Department of Informatics and Telematics, Harokopio University of Athens, 17778 Tavros, Greece.
Department of Software and IT Engineering, École de Technologie Supérieure, Montreal, QC H3C 1K3, Canada.
Sensors (Basel). 2023 Jan 24;23(3):1328. doi: 10.3390/s23031328.
The demands for a large number of sensors increase as the proliferation of Internet of Things (IoT) and smart cities applications are continuing at a rapid pace. This also increases the cost of the infrastructure and the installation and maintenance overhead and creates significant performance degradation in the end-to-end communication, monitoring, and orchestration of the various connected devices. In order to solve the problem of increasing sensor demands, this paper suggests replacing physical sensors with machine learning (ML) models. These software-based artificial intelligence models are called virtual sensors. Extensive research and simulation comparisons between fourteen ML models provide a solid ground decision when it comes to the selection of the most accurate model to replace physical sensors, such as temperature and humidity sensors. In this problem at hand, the virtual and physical sensors are designed to be scattered in a smart home, while being connected and run on the same IoT platform. Thus, this paper also introduces a custom lightweight IoT platform that runs on a Raspberry Pi equipped with physical temperature and humidity sensors, which may also execute the virtual sensors. The evaluation results of the devised virtual sensors in a smart home scenario are promising and corroborate the applicability of the proposed methodology.
随着物联网 (IoT) 和智慧城市应用的迅速普及,对大量传感器的需求不断增加。这也增加了基础设施的成本以及安装和维护开销,并在各种连接设备的端到端通信、监控和协调方面造成了显著的性能下降。为了解决传感器需求不断增加的问题,本文建议用机器学习 (ML) 模型来替代物理传感器。这些基于软件的人工智能模型被称为虚拟传感器。对 14 种 ML 模型进行了广泛的研究和仿真比较,为选择最准确的模型来替代物理传感器(如温度和湿度传感器)提供了可靠的决策依据。在这个问题中,虚拟和物理传感器被设计为分散在智能家居中,同时连接并在同一个物联网平台上运行。因此,本文还介绍了一个自定义的轻量级物联网平台,它在配备物理温度和湿度传感器的 Raspberry Pi 上运行,也可以执行虚拟传感器。在智能家居场景中对设计的虚拟传感器的评估结果很有前景,证实了所提出方法的适用性。