基于AWGN和衰落信道的训练序列的自适应迭代turbo译码

Fengfan Yang, R. Tafazolli, B. Evans, M. Ye
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引用次数: 0

摘要

我们提出了一种新的自适应迭代turbo译码方法,该方法使用了发送端和接收端都知道分布模式的伪随机训练序列,该序列可以在信道状态变化时自适应地发送给接收端。分支检测器借助训练序列计算每次迭代译码时双臂产生的外在值的条件分布。这些更新后的概率取代了传统的高斯定律,用于在加性高斯白噪声和各种衰落信道上对信息位进行进一步的迭代解码。数值模拟表明,在相同条件下,这种自适应译码方法比传统译码方法有较大的增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New adaptive iterative turbo decoding with a training sequence over AWGN and fading channels
We present a new adaptive approach for iterative turbo decoding using a pseudorandom training sequence with the distribution patterns known by both the transmitter and receiver, which can be adaptively sent to the receiver whenever the channel status changes. The branch detector computes the conditional distributions of extrinsic values produced by both arms at each iterative decoding with the aid of the training sequence. These updated probabilities are obtained instead of the traditional Gaussian law for further iterative decoding of information bits over additive white Gaussian noise and various fading channels. Such an adaptive decoding has considerable gains, investigated by the numerical simulation, over the traditional approach under the same conditions.
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