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Neural Network Equalizer

机译:神经网络均衡器

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摘要

In this paper, we view equalization as a multi-class classification problem and use neural networks to detect binary signals in the presence of noise and interference. In particular, we compare the performance of a recently published training algorithm, a multi-gradient, with that of the conventional back-propagation. Then, we apply a feature extraction to obtain more efficient neural networks. Experiments show that neural network equalizers which view equalization as multi-class problems provide significantly improved performance compared to the conventional LMS algorithm while the decision boundary feature extraction method significantly reduces the complexity of the network.
机译:在本文中,我们将均衡视为一个多类分类问题,并使用神经网络在存在噪声和干扰的情况下检测二进制信号。特别是,我们将最近发布的训练算法(多梯度)与常规反向传播的性能进行了比较。然后,我们应用特征提取以获得更有效的神经网络。实验表明,与传统的LMS算法相比,将均衡视为多类问题的神经网络均衡器可以显着提高性能,而决策边界特征提取方法则可以大大降低网络的复杂度。

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