Smart City Gnosys

Smart city article details

Title Machine Learning Applications: The Past And Current Research Trend In Diverse Industries
ID_Doc 35901
Authors Sianaki O.A.; Yousefi A.; Tabesh A.R.; Mahdavi M.
Year 2019
Published Inventions, 4, 1
DOI http://dx.doi.org/10.3390/inventions4010008
Abstract Dramatic changes in the way we collect and process data has facilitated the emergence of a new era by providing customised services and products precisely based on the needs of clients according to processed big data. It is estimated that the number of connected devices to the internet will pass 35 billion by 2020. Further, there has also been a massive escalation in the amount of data collection tools as Internet of Things devices generate data which has big data characteristics known as five V (volume, velocity, variety, variability and value). This article reviews challenges, opportunities and research trends to address the issues related to the data era in three industries including smart cities, healthcare and transportation. All three of these industries could greatly benefit from machine learning and deep learning techniques on big data collected by the Internet of Things, which is named as the internet of everything to emphasise the role of connected devices for data collection. In the smart grid portion of this paper, the recently developed deep reinforcement learning techniques and their applications in Smart Cities are also presented and reviewed. © 2019 by the authors. Licensee MDPI, Basel, Switzerland.
Author Keywords Healthcare; IoT; Machine learning; Smart cities; Smart grid; Supply chain management


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