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Scientific Article details

Title Machine learning for internet of things data analysis: a survey
ID_Doc 41574
Authors Mahdavinejad, MS; Rezvan, M; Barekatain, M; Adibi, P; Barnaghi, P; Sheth, AP
Title Machine learning for internet of things data analysis: a survey
Year 2018
Published Digital Communications And Networks, 4, 3
DOI 10.1016/j.dcan.2017.10.002
Abstract Rapid developments in hardware, software, and communication technologies have facilitated the emergence of Internet-connected sensory devices that provide observations and data measurements from the physical world. By 2020, it is estimated that the total number of Internet-connected devices being used will be between 25 and 50 billion. As these numbers grow and technologies become more mature, the volume of data being published will increase. The technology of Internet-connected devices, referred to as Internet of Things (IoT), continues to extend the current Internet by providing connectivity and interactions between the physical and cyber worlds. In addition to an increased volume, the IoT generates big data characterized by its velocity in terms of time and location dependency, with a variety of multiple modalities and varying data quality. Intelligent processing and analysis of this big data are the key to developing smart IoT applications. This article assesses the various machine learning methods that deal with the challenges presented by IoT data by considering smart cities as the main use case. The key contribution of this study is the presentation of a taxonomy of machine learning algorithms explaining how different techniques are applied to the data in order to extract higher level information. The potential and challenges of machine learning for IoT data analytics will also be discussed. A use case of applying a Support Vector Machine (SVM) to Aarhus smart city traffic data is presented for a more detailed exploration.
Author Keywords Machine learning; Internet of Things; Smart data; Smart City
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:000441196900002
WoS Category Telecommunications
Research Area Telecommunications
PDF https://doi.org/10.1016/j.dcan.2017.10.002
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