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Learning from direct adaptive neural control

机译:从直接自适应神经控制中学习

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This paper studies deterministic learning for nonlinear systems in the sense that an appropriately designed adaptive neural controller is shown to be capable of learning the unknown system dynamics while attempting to control the system. Following an earlier result for a simple class of systems, it is shown that this "deterministic learning" ability can still be implemented for direct adaptive neural control (ANC) of more general nonlinear systems. Specifically, for direct ANC of nonlinear systems in the strict-feedback form, accurate learning of system dynamics in certain desired control occur when all the NN inputs, including the system states and the intermediate variables, become periodic or periodic-like (recurrent) signals such that a partial persistence of excitation condition is satisfied. Further, it is also revealed that the direct ANC has advantages over the indirect ANC concerning the learning ability.
机译:本文研究了非线性系统的确定性学习,意义上的非线性系统,即适当设计的自适应神经控制器能够在尝试控制系统的同时能够学习未知的系统动态。在一个简单的系统的早期结果之后,表明该“确定性学习”能力仍然可以用于更一般的非线性系统的直接自适应神经控制(ANC)。具体地,对于在严格反馈形式中的非线性系统的直接ANC,当所有NN输入(包括所述系统状态和所述中间变量)变为周期性或周期性(复制)信号时,对某些所需控制的系统动态的准确学习发生使得满足激励条件的部分持久性。此外,还揭示了直接AC的优势与关于学习能力的间接ANC。

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