On the Recursive Algorithm of Bias Compensated Weighted Least Squares Method

Masato Ikenoue, S. Kanae, K. Wada
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引用次数: 1

Abstract

This paper investigates the problem of identifying errors-in-variables (EIV) models, where the both input and output measurements are corrupted by white noises, and addresses a new efficient recursive identification algorithm. The identification problem of EIV models with unknown noise variances has been studied extensively and several methods have been proposed. To be further developed in terms of estimation accuracy, the bias compensated weighted least squares (BCWLS) method with only requirement of input noise variance estimate has been proposed by using the biased weighted least squares estimate. However, the recursive form for the standard least squares estimate cannot be applied to recursively compute the BCWLS estimate because the weight matrix is not diagonal. To recursively compute the BCWLS estimate, the recursive forms for the WLS estimate and the input noise variance estimate are derived when the biased WLS estimate is two-stage least squares type estimate. The results of a simulated example indicate that the proposed recursive algorithm provides good results.
偏差补偿加权最小二乘法的递推算法
本文研究了输入和输出测量均受白噪声干扰的变量误差(EIV)模型的辨识问题,提出了一种新的高效递归辨识算法。对噪声方差未知的EIV模型的识别问题进行了广泛的研究,并提出了几种方法。为了进一步提高估计精度,提出了利用有偏加权最小二乘估计,只需要估计输入噪声方差的偏差补偿加权最小二乘(BCWLS)方法。然而,标准最小二乘估计的递归形式不能应用于递归计算BCWLS估计,因为权重矩阵不是对角的。为了递归计算BCWLS估计,推导了有偏WLS估计为两阶段最小二乘估计时WLS估计和输入噪声方差估计的递归形式。仿真结果表明,所提出的递归算法具有较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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