Regularized system identification is the major advance in system identification in the last decade. Although many promising results have been achieved, it is far from complete and there are still many key problems to be solved. One of them is the asymptotic theory, which is about convergence properties of the model estimators as the sample size goes to infinity. The existing related results for regularized system identification are about the almost sure convergence of various hyper-parameter estimators. A common problem of those results is that they do not contain information on the factors that affect the convergence properties of those hyper-parameter estimators, e.g., the regression matrix. In this paper, we tackle problems of this kind for the regularized finite impulse response model estimation with the empirical Bayes (EB) hyper-parameter estimator and filtered white noise input. In order to expose and find those factors, we study the convergence in distribution of the EB hyper-parameter estimator, and the asymptotic distribution of its corresponding model estimator. For illustration, we run Monte Carlo simulations to show the efficacy of our obtained theoretical results.
翻译:常规系统识别是过去十年中在系统识别方面的主要进步,虽然取得了许多有希望的成果,但还远未完成,还有许多关键问题有待解决。其中之一是无药可治理论,即当样本大小达到无限程度时模型估计器的趋同性能。常规系统识别的现有相关结果是各种超参数测量器几乎可以肯定的趋同性。这些结果的一个共同问题是,它们并不包含影响这些超参数测量器(例如,回归矩阵)趋同性能的因素的信息。在本文中,我们用实验性拜亚(EB)超光谱估计器和过滤性白色噪音输入物来解决这种定期定时定势反应模型估计的问题。为了暴露和发现这些因素,我们研究了EB超参数测量仪的分布上的趋同性,以及相应模型估测器的无药性分布。例如,我们运行蒙特卡洛模拟,以展示我们所取得的理论结果的功效。