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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Reproducing Kernel Hilbert Space Approach for the Online Update of Radial Bases in Neuro-Adaptive Control
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Reproducing Kernel Hilbert Space Approach for the Online Update of Radial Bases in Neuro-Adaptive Control

机译:神经自适应控制中的径向基在线更新的再生核希尔伯特空间方法

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摘要

Classical work in model reference adaptive control for uncertain nonlinear dynamical systems with a radial basis function (RBF) neural network adaptive element does not guarantee that the network weights stay bounded in a compact neighborhood of the ideal weights when the system signals are not persistently exciting (PE). Recent work has shown, however, that an adaptive controller using specifically recorded data concurrently with instantaneous data guarantees boundedness without PE signals. However, the work assumes fixed RBF network centers, which requires domain knowledge of the uncertainty. Motivated by reproducing kernel Hilbert space theory, we propose an online algorithm for updating the RBF centers to remove the assumption. In addition to proving boundedness of the resulting neuro-adaptive controller, a connection is made between PE signals and kernel methods. Simulation results show improved performance.
机译:具有径向基函数(RBF)神经网络自适应元件的不确定非线性动力学系统的模型参考自适应控制中的经典工作不能保证当系统信号不持续激发时网络权重保持在理想权重的紧凑邻域内( PE)。然而,最近的工作表明,同时使用专门记录的数据和瞬时数据的自适应控制器可以保证没有PE信号的有界性。但是,这项工作假设固定的RBF网络中心,这需要不确定性领域知识。基于重现内核希尔伯特空间理论的动机,我们提出了一种在线算法,用于更新RBF中心以消除假设。除了证明最终的神经自适应控制器有界外,还在PE信号和核方法之间建立了联系。仿真结果表明性能有所提高。

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