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A modified orthogonal forward regression least-squares algorithm for system modelling from noisy regressors

机译:基于噪声回归器的系统建模的改进正交正向回归最小二乘算法

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摘要

In this paper, a modified orthogonal forward regression (OFR) least-squares algorithm is presented for system identification and modelling from noisy regressors. Under the assumption that the energy and signal-to-noise ratio (SNR) of the signals are known or can be estimated, it is shown that unbiased estimates of the Error reduction ratios (ERRs) and the parameters can be obtained in each forward regression step. Examples are provided to illustrate the proposed approach.
机译:本文提出了一种改进的正交正向回归(OFR)最小二乘算法,用于基于噪声回归器的系统识别和建模。在已知信号的能量和信噪比(SNR)或可以对其进行估计的假设下,表明在每次正向回归中都可以得到无偏估计的误差减少率(ERRs)和参数步。提供了一些示例来说明建议的方法。

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