基于决策树的5G通信可靠性无线电链路故障预测

Nethraa Sivakumar, Pooja Srinivasan, Nikhil Viswanath, Venkateswaran N
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引用次数: 1

摘要

稳定、高质量的互联网连接是5G移动网络的必备条件。由于天气、风、自然或人为环境等环境条件的意外变化,可能导致网络中断,其影响相当严重。以低成本预测这些不良事件可以提高5G通信的可靠性,增加网络容量,并降低延迟。本研究利用新颖的预处理和特征工程技术,然后采用训练决策树模型来预测无线电链路故障的发生。该系统不仅可以预测第二天的RLF,还可以预测未来5天的RLF。这一预测支持了对良好互联网连接的依赖和日益增长的需求。为了实现准确的RLF预测,采用了综合数据,并进行了预处理。为了考虑周围天气状况对无线电链路的影响,建议的系统利用过去的信息,即以前的rlf,以及未来的信息,即无线电链路站周围气象站的天气预报。结合特征工程对决策树模型进行训练。预测次日和5天RLF的宏观平均f1评分分别为70%和77%。结果表明,在管道中加入特征工程后,性能有所提高。此外,本文还引入了一个附加度量g均值。由于数据集中的高度不平衡,该指标被发现提供了更真实的结果表示。次日RLF预测和5天RLF预测的G-Mean评分分别为98.69%和92.89%。
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Decision tree-based radio link failure prediction for 5G communication reliability
Stable and high-quality Internet connectivity is mandatory for 5G mobile networks. Network disruption may occur due to unexpected variations in environmental conditions such as weather, wind, and natural or man-made surroundings, and the influence of the defect is quite severe. Prediction of such undesirable events at a low cost can boost 5G communication reliability, massive network capacity, and decreased latency. This research work makes use of novel preprocessing and feature engineering techniques, followed by a trained decision tree model to predict the occurrence of Radio Link Failure (RLF). This system is designed to predict RLF for not just the next day, but also any of the next 5 days. This prediction supports reliance and increasing demand for good Internet connectivity. In order to achieve accurate RLF prediction, comprehensive data has been used which undergoes preprocessing. To account for the influence of surrounding weather conditions on radio links, the proposed system makes use of information from the past i.e., previous RLFs, and the information from the future i.e., the weather forecast from the weather station around the radio link station. The decision tree model was trained with the integration of feature engineering. A macro-averaged F1-score of 70% and 77% were obtained for RLF prediction for the next day and RLF prediction for the next 5 days, respectively. The results show improvement in performance after the incorporation of feature engineering in the pipeline. Further, an additional metric termed G-Mean is introduced in the paper. Owing to the high imbalance in the dataset, this metric was found to provide a more realistic representation of the results. The G-Mean score was found to be 98.69% and 92.89% for RLF prediction for the next day and RLF prediction for the next 5 days, respectively.
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