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Bayesian Link Adaptation under a BLER Target

机译:BLER目标下的贝叶斯链路自适应

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The optimal modulation and coding scheme (MCS) for wireless transmission depends on the dynamic wireless channel state. Hence, wireless link adaptation relies on periodically reported channel quality index (CQI) values to select the optimal MCS for each transmission instance. However, to optimize link performance for a given wireless environment, current link adaptation techniques rely on tuning parameters such as a block error rate (BLER) target and algorithm adjustments that are difficult to optimize heuristically. Here, we propose BayesLA, a Bayesian link adaptation scheme that does not require careful parameter tuning for optimal link performance in diverse wireless environments. BayesLA, which is inspired by the Thompson Sampling approach widely used for online learning, efficiently learns the MCS success probabilities conditioned on the reported CQI values. Through numerical simulations for a Rayleigh fading wireless channel and a typical cellular link configuration, we demonstrate that BayesLA outperforms state-of-the-art outer loop link adaptation (OLLA) approach in terms of the realized link throughput for a given BLER target.
机译:用于无线传输的最佳调制和编码方案(MCS)取决于动态无线信道状态。因此,无线链路自适应依赖于周期性报告的信道质量指标(CQI)值来为每个传输实例选择最佳MCS。然而,为了针对给定的无线环境优化链路性能,当前的链路自适应技术依赖于调整参数,例如块错误率(BLER)目标和难以通过启发式优化的算法调整。在这里,我们提出BayesLA,这是一种贝叶斯链路自适应方案,该方案不需要进行仔细的参数调整即可在各种无线环境中实现最佳链路性能。受广泛用于在线学习的汤普森采样方法的启发,BayesLA有效地学习了基于报告的CQI值的MCS成功概率。通过对瑞利衰落无线信道和典型蜂窝链路配置的数值模拟,我们证明了就给定的BLER目标而言,BayesLA的性能优于现有的外环链路自适应(OLLA)方法。

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