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Deep Learning-Based Bit Reliability Based Decoding for Non-binary LDPC Codes

机译:基于深度学习的非二进制LDPC代码解码的基于深度学习的比特可靠性

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The bit reliability based (BRB) and weighted bit reliability based (wBRB) algorithms are non-binary low-density parity-check (LDPC) code decoding algorithms with an excellent tradeoff between computational complexity and performance. However, the performance of these algorithms needs further improvement. We apply deep learning to these algorithms. Weights are assigned to each edge of the Tanner graphs of the non-binary LDPC codes in the proposed algorithms. We demonstrate the effectiveness of applying deep learning to the BRB and wBRB algorithms in terms of implementation and performance. The proposed algorithms achieve an approximately 0.3 dB higher bit error rate performance than the original algorithms in the high SNR region. The increase in computational complexity and memory consumption does not significantly change the implementation of the algorithms.
机译:基于比特可靠性(BRB)和加权比特可靠性(WBRB)算法是非二进制低密度奇偶校验(LDPC)代码解码算法,具有计算复杂性和性能之间的优异权衡。 然而,这些算法的性能需要进一步改进。 我们对这些算法进行深入学习。 在所提出的算法中分配给在非二进制LDPC代码的Tanner图的每个边缘的重量。 我们展示了在实施和性能方面对BRB和WBRB算法应用深度学习的有效性。 所提出的算法比高SNR区域中的原始算法达到大约0.3dB的较高误码率性能。 计算复杂性和内存消耗的增加不会显着改变算法的实现。

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