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Complex-valued B-spline neural network and its application to iterative frequency-domain decision feedback equalization for Hammerstein communication systems

机译:复值B样条神经网络及其在Hammerstein通信系统迭代频域决策反馈均衡中的应用

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Complex-valued (CV) B-spline neural network approach offers a highly effective means for identification and inversion of Hammerstein systems. Compared to its conventional CV polynomial based counterpart, CV B-spline neural network has superior performance in identifying and inverting CV Hammerstein systems, while imposing a similar complexity. In this paper, we review the optimality of CV B-spline neural network approach and demonstrate its excellent approximation capability for a real-world application. More specifically, we develop a CV B-spline neural network based approach for the nonlinear iterative frequency-domain decision feedback equalization (NIFDDFE) of single-carrier Hammerstein channels. Advantages of B-spline neural network approach as compared to polynomial based modeling approach are extensively discussed, and the effectiveness of CV neural network based NIFDDFE is demonstrated in a simulation study.
机译:复值(CV)B样条神经网络方法为Hammerstein系统的识别和反演提供了一种非常有效的方法。与传统的基于CV多项式的对应物相比,CV B样条神经网络在识别和反转CV Hammerstein系统方面具有优越的性能,同时具有类似的复杂性。在本文中,我们回顾了CV B样条神经网络方法的最优性,并证明了其在实际应用中的出色逼近能力。更具体地说,我们为单载波Hammerstein通道的非线性迭代频域决策反馈均衡(NIFDDFE)开发了一种基于CV B样条神经网络的方法。与基于多项式的建模方法相比,B样条神经网络方法的优点得到了广泛讨论,并且在仿真研究中证明了基于CV神经网络的NIFDDFE的有效性。

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