5G cellular systems depend on the timely exchange of feedback control information between the user equipment and the base station. Proper decoding of this control information is necessary to set up and sustain high throughput radio links. This paper makes the first attempt at using Machine Learning techniques to improve the decoding performance of the Physical Uplink Control Channel Format 0. We use fully connected neural networks to classify the received samples based on the uplink control information content embedded within them. The trained neural network, tested on real-time wireless captures, shows significant improvement in accuracy over conventional DFT-based decoders, even at low SNR. The obtained accuracy results also demonstrate conformance with 3GPP requirements.
翻译:5G蜂窝系统取决于用户设备和基地站之间及时交换反馈控制信息。对这种控制信息进行适当解码对于建立和维持高输送量无线电连接是必要的。本文件首次尝试使用机器学习技术来改进物理上链控制频道0格式的解码性能。我们利用完全连接的神经网络根据内嵌的上链控制信息内容对收到的样本进行分类。经过实时无线捕捉测试的经过培训的神经网络显示,即使在低国家情报局,对常规的DFT开关器的准确性也有显著提高。获得的准确性结果也表明符合3GPP的要求。