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Blind joint identification and equalization of Wiener-Hammerstein communication channels using PARATUCK-2 tensor decomposition

机译:使用PARATUCK-2张量分解的Wiener-Hammerstein通信通道盲联合识别和均衡

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In this paper, we consider the blind joint identification and equalization of Wiener-Hammerstein nonlinear communication channels. By considering a special design of the input signal, we show that output data can be organized into a third-order tensor. We show that the obtained tensor has a PARATUCK-2 representation. We derive new results on uniqueness of the PARATUCK-2 model by considering structural constraints such as Toeplitz and Vander-monde forms for some of its matrix factors. We also constrain the input signal to belong to a finite alphabet. Then an Alternating Least Squares (ALS) algorithm is proposed for estimating the factors of the PARATUCK-2 model and therefore the parameters of the Wiener-Hammerstein channel and the unknown input signal. The performances of the proposed joint identification and equalization method are illustrated by means of simulation results.
机译:在本文中,我们考虑了Wiener-Hammerstein非线性通信信道的盲联合识别和均衡。通过考虑输入信号的特殊设计,我们表明输出数据可以组织成三阶张量。我们显示获得的张量具有PARATUCK-2表示。我们通过考虑结构约束,例如Toeplitz和Vander-monde形式的某些矩阵因素,得出有关PARATUCK-2模型唯一性的新结果。我们还限制输入信号属于有限字母。然后提出了一种交替最小二乘算法(ALS),用于估计PARATUCK-2模型的因素,从而估计Wiener-Hammerstein信道的参数和未知输入信号。仿真结果表明了所提出的联合识别和均衡方法的性能。

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