Integrating AI and Multi-objective Optimization for Enhanced Microgrid Energy Management Using Quadratic Programming

Using the AI approaches and the quadratic programming driven multiobjective optimisation, this paper proposes a universal framework for smart microgrid energy management. It considers its operational preconditions such as the loads demand and the renewable power source availability in order to reduc...

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Main Authors: Agrawal Priyanka, Thethi H. Pal, Mohammad Q., Gupta Navya, Asha V., Reddy K. Jyothsna
Format: Article
Language:English
Published: EDP Sciences 2025-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2025/16/e3sconf_icregcsd2025_02007.pdf
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author Agrawal Priyanka
Thethi H. Pal
Mohammad Q.
Gupta Navya
Asha V.
Reddy K. Jyothsna
author_facet Agrawal Priyanka
Thethi H. Pal
Mohammad Q.
Gupta Navya
Asha V.
Reddy K. Jyothsna
author_sort Agrawal Priyanka
collection DOAJ
description Using the AI approaches and the quadratic programming driven multiobjective optimisation, this paper proposes a universal framework for smart microgrid energy management. It considers its operational preconditions such as the loads demand and the renewable power source availability in order to reduce the microgrid operational cost and emission. An artificial neural network constructed models the predicted loads requirement, one-hours wind power output and solar generation for 24 hours. The simulated machine learning possesses good generalisation capacity and an excellent learning structure. Managing batteries or auxiliary devices in order to maximise microgrid operating efficiency runs counter to the traditional optimisation laws. This study used fuzzy logic advisor network to schedule the battery. Both the fuzzy environment of the microgrid operation as a whole and the uncertainty among the predicted parameters are manageable in the suggested solution. In comparison with microgrid energy management methods acquired from the literature, namely opportunity recharging and inductive schematic alternating battery management, the experimental results yield significant operational cost and emission reduction.
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id doaj-art-975ccf0348b54b9a87e48a4808ed6c16
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issn 2267-1242
language English
publishDate 2025-01-01
publisher EDP Sciences
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series E3S Web of Conferences
spelling doaj-art-975ccf0348b54b9a87e48a4808ed6c162025-08-20T03:02:18ZengEDP SciencesE3S Web of Conferences2267-12422025-01-016160200710.1051/e3sconf/202561602007e3sconf_icregcsd2025_02007Integrating AI and Multi-objective Optimization for Enhanced Microgrid Energy Management Using Quadratic ProgrammingAgrawal Priyanka0Thethi H. Pal1Mohammad Q.2Gupta Navya3Asha V.4Reddy K. Jyothsna5Department of Electrical & Electronics Engineering, IILM UniversityLovely Professional UniversityHilla University CollegeLloyd Law CollegeMaster of Computer Application, New Horizon College of EngineeringDepartment of CSE-AI&ML, MLR Institute of TechnologyUsing the AI approaches and the quadratic programming driven multiobjective optimisation, this paper proposes a universal framework for smart microgrid energy management. It considers its operational preconditions such as the loads demand and the renewable power source availability in order to reduce the microgrid operational cost and emission. An artificial neural network constructed models the predicted loads requirement, one-hours wind power output and solar generation for 24 hours. The simulated machine learning possesses good generalisation capacity and an excellent learning structure. Managing batteries or auxiliary devices in order to maximise microgrid operating efficiency runs counter to the traditional optimisation laws. This study used fuzzy logic advisor network to schedule the battery. Both the fuzzy environment of the microgrid operation as a whole and the uncertainty among the predicted parameters are manageable in the suggested solution. In comparison with microgrid energy management methods acquired from the literature, namely opportunity recharging and inductive schematic alternating battery management, the experimental results yield significant operational cost and emission reduction.https://www.e3s-conferences.org/articles/e3sconf/pdf/2025/16/e3sconf_icregcsd2025_02007.pdf
spellingShingle Agrawal Priyanka
Thethi H. Pal
Mohammad Q.
Gupta Navya
Asha V.
Reddy K. Jyothsna
Integrating AI and Multi-objective Optimization for Enhanced Microgrid Energy Management Using Quadratic Programming
E3S Web of Conferences
title Integrating AI and Multi-objective Optimization for Enhanced Microgrid Energy Management Using Quadratic Programming
title_full Integrating AI and Multi-objective Optimization for Enhanced Microgrid Energy Management Using Quadratic Programming
title_fullStr Integrating AI and Multi-objective Optimization for Enhanced Microgrid Energy Management Using Quadratic Programming
title_full_unstemmed Integrating AI and Multi-objective Optimization for Enhanced Microgrid Energy Management Using Quadratic Programming
title_short Integrating AI and Multi-objective Optimization for Enhanced Microgrid Energy Management Using Quadratic Programming
title_sort integrating ai and multi objective optimization for enhanced microgrid energy management using quadratic programming
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2025/16/e3sconf_icregcsd2025_02007.pdf
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