AI-Driven Energy Management Systems for Microgrids: Optimizing Renewable Energy Integration and Load Balancing

The increasing adoption of microgrids, particularly with renewable energy sources, necessitates advanced energy management systems (EMS) that can efficiently handle dynamic power demands and supply fluctuations. This paper proposes an AI-driven EMS model specifically designed for optimizing energy d...

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Main Authors: Bhardwaj Diwakar, M Shalini, Kanmani Jebaseeli S., Jadhav Swati, Alabdeli Haider, Sutar Vasundhara, Senthil Kumar R.
Format: Article
Language:English
Published: EDP Sciences 2024-01-01
Series:E3S Web of Conferences
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Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2024/121/e3sconf_icrera2024_01005.pdf
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author Bhardwaj Diwakar
M Shalini
Kanmani Jebaseeli S.
Jadhav Swati
Alabdeli Haider
Sutar Vasundhara
Senthil Kumar R.
author_facet Bhardwaj Diwakar
M Shalini
Kanmani Jebaseeli S.
Jadhav Swati
Alabdeli Haider
Sutar Vasundhara
Senthil Kumar R.
author_sort Bhardwaj Diwakar
collection DOAJ
description The increasing adoption of microgrids, particularly with renewable energy sources, necessitates advanced energy management systems (EMS) that can efficiently handle dynamic power demands and supply fluctuations. This paper proposes an AI-driven EMS model specifically designed for optimizing energy distribution and load balancing within microgrids. The system leverages machine learning algorithms to predict energy demand and adapt the power allocation in real-time, ensuring efficient integration of renewable resources while maintaining grid stability. A simulation of the proposed system demonstrates significant improvements in energy efficiency and stability when compared to traditional EMS approaches. This research highlights the importance of intelligent systems in achieving sustainable and reliable microgrid operations.
format Article
id doaj-art-f6855aac0c4142ab95d834dc4035f9c6
institution Kabale University
issn 2267-1242
language English
publishDate 2024-01-01
publisher EDP Sciences
record_format Article
series E3S Web of Conferences
spelling doaj-art-f6855aac0c4142ab95d834dc4035f9c62024-11-21T11:32:00ZengEDP SciencesE3S Web of Conferences2267-12422024-01-015910100510.1051/e3sconf/202459101005e3sconf_icrera2024_01005AI-Driven Energy Management Systems for Microgrids: Optimizing Renewable Energy Integration and Load BalancingBhardwaj Diwakar0M Shalini1Kanmani Jebaseeli S.2Jadhav Swati3Alabdeli Haider4Sutar Vasundhara5Senthil Kumar R.6Department of Computer Engineering & Applications, GLA UniversityAssistant Professor,Department of ECE,Prince Shri Venkateshwara Padmavathy Engineering College - 127.,m.shalini_ece@psvpec.inAsst Professor,Department of IT,New Prince Shri Bhavani College of Engineering and Technology kanmani.s@newprinceshribhavani.comDepartment of Computer Engineering,Vishwakarma Institute of TechnologyDepartment of computers Techniques engineering, College of technical engineering, The Islamic University, Najaf, Iraq Department of computers Techniques engineering, College of technical engineering, The Islamic University of Al Diwaniyah, Al Diwaniyah, Iraq Department of computers Techniques engineering, College of technical engineering, The Islamic University of Babylon, Babylon, Iraq haideralabdeli@gmail.comDepartment of Mechanical engineering, Dr. D. Y. Patil Institute of Techology, vasundhara.sutar@dypvp.edu.in Associate Professor, AAA College of Engineering & Technology srisenthil2011@gmail.comThe increasing adoption of microgrids, particularly with renewable energy sources, necessitates advanced energy management systems (EMS) that can efficiently handle dynamic power demands and supply fluctuations. This paper proposes an AI-driven EMS model specifically designed for optimizing energy distribution and load balancing within microgrids. The system leverages machine learning algorithms to predict energy demand and adapt the power allocation in real-time, ensuring efficient integration of renewable resources while maintaining grid stability. A simulation of the proposed system demonstrates significant improvements in energy efficiency and stability when compared to traditional EMS approaches. This research highlights the importance of intelligent systems in achieving sustainable and reliable microgrid operations.https://www.e3s-conferences.org/articles/e3sconf/pdf/2024/121/e3sconf_icrera2024_01005.pdfai-driven emsmicrogridsrenewable energy integrationload balancingmachine learning
spellingShingle Bhardwaj Diwakar
M Shalini
Kanmani Jebaseeli S.
Jadhav Swati
Alabdeli Haider
Sutar Vasundhara
Senthil Kumar R.
AI-Driven Energy Management Systems for Microgrids: Optimizing Renewable Energy Integration and Load Balancing
E3S Web of Conferences
ai-driven ems
microgrids
renewable energy integration
load balancing
machine learning
title AI-Driven Energy Management Systems for Microgrids: Optimizing Renewable Energy Integration and Load Balancing
title_full AI-Driven Energy Management Systems for Microgrids: Optimizing Renewable Energy Integration and Load Balancing
title_fullStr AI-Driven Energy Management Systems for Microgrids: Optimizing Renewable Energy Integration and Load Balancing
title_full_unstemmed AI-Driven Energy Management Systems for Microgrids: Optimizing Renewable Energy Integration and Load Balancing
title_short AI-Driven Energy Management Systems for Microgrids: Optimizing Renewable Energy Integration and Load Balancing
title_sort ai driven energy management systems for microgrids optimizing renewable energy integration and load balancing
topic ai-driven ems
microgrids
renewable energy integration
load balancing
machine learning
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2024/121/e3sconf_icrera2024_01005.pdf
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