IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

An Efficient Machine Learning-Based Cluster Analysis Mechanism for IoT Data

An Efficient Machine Learning-Based Cluster Analysis Mechanism for IoT Data
View Sample PDF
Author(s): Sivadi Balakrishna (Vignan's Foundation for Science, Technology and Research, India)
Copyright: 2023
Volume: 7
Issue: 1
Pages: 14
Source title: International Journal of Hyperconnectivity and the Internet of Things (IJHIoT)
Editor(s)-in-Chief: Vijender Kr. Solanki (CMR Institute of Technology (Autonomous), India)
DOI: 10.4018/IJHIoT.330680

Purchase

View An Efficient Machine Learning-Based Cluster Analysis Mechanism for IoT Data on the publisher's website for pricing and purchasing information.

Abstract

The prevailing developments in internet of things (IoT) and other sensor technologies such as cyber physical systems (CPS) and wireless sensor networks (WSNs), the huge amount of sensor data has been generating from various IoT devices and protocols. Making predictions and finding density patterns over such data is a challenging task. In order to find the density patterns and make analysis over real-time dynamic data, the machine learning (ML) based algorithms are widely used to deal with the IoT data. In this article, the authors proposed an efficient ML-based cluster analysis mechanism for finding density patterns in IoT dynamic data effectively. In this proposed mechanism, the k-means and GMM models are used for clustering data analysis. The proposed mechanism has been implemented on ThingSpeak Cloud platform for analysing the data efficiently on daily and weekly basis. Finally, the proposed mechanism acquired superior results than the existing benchmarked mechanisms over all the performance evaluation metrics used for analysis over IoT dynamic data.

Related Content

Sudhir K. Routray, Sasmita Mohanty. © 2024. 13 pages.
Vandana Rao Emaneni, P. Dayananda, Amrutha G. Upadhya, B.G. Nayana, Priyam Poddar. © 2024. 14 pages.
M'Kaila J. Clark, Lila Rajabion. © 2023. 18 pages.
. © 2023.
Sivadi Balakrishna. © 2023. 14 pages.
. © 2022.
Zine El Abidine Bouneb, Djamel Eddine Saidouni. © 2022. 18 pages.
Body Bottom