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自动化学报 2012
Learning Identification: Least Squares Algorithms and Their Repetitive Consistency
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Abstract:
This paper presents a learning identification method for stochastic systems with time-varying parametric uncertainties. The systems undertaken perform tasks repetitively over a pre-specified finite-time interval, and a least squares learning algorithm is derived on the basis of the repetitive operations. The learning identification method applies to periodically time-varying systems. It is shown that the estimates converge to the time-varying values of the parameters, and the complete estimation can be achieved under repetitive persistent excitation condition, a sufficient condition for establishing repetitive consistency of the learning algorithms. Numerical results are presented to demonstrate the effectiveness of the proposed learning algorithms.