Systematic Analysis based on Conflux of Machine Learning and Internet of Things using Bibliometric analysis.

Autor: Chahal, Ayushi, Addula, Santosh Reddy, Jain, Anurag, Gulia, Preeti, Gill, Nasib Singh, V., Bala Dhandayuthapani
Předmět:
Zdroj: Journal of Intelligent Systems & Internet of Things; 2024, Vol. 13 Issue 1, p196-224, 29p
Abstrakt: IoT devices produce a gigantic amount of data and it has grown exponentially in previous years. To get insights from this multi-property data, machine learning has proved its worth across the industry. The present paper provides an overview of the variety of data collected through IoT devices. The conflux of machine learning with IoT is also explained using the bibliometric analysis technique. This paper presents a systematic literature review using bibliometric analysis of the data collected from Scopus and WoS. Academic literature for the last six years is used to explore research insights, patterns, and trends in the field of IoT using machine learning. This study analyses and assesses research for the last six years using machine learning in seven IoT domains like Healthcare, Smart City, Energy systems, Industrial IoT, Security, Climate, and Agriculture. The author’s and country-wise citation analysis is also presented in this study. VOSviewer version 1.6.18 is used to provide a graphical representation of author citation analysis. This study may be quite helpful for researchers and practitioners to develop a blueprint of machine learning techniques in various IoT domains. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index