Department of Computer Science, University of Pisa, Largo B. Pontecorvo 3, 56127 Pisa, Italy.
Sensors (Basel). 2022 Jun 29;22(13):4925. doi: 10.3390/s22134925.
Wireless networks have drastically influenced our lifestyle, changing our workplaces and society. Among the variety of wireless technology, Wi-Fi surely plays a leading role, especially in local area networks. The spread of mobiles and tablets, and more recently, the advent of Internet of Things, have resulted in a multitude of Wi-Fi-enabled devices continuously sending data to the Internet and between each other. At the same time, Machine Learning has proven to be one of the most effective and versatile tools for the analysis of fast streaming data. This systematic review aims at studying the interaction between these technologies and how it has developed throughout their lifetimes. We used Scopus, Web of Science, and IEEE Xplore databases to retrieve paper abstracts and leveraged a topic modeling technique, namely, BERTopic, to analyze the resulting document corpus. After these steps, we inspected the obtained clusters and computed statistics to characterize and interpret the topics they refer to. Our results include both the applications of Wi-Fi sensing and the variety of Machine Learning algorithms used to tackle them. We also report how the Wi-Fi advances have affected sensing applications and the choice of the most suitable Machine Learning models.
无线网络极大地影响了我们的生活方式,改变了我们的工作场所和社会。在各种无线技术中,Wi-Fi 无疑起着主导作用,尤其是在局域网中。移动设备和平板电脑的普及,以及最近物联网的出现,导致大量支持 Wi-Fi 的设备不断将数据发送到互联网和彼此之间。同时,机器学习已被证明是分析快速流媒体数据最有效和最通用的工具之一。本系统评价旨在研究这两种技术之间的相互作用以及它们在整个生命周期中的发展情况。我们使用 Scopus、Web of Science 和 IEEE Xplore 数据库检索论文摘要,并利用主题建模技术(即 BERTopic)来分析生成的文档语料库。完成这些步骤后,我们检查了获得的聚类并计算了统计数据,以对它们所指的主题进行特征描述和解释。我们的研究结果既包括 Wi-Fi 感应的应用,也包括用于解决这些应用的各种机器学习算法。我们还报告了 Wi-Fi 技术的进步如何影响感应应用以及选择最合适的机器学习模型。