhood relies not only on the amplitude of disturbances but also on the control gains. After the learning process, the estimated neural weights are stored in RBF NN and a constant neural controller can be implemented. The simulation shows the effectiveness of this scheme.
机译:确定性学习理论是最近提出和调查的。由于存在时间变化的干扰,可能会影响学习能力。在本文中,在扰动环境中将分析确定性学习理论。通过适当设计的自适应神经控制器,衰减的干扰和径向基函数神经网络(RBF NN)的部分持久激励(PE)得到满足。通过利用局部PE条件和均匀的完整可观察性(UCO)技术,误差子系统的标称部分是指数稳定的。此外,误差子系统的所有信号都会收敛到零指数的邻域,并且邻域的大小不仅依赖于干扰的幅度,而且依赖于控制增益。在学习过程之后,估计的神经重量存储在RBF NN中,并且可以实现恒定的神经控制器。仿真显示了该方案的有效性。

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