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A new bias-compensating least-squares method for identification of stochastic linear systems in presence of coloured noise

机译:存在色噪声下随机线性系统辨识的新的偏差补偿最小二乘方法

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In this paper, a new bias-compensating least-squares method is presented for the identification of linear, single-input single-output, discrete-time systems in which the output is corrupted by an additive coloured noise. It is well known that the ordinary least-squares method may lead to biased or nonconsistent estimates of system parameters in the presence of disturbances. The bias problem may be solved, for example, by using the generalised least-squares method. In the generalised least-squares method, a digital filter is used to filter the observed input-output data. The principle of the proposed method is to introduce the filter of the conventional generalised least-squares method on the input of the identified system. By using this filter with known zeros, the bias of the ordinary least-squares estimator may then be estimated and removed, which consists of the bias-compensating method principle. The proposed and the generalised least-squares methods are applied to two simulated systems via Monte Carlo simulations.
机译:在本文中,提出了一种新的偏差补偿最小二乘方法,用于识别线性,单输入单输出,离散时间系统,其中输出受到加性有色噪声的破坏。众所周知,在存在干扰的情况下,普通最小二乘法可能导致系统参数的估计偏差或不一致。偏差问题可以例如通过使用广义最小二乘法来解决。在广义最小二乘法中,使用数字滤波器对观察到的输入输出数据进行滤波。所提出的方法的原理是在所识别的系统的输入上引入传统的广义最小二乘法的滤波器。通过将该滤波器与已知零点一起使用,可以估计和去除普通最小二乘估计器的偏差,该偏差由偏差补偿方法原理组成。拟议的和广义最小二乘法通过蒙特卡洛模拟应用于两个模拟系统。

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