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Inversion of RBF networks and applications to adaptive control of nonlinear systems

机译:RBF网络的反演及其在非线性系统自适应控制中的应用

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The paper investigates the application of inversion of a radial basis function network (RBFN) to nonlinear control problems for which the structure of the nonlinearity is unknown. Initially, the RBF network is trained to learn the forward dynamics of the plant. Two different controller structures are then proposed based on this identified RBFN model. In one scheme, a feedback control law is derived based on the input prediction by inversion of the RBFN model so that the system is Lyapunov stable. The second kind of controller structure predicts the feedforward control action, while the fixed controller actuates the feedback stabilising signal. An extended Kalman filtering based algorithm is employed to carry out the network inversion during each sampling interval. Two examples are presented to verify the proposed scheme. Simulation results show that the performance of the controller based on the proposed network inversion scheme is efficient.
机译:本文研究了径向基函数网络(RBFN)的反演在非线性结构未知的非线性控制问题中的应用。最初,对RBF网络进行培训以了解工厂的前向动态。然后基于此识别的RBFN模型,提出了两种不同的控制器结构。在一种方案中,基于输入预测,通过对RBFN模型进行反演,得出反馈控制律,从而使系统具有Lyapunov稳定性。第二种控制器结构可预测前馈控制动作,而固定控制器可驱动反馈稳定信号。采用扩展的基于卡尔曼滤波的算法在每个采样间隔内进行网络反演。给出两个例子来验证所提出的方案。仿真结果表明,基于所提出的网络反转方案的控制器性能是有效的。

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