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Finite-time parameter estimation without persistence of excitation

机译:有限时间参数估计而不持久的激励

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The problem of adaptive estimation of constant parameters in the linear regressor model is studied without the hypothesis that regressor is Persistently Excited (PE). First, the initial vector estimation problem is transformed to a series of the scalar ones using the method of Dynamic Regressor Extension and Mixing (DREM). Second, several adaptive estimation algorithms are proposed for the scalar scenario. In such a case, if the regressor may be nullified asymptotically or in a finite time, then the problem of estimation is also posed on a finite interval of time. The efficiency of the proposed algorithms is demonstrated in numeric experiments for an academic example.
机译:研究了线性回归模型中恒定参数的自适应估计的问题,没有持续激发了回归(PE)的假设。首先,使用动态回归扩展和混合(DREM)的方法将初始向量估计问题转换为一系列标量。其次,提出了用于标量场景的若干自适应估计算法。在这种情况下,如果回归可以无渐近或在有限时间内,则估计问题也在有限间隔内提出。在学术举例的数字实验中证明了所提出的算法的效率。

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