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Addressing the CQI feedback delay in 5G/6G networks via machine learning and evolutionary computing

机译:通过机器学习和演进计算解决5G/6G网络中的CQI反馈延迟问题

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5G networks apply adaptive modulation and coding according to the channel condition reported by the user in order to keep the mobile communication quality. However, the delay incurred by the feedback may make the channel quality indicator (CQI) obsolete. This paper addresses this issue by proposing two approaches, one based on machine learning and another on evolutionary computing, which considers the user context and signal-to-interference-plus-noise ratio (SINR) besides the delay length to estimate the updated SINR to be mapped into a CQI value. Our proposals are designed to run at the user equipment (UE) side, neither requiring any change in the signalling between the base station (gNB) and UE nor overloading the gNB. They are evaluated in terms of mean squared error by adopting 5G network simulation data and the results show their high accuracy and feasibility to be employed in 5G/6G systems.
机译:5 g网络应用自适应调制和编码根据信道状况报告用户为了保持移动通信质量。产生的反馈可能使英吉利海峡医院药学部质量指标()过时了。提出了两种方法解决了这个问题,一个基于机器学习和另一个进化计算,考虑了用户上下文和signal-to-interference-plus-noise比(SINR)除了延迟长度来估计更新的SINR医院药学部映射到一个值。我们的提议是为了在用户运行设备(问题),既不需要任何改变在基站之间的信号(gNB)和问题,也没有gNB超载。评估的均方误差采用5 g网络仿真数据和结果表明高准确性和可行性从事5 g / 6 g系统。

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