A Novel on Energy Management Strategy with Maximum Exploitation of Renewables and EV Storage in Distribution Networks

Electric vehicles (EVs) are widely recognized for their environmentally friendly attributes and superior performance. They offer considerable potential for managing energy in low-voltage distribution networks through the use of vehicle-to-grid (V2G) and grid-to-vehicle (G2V) technologies. This artic...

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Main Authors: K. Ramakrishna Reddy, C. H. Hussaian Basha, V. Prashanth, C. Dhanamjayulu, Sujata Shivashimpiger, R. Likhitha
Format: Article
Language:English
Published: Wiley 2023-01-01
Series:International Transactions on Electrical Energy Systems
Online Access:http://dx.doi.org/10.1155/2023/1365608
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author K. Ramakrishna Reddy
C. H. Hussaian Basha
V. Prashanth
C. Dhanamjayulu
Sujata Shivashimpiger
R. Likhitha
author_facet K. Ramakrishna Reddy
C. H. Hussaian Basha
V. Prashanth
C. Dhanamjayulu
Sujata Shivashimpiger
R. Likhitha
author_sort K. Ramakrishna Reddy
collection DOAJ
description Electric vehicles (EVs) are widely recognized for their environmentally friendly attributes and superior performance. They offer considerable potential for managing energy in low-voltage distribution networks through the use of vehicle-to-grid (V2G) and grid-to-vehicle (G2V) technologies. This article provides a detailed investigation into the management of energy in distribution networks using a combination of EVs, solar photovoltaic (PV), and diesel generators (DG). The water filling algorithm (WFA) is utilized to distribute the storage of EVs in each energy zone in an optimal manner, thereby achieving load flattening, minimizing energy costs, and reducing grid reliance. A multiobjective genetic algorithm (MOGA) is employed to solve a formulated multiobjective optimization problem for load flattening and voltage regulation, with optimal power transaction (OPT) serving as the decision variable. An adaptive neuro-fuzzy inference system (ANFIS) based EV ranking technique is employed to prioritize EVs based on their ability to provide the required services and determine optimal energy distribution (OED) for different scenarios. This study investigates the impact of OED in several scenarios and examines the influence of ANFIS prioritization on overall EV power availability and cost of charging (CoC). The findings of this study are crucial for developing effective energy management strategies that minimize energy costs and reduce grid reliance.
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series International Transactions on Electrical Energy Systems
spelling doaj-art-66bcac5b927f4187ab8201a2c5f8811a2025-02-03T05:44:35ZengWileyInternational Transactions on Electrical Energy Systems2050-70382023-01-01202310.1155/2023/1365608A Novel on Energy Management Strategy with Maximum Exploitation of Renewables and EV Storage in Distribution NetworksK. Ramakrishna Reddy0C. H. Hussaian Basha1V. Prashanth2C. Dhanamjayulu3Sujata Shivashimpiger4R. Likhitha5EV R&D LaboratoryEV R&D LaboratoryEV R&D LaboratorySchool of Electrical EngineeringEV R&D LaboratoryEV R&D LaboratoryElectric vehicles (EVs) are widely recognized for their environmentally friendly attributes and superior performance. They offer considerable potential for managing energy in low-voltage distribution networks through the use of vehicle-to-grid (V2G) and grid-to-vehicle (G2V) technologies. This article provides a detailed investigation into the management of energy in distribution networks using a combination of EVs, solar photovoltaic (PV), and diesel generators (DG). The water filling algorithm (WFA) is utilized to distribute the storage of EVs in each energy zone in an optimal manner, thereby achieving load flattening, minimizing energy costs, and reducing grid reliance. A multiobjective genetic algorithm (MOGA) is employed to solve a formulated multiobjective optimization problem for load flattening and voltage regulation, with optimal power transaction (OPT) serving as the decision variable. An adaptive neuro-fuzzy inference system (ANFIS) based EV ranking technique is employed to prioritize EVs based on their ability to provide the required services and determine optimal energy distribution (OED) for different scenarios. This study investigates the impact of OED in several scenarios and examines the influence of ANFIS prioritization on overall EV power availability and cost of charging (CoC). The findings of this study are crucial for developing effective energy management strategies that minimize energy costs and reduce grid reliance.http://dx.doi.org/10.1155/2023/1365608
spellingShingle K. Ramakrishna Reddy
C. H. Hussaian Basha
V. Prashanth
C. Dhanamjayulu
Sujata Shivashimpiger
R. Likhitha
A Novel on Energy Management Strategy with Maximum Exploitation of Renewables and EV Storage in Distribution Networks
International Transactions on Electrical Energy Systems
title A Novel on Energy Management Strategy with Maximum Exploitation of Renewables and EV Storage in Distribution Networks
title_full A Novel on Energy Management Strategy with Maximum Exploitation of Renewables and EV Storage in Distribution Networks
title_fullStr A Novel on Energy Management Strategy with Maximum Exploitation of Renewables and EV Storage in Distribution Networks
title_full_unstemmed A Novel on Energy Management Strategy with Maximum Exploitation of Renewables and EV Storage in Distribution Networks
title_short A Novel on Energy Management Strategy with Maximum Exploitation of Renewables and EV Storage in Distribution Networks
title_sort novel on energy management strategy with maximum exploitation of renewables and ev storage in distribution networks
url http://dx.doi.org/10.1155/2023/1365608
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