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Recursive computational formulas of the least squares criterion functions for scalar system identification

机译:标量系统识别的最小二乘准则函数的递归计算公式

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The paper discusses recursive computation problems of the criterion functions of several least squares type parameter estimation methods for linear regression models, including the well-known recursive least squares (RLS) algorithm, the weighted RLS algorithm, the forgetting factor RLS algorithm and the finite-data-window RLS algorithm without or with a forgetting factor. The recursive computation formulas of the criterion functions are derived by using the recursive parameter estimation equations. The proposed recursive computation formulas can be extended to the estimation algorithms of the pseudo-linear regression models for equation error systems and output error systems. Finally, the simulation example is provided.
机译:本文讨论了几种线性回归模型的最小二乘型参数估计方法的准则函数的递归计算问题,包括著名的递归最小二乘(RLS)算法,加权RLS算法,遗忘因子RLS算法和有限元算法。带有或没有遗忘因素的数据窗口RLS算法。通过使用递归参数估计方程,推导出标准函数的递归计算公式。所提出的递推计算公式可以扩展到方程误差系统和输出误差系统的伪线性回归模型的估计算法。最后,提供了仿真示例。

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