Department of Computer Science and Engineering, Jaypee Institute of Information Technology, Noida 201309, India.
School of Computer Science, University of Petroleum and Energy Studies, Dehradun 248007, India.
Sensors (Basel). 2020 Oct 26;20(21):6076. doi: 10.3390/s20216076.
In the recent era of the Internet of Things, the dominant role of sensors and the Internet provides a solution to a wide variety of real-life problems. Such applications include smart city, smart healthcare systems, smart building, smart transport and smart environment. However, the real-time IoT sensor data include several challenges, such as a deluge of unclean sensor data and a high resource-consumption cost. As such, this paper addresses how to process IoT sensor data, fusion with other data sources, and analyses to produce knowledgeable insight into hidden data patterns for rapid decision-making. This paper addresses the data processing techniques such as data denoising, data outlier detection, missing data imputation and data aggregation. Further, it elaborates on the necessity of data fusion and various data fusion methods such as direct fusion, associated feature extraction, and identity declaration data fusion. This paper also aims to address data analysis integration with emerging technologies, such as cloud computing, fog computing and edge computing, towards various challenges in IoT sensor network and sensor data analysis. In summary, this paper is the first of its kind to present a complete overview of IoT sensor data processing, fusion and analysis techniques.
在当今物联网时代,传感器和互联网的主导作用为各种现实生活问题提供了一种解决方案。此类应用包括智能城市、智能医疗保健系统、智能建筑、智能交通和智能环境。然而,实时物联网传感器数据包含多个挑战,例如大量不洁传感器数据和高资源消耗成本。因此,本文探讨了如何处理物联网传感器数据,与其他数据源融合以及分析,以深入了解隐藏的数据模式,从而实现快速决策。本文探讨了数据处理技术,例如数据降噪、数据异常值检测、缺失数据插补和数据聚合。此外,它还详细说明了数据融合的必要性以及各种数据融合方法,例如直接融合、关联特征提取和身份声明数据融合。本文还旨在探讨与云计算、雾计算和边缘计算等新兴技术的数据分析集成,以应对物联网传感器网络和传感器数据分析中的各种挑战。总之,本文是同类论文中首次全面介绍物联网传感器数据处理、融合和分析技术。