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A new and fast correntropy-based method for system identification with exemplifications in low-SNR communications regime

机译:基于新的基于基于的基于基于的系统识别方法,具有低SNR通信制度的示例

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One of the most significant issues in machine learning is system identification with many applications, e.g., channel estimation (CE) in digital communications. Introducing a new correntropy-based method, this paper deals with the comparison between mean square error (MSE) and information theoretic measures in non-Gaussian noise channel estimation, by analyzing the MSE, minimum error entropy (MEE) and correntropy algorithms in several channel models utilizing neural networks. The first contribution of this paper is introducing a new correntropy-based conjugate gradient (CCG) method and applying it in the CE problem, which this new algorithm converges faster than standard maximum correntropy criterion algorithm. Aiming at this contribution, the better convergence rate is discussed analytically and it is proved that the CCG could converge to the optimal solution quadratically. Next, the performance of an extended MSE algorithm is compared with information theoretic criteria; in addition, a comparison between MEE and correntropy-based algorithm is presented. The Monte Carlo results illustrate that correntropy and MEE outperform MSE algorithm in low-SNR communications especially in the presence of impulsive noise. Then, we apply the trained neural networks in the receiver as an equalizer to obtain the intended performance for different SNR values.
机译:机器学习中最重要的问题之一是具有许多应用的系统识别,例如数字通信中的信道估计(CE)。本文介绍了一种新的基于正规化的方法,通过分析了几个频道中的MSE,最小误差熵(MEE)和校正算法之间的均线误差(MSE)和信息理论措施之间的比较。利用神经网络的模型。本文的第一种贡献正在引入一种新的基于正常的共轭梯度(CCG)方法并将其应用于CE问题,该新算法会收敛于标准最大正控性标准算法的速度。针对这一贡献,分析讨论了更好的收敛速率,证明CCG可以二次地将其融合到最佳解决方案。接下来,将扩展MSE算法的性能与信息理论标准进行比较;此外,提出了基于MEE和基于校正的算法的比较。 Monte Carlo结果说明了低SNR通信中的正常性和MEE优于MSE算法,特别是在存在冲动的噪声。然后,我们将训练的神经网络应用于接收器中作为均衡器以获得不同的SNR值的预期性能。

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