Graph Neural Networks Based Anomalous RSSI Detection

Blaž Bertalanič, Matej Vnučec, C. Fortuna
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Abstract

In today’s world, modern infrastructures are being equipped with information and communication technologies to create large IoT networks. It is essential to monitor these networks to ensure smooth operations by detecting and correcting link failures or abnormal network behaviour proactively, which can otherwise cause interruptions in business operations. This paper presents a novel method for detecting anomalies in wireless links using graph neural networks. The proposed approach involves converting time series data into graphs and training a new graph neural network architecture based on graph attention networks that successfully detects anomalies at the level of individual measurements of the time series data. The model provides competitive results compared to the state of the art while being computationally more efficient with $\approx$171 times fewer trainable parameters.
基于图神经网络的RSSI异常检测
在当今世界,现代基础设施正在配备信息和通信技术,以创建大型物联网网络。监控这些网络至关重要,通过主动检测和纠正链路故障或异常网络行为,以确保顺利运行,否则可能导致业务运营中断。本文提出了一种利用图神经网络检测无线链路异常的新方法。提出的方法包括将时间序列数据转换为图形,并基于图形注意网络训练新的图形神经网络架构,该架构成功地检测到时间序列数据的单个测量水平上的异常。该模型提供了与现有技术相比具有竞争力的结果,同时计算效率更高,可训练参数减少约171倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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