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A Study on Block-Based Neural Network Equalization in TDMR System With LDPC Coding

机译:LDPC编码的TDMR系统中基于块的神经网络均衡研究

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To achieve a high track density, two-dimensional magnetic recording (TDMR) is combined with shingled magnetic recording (SMR). SMR makes it possible to record 1 bit on a few grains. However, the performance will be remarkably deteriorated by the increased media noise, the inter-track and inter-symbol interference (ITI and ISI). Therefore, the application of effective equalization and error control coding are required. In this paper, we investigate a simple block-based neural network equalizer (NNE) that mitigates the influence of ITI and ISI. We compare the equalization effects of the NNE and a conventional 2-D equalizer with low-density parity-check (LDPC) coding based on a random Voronoi grain media model. Simulation results show the proposed block-based NNE achieves better bit error rate performance than the conventional 2-D linear equalizer followed by the a posteriori probability (APP) detector and a sum-product (SP) decoder. In addition, we find the block-based NNE is sensitive to write errors.
机译:为了实现高磁道密度,将二维磁记录(TDMR)与带盖磁记录(SMR)结合在一起。 SMR可以在一些颗粒上记录1位。但是,由于增加的媒体噪声,磁道间和符号间干扰(ITI和ISI),性能将显着下降。因此,需要应用有效的均衡和差错控制编码。在本文中,我们研究了减轻ITI和ISI影响的简单的基于块的神经网络均衡器(NNE)。我们比较了基于随机Voronoi颗粒介质模型的NNE和具有低密度奇偶校验(LDPC)编码的常规2-D均衡器的均衡效果。仿真结果表明,所提出的基于块的NNE比常规的2-D线性均衡器具有更好的误码率性能,其后是后验概率(APP)检测器和和积(SP)解码器。此外,我们发现基于块的NNE对写入错误敏感。

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