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首页> 外文期刊>Emerging and Selected Topics in Circuits and Systems, IEEE Journal on >Syndrome-Enabled Unsupervised Learning for Neural Network-Based Polar Decoder and Jointly Optimized Blind Equalizer
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Syndrome-Enabled Unsupervised Learning for Neural Network-Based Polar Decoder and Jointly Optimized Blind Equalizer

机译:基于神经网络的极性解码器和共同优化的盲均衡器,使能无监督的无监督学习

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摘要

Recently, the syndrome loss has been proposed to achieve "unsupervised learning" for neural network-based BCH/LDPC decoders. However, the design approach cannot be applied to polar codes directly and has not been evaluated under varying channels. In this work, we propose two modified syndrome losses to facilitate unsupervised learning in the receiver. Then, we first apply it to a neural network-based belief propagation (BP) polar decoder. With the aid of CRC-enabled syndrome loss, the BP decoder can even outperform conventional supervised learning methods in terms of block error rate. Secondly, we propose a jointly optimized syndrome-enabled blind equalizer, which can avoid the transmission of training sequences and achieve global optimum with 1.3 dB gain over non-blind minimum mean square error (MMSE) equalizer.
机译:最近,已经提出了综合征损失,以实现基于神经网络的BCH / LDPC解码器的“无监督学习”。然而,设计方法不能直接应用于极性代码,并且尚未在不同的信道下进行评估。在这项工作中,我们提出了两种改性综合征损失,以便于接收器中的无监督学习。然后,我们首先将其应用于基于神经网络的信仰传播(BP)极性解码器。借助支持CRC的综合征损失,BP解码器甚至可以在块错误率方面优于传统的监督学习方法。其次,我们提出了一种联合优化的综合征的盲均衡器,可以避免训练序列的传输,并在非盲目最小均方误差(MMSE)均衡器上的1.3 dB增益实现全球最佳。

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