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ML performance analysis of the decode-and-forward protocol in cooperative diversity networks

机译:协作分集网络中解码转发协议的ML性能分析

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摘要

We analyze the maximum-likelihood (ML) performance of the decode-and-forward protocol in a cooperative diversity network which consists of a source, a relay, and a destination with a direct path signal, but which is not equipped with cyclicredundancy- check (CRC) codes. In this system, due to a symbol error at the relay, the ML receiver at the destination needs to consider all the possible symbol detection scenarios at the relay as well as at the destination. Therefore, the ML detection metric is given by a linear combination of exponential functions, which prevents the use of the classical minimum Euclidean distance rule. Adopting the max-log approximation, we approximate the ML detection rule which makes the ML performance analysis tractable. In order to facilitate the derivation of decision regions, we simplify the ML detection rule in the two-dimensional real space such that two metric values of two adjacent constellation points are sequentially compared. Then we obtain decision regions in a form without union and intersection. Finally, based on the decision regions, we derive a very accurate closedform BER approximation for M-pulse amplitude modulation (PAM) and M-quadrature amplitude modulation (QAM). The obtained BER expression can serve as the error performance upper-bound of the decode-and-forward protocol in cooperative diversity networks.
机译:我们分析了协作分集网络中解码转发协议的最大似然(ML)性能,该网络由一个源,一个中继和一个具有直接路径信号的目的地组成,但没有配备循环冗余校验(CRC)码。在此系统中,由于中继站的符号错误,目的地的ML接收器需要考虑中继站以及目的地的所有可能的符号检测方案。因此,机器学习检测度量是由指数函数的线性组合给出的,这阻止了使用经典的最小欧几里得距离规则。通过采用最大对数近似,我们近似了机器学习检测规则,这使得机器学习性能分析变得容易。为了促进决策区域的推导,我们简化了二维实空间中的ML检测规则,以便依次比较两个相邻星座点的两个度量值。然后我们以不具有联合和交集的形式获得决策区域。最后,基于决策区域,我们得出了用于M脉冲幅度调制(PAM)和M正交幅度调制(QAM)的非常精确的闭式BER近似。所获得的BER表达式可以用作协作分集网络中解码转发协议的错误性能上限。

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