Predicting Downlink Retransmissions in 5G Networks Using Deep Learning

S. Bouk, Babatunji Omoniwa, Sachin Shetty
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Abstract

5G networks are expected to provide high-speed, low-latency, and reliable connectivity to support various applications such as autonomous vehicles, smart cities, and the Internet of Things (IoT). However, the performance of 5G networks can be affected by several factors such as interference, congestion, signal attenuation, or attacks, which can lead to packet loss and retransmissions. Retransmissions in the network may be seen as an essential measure to improve network reliability, but a high retransmission rate may indicate issues that can help network operators mitigate possible service disruptions or threats to network users. A deep learning-based approach has been proposed to predict downlink retransmissions in 5G networks, achieving as much as 5%- 15% improvement over traditional prediction algorithms.
利用深度学习预测 5G 网络中的下行链路重传
5G 网络有望提供高速、低延迟和可靠的连接,以支持自动驾驶汽车、智慧城市和物联网 (IoT) 等各种应用。然而,5G 网络的性能可能会受到干扰、拥塞、信号衰减或攻击等多种因素的影响,从而导致数据包丢失和重传。网络中的重传可能被视为提高网络可靠性的基本措施,但高重传率可能表明存在问题,可帮助网络运营商减轻可能出现的服务中断或对网络用户的威胁。有人提出了一种基于深度学习的方法来预测 5G 网络中的下行链路重传,与传统预测算法相比,该方法可实现 5%-15%的改进。
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