Department of Maritime and Mechanical Engineering, Liverpool John Moores University, Liverpool L3 3AF, UK.
Department of Computer and Information Sciences, Northumbria University, Newcastle upon Tyne NE1 8ST, UK.
Sensors (Basel). 2020 Sep 8;20(18):5107. doi: 10.3390/s20185107.
Internet of things (IoT) systems generate a large volume of data all the time. How to choose and transfer which data are essential for decision-making is a challenge. This is especially important for low-cost and low-power designs, for example Long-Range Wide-Area Network (LoRaWan)-based IoT systems, where data volume and frequency are constrained by the protocols. This paper presents an unsupervised learning approach using Laplacian scores to discover which types of sensors can be reduced, without compromising the decision-making. Here, a type of sensor is a feature. An IoT system is designed and implemented for a plant-monitoring scenario. We have collected data and carried out the Laplacian scores. The analytical results help choose the most important feature. A comparative study has shown that using fewer types of sensors, the accuracy of decision-making remains at a satisfactory level.
物联网 (IoT) 系统一直在生成大量数据。如何选择和传输对决策至关重要的数据是一项挑战。对于低成本和低功耗的设计来说尤其如此,例如基于远程广域网 (LoRaWan) 的物联网系统,其数据量和频率受到协议的限制。本文提出了一种使用拉普拉斯得分的无监督学习方法来发现可以减少哪些类型的传感器,而不会影响决策。这里,一种传感器是一个特征。我们设计并实现了一个用于植物监测场景的物联网系统。我们已经收集了数据并进行了拉普拉斯得分分析。分析结果有助于选择最重要的特征。一项比较研究表明,使用较少类型的传感器,决策的准确性仍保持在令人满意的水平。