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Decentralized Adaptive Iterative Learning Control for Nonaffine Nonlinear Interconnected Systems

机译:非共源非线性互联系统的分散自适应迭代学习控制

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In this paper, we present an iterative learning controller for interconnected nonlinear nonaffine systems with repeatable control tasks. A local learning controller for each subsystem is constructed by a fuzzy neural learning component and a robust learning component to adaptively compensate for the nonaffine nonlinearities and interconnections. The fuzzy neural learning component is designed based on an interval type-2 output recurrent fuzzy neural network. The interaction between each subsystem can be a general type of unknown nonlinear functions. Under a bounding condition on the nonlinear interconnections, the iterative learning controller guarantees that all the internal signals are bounded during the learning process and the state tracking errors of each subsystem converge asymptotically along the iteration axis to a tunable residual set.
机译:在本文中,我们为具有可重复控制任务的互连非线性非共光系统提供了一种迭代学习控制器。每个子系统的本地学习控制器由模糊神经学习部件和稳健的学习部件构成,以适自动化非共参加非共和非线性和互连。模糊神经学习组件基于间隔类型-2输出反复间模糊神经网络设计。每个子系统之间的交互可以是一般类型的未知非线性函数。在非线性互连上的边界条件下,迭代学习控制器保证所有内部信号在学习过程期间界定,并且每个子系统的状态跟踪误差沿迭代轴渐近地收敛到可调谐的残差集。

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