基于二元CEO模型的传感器网络迭代联合解码

J. Haghighat, H. Behroozi, D. Plant
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引用次数: 10

摘要

提出了一种用于采集数据的无线传感器网络的迭代联合解码算法,该算法将传感器数据之间的相关性视为全局码,通过将全局解码器与用于对传感器观测值进行编码的纠错码的解码器串联起来进行迭代解码。我们将该算法应用于具有二进制CEO模型的传感器网络,其中传感器观察到远离传感器的单个源的不同噪声版本。这需要使用更强大的纠错码,因此我们应用卷积码(汉明码和单奇偶校验码应用于)。我们使用串联块码的迭代水平-垂直解码的概念来制定所考虑的二进制CEO模型的l值更新规则。仿真结果表明,与单独的译码方案相比,迭代联合译码方案大大降低了误码率,并在噪声水平明显较高的信道中达到了可实现的最小失真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Iterative joint decoding for sensor networks with binary CEO model
An iterative joint decoding algorithm for data gathering wireless sensor networks is proposed in where the correlation between sensorspsila data is considered as a global code and iterative decoding is performed by concatenating the global decoder with the decoder of error correcting code applied to encode sensors observations. We apply this algorithm for sensor networks with binary CEO model where sensors observe different noisy versions of a single source, located away from sensors. This calls for employing more powerful error correcting codes, therefore we apply convolutional codes (Hamming codes and single parity check codes are applied in). We use the concept of iterative horizontal-vertical decoding for concatenated block codes to formulate the update rules for L-values for the considered binary CEO model. Our simulations confirm that the iterative joint decoding scheme substantially decreases the bit error rate compared with the separate decoding scheme, and reaches the minimum achievable distortion for channels with significantly higher noise levels.
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