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首页> 外文期刊>IEEE Transactions on Signal Processing >New approaches without postprocessing to FIR system identification using selected order cumulants
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New approaches without postprocessing to FIR system identification using selected order cumulants

机译:使用选定订单累积量无需对FIR系统识别进行后处理的新方法

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摘要

In this paper, we address the problem of identifying the parameters of the nonminimum-phase FIR system from the cumulants of noisy output samples. The system is driven by an unobservable, zero-mean, independent and identically distributed (i.i.d) non-Gaussian signal. The measurement noise may be white Gaussian, colored MA, ARMA Gaussian processes, or even real. For this problem, two novel methods are proposed. The methods are designed by using higher order cumulants with the following advantages. (i) Flexibility: method 1 employs two arbitrary adjacent order cumulants of output, whereas method 2 uses three cumulants of output: two cumulants with arbitrary orders and the other one with an order equal to the summation of the two orders minus one. Because of this flexibility, we can select cumulants with appropriate orders to accommodate different applications. (ii) Linearity: both the formulations in method 1 and method 2 are linear with respect to the unknowns, unlike the existing cumulant-based algorithms. The post-processing is thus avoided. Extensive experiments with ARMA Gaussian and three real noises show that the new algorithms, especially algorithm 1, perform the FIR system identification with higher efficiency and better accuracy as compared with the related algorithms in the literature.
机译:在本文中,我们解决了从有噪输出样本的累积量中识别非最小相位FIR系统参数的问题。该系统由不可观测,零均值,独立且分布均匀的(i.d.d)非高斯信号驱动。测量噪声可能是白色高斯,彩色MA,ARMA高斯过程,甚至是真实的。针对此问题,提出了两种新颖的方法。通过使用具有以下优点的高阶累积量来设计这些方法。 (i)灵活性:方法1使用了两个任意相邻的输出累积量,而方法2使用了三个输出的累积量:两个具有任意顺序的累积量,而另一个则具有等于两个阶减一的总和。由于这种灵活性,我们可以选择具有适当顺序的累积量以适应不同的应用程序。 (ii)线性:方法1和方法2中的公式相对于未知数都是线性的,这与现有的基于累积量的算法不同。因此避免了后处理。在ARMA高斯和三种真实噪声的条件下进行的大量实验表明,与文献中的相关算法相比,新算法(尤其是算法1)能够以更高的效率和更高的准确度执行FIR系统识别。

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