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首页> 外文期刊>IEEE Transactions on Communications >A Bayesian Algorithm for Joint Symbol Timing Synchronization and Channel Estimation in Two-Way Relay Networks
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A Bayesian Algorithm for Joint Symbol Timing Synchronization and Channel Estimation in Two-Way Relay Networks

机译:双向中继网络中联合符号定时同步和信道估计的贝叶斯算法

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This work investigates joint estimation of symbol timing synchronization and channel response in two-way relay networks (TWRN) that utilize amplify-and-forward (AF) relay strategy. With unknown relay channel gains and unknown timing offset, the optimum maximum likelihood (ML) algorithm for joint timing recovery and channel estimation can be overly complex. We develop a new Bayesian based Markov chain Monte Carlo (MCMC) algorithm in order to facilitate joint symbol timing recovery and effective channel estimation. In particular, we present a basic Metropolis-Hastings algorithm (BMH) and a Metropolis-Hastings-ML (MH-ML) algorithm for this purpose. We also derive the Cramer-Rao lower bound (CRLB) to establish a performance benchmark. Our test results of ML, BMH, and MH-ML estimation illustrate near-optimum performance in terms of mean-square errors (MSE) and estimation bias. We further present bit error rate (BER) performance results.
机译:这项工作研究了使用放大转发(AF)中继策略的双向中继网络(TWRN)中符号定时同步和信道响应的联合估计。在未知的中继信道增益和未知的定时偏移的情况下,用于联合定时恢复和信道估计的最佳最大似然(ML)算法可能过于复杂。我们开发了一种新的基于贝叶斯的马尔可夫链蒙特卡洛(MCMC)算法,以促进联合符号定时恢复和有效的信道估计。特别是,我们为此提出了一种基本的Metropolis-Hastings算法(BMH)和Metropolis-Hastings-ML(MH-ML)算法。我们还导出了Cramer-Rao下限(CRLB)以建立性能基准。我们的ML,BMH和MH-ML估计的测试结果从均方误差(MSE)和估计偏差的角度说明了近乎最佳的性能。我们进一步介绍了误码率(BER)性能结果。

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