Big Data and Machine Learning-Based Iot Models for Sustainable Energy Prediction

Authors

  • Sravani Parvathareddy New Era College of Arts Science and Technology, Botswana
  • Vinitha Kanakambaran New Era College of Arts Science and Technology, Botswana

Keywords:

Energy management, Big Data, Internet of Things (IoT), Energy Management System (HEMS), Machine learning, Renewable energy and Sustainability

Abstract

Integrating Big Data and Internet of Things (IoT) platforms is the focus of this research, which aims to improve energy management. The problem statement is centered on the potential for development through advanced technologies and the inefficiencies in traditional energy management methods. The objectives are to analyze energy consumption patterns, develop an innovative Home Energy Management System (HEMS) architecture, and offer energy-saving solutions. Synthetic energy consumption data is generated, normalized, and divided into training
and testing sets from a methodological perspective. K-nearest neighbors, Decision Trees, Support Vector Regression, and Random Forest are the machine learning models trained and evaluated. The Random Forest model outperforms other models in terms of the accuracy of its predictions of energy consumption. The integration of renewable energy sources with cutting-edge technology to revolutionize energy management practices is the essence of novelty. In conclusion, this investigation underscores the importance of utilizing advanced technologies to promote sustainable energy management, providing practitioners and policymakers with practical insights.

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Published

2024-11-12

How to Cite

Parvathareddy, S., & Kanakambaran, V. (2024). Big Data and Machine Learning-Based Iot Models for Sustainable Energy Prediction. Journal of Innovation and Technology, 2024. Retrieved from https://iuojs.intimal.edu.my/index.php/joit/article/view/566