Artificial Neural Network-Based Hybrid Model for Efficient Battery Management

The utilization of renewable energy is increasing due to environmental pollution. Power transmission to a remote location is also challenging. In this research work, a hybrid standalone power generation framework has been developed, which effectively utilizes the concept of renewable-based power gen...

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Veröffentlicht in:National Academy science letters 2023-04, Vol.46 (2), p.109-112
Hauptverfasser: Chandran, Benin Pratap, Selvakumar, A. Immanuel, Sathiyan, S. Paul, Gunamony, Shine Let
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container_end_page 112
container_issue 2
container_start_page 109
container_title National Academy science letters
container_volume 46
creator Chandran, Benin Pratap
Selvakumar, A. Immanuel
Sathiyan, S. Paul
Gunamony, Shine Let
description The utilization of renewable energy is increasing due to environmental pollution. Power transmission to a remote location is also challenging. In this research work, a hybrid standalone power generation framework has been developed, which effectively utilizes the concept of renewable-based power generation and energy storage system for a real-time scenario. A detailed modeling approach for the power generation sources like solar PV and fuel cells along with the battery-based energy storage system has been carried out to develop an efficient artificial neural network (ANN)-based hybrid energy management system. The performance of the ANN was evaluated using the following performance metrics mean-squared error = 0.0461, root-mean-squared error = 0.2148, normalized root-mean-squared error = 0.043, and R -value > 0.99. The system is designed to operate the battery within safe operating limits. For the proposed energy management system, six modes of operation are considered. The system has been developed in MATLAB/Simulink environment and tested for a real-world scenario. With the proposed control architecture, the system performance is found better in terms of reducing the electricity cost by utilizing renewable sources efficiently.
doi_str_mv 10.1007/s40009-022-01200-z
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subjects Artificial neural networks
Electricity distribution
Energy management
Energy storage
Errors
Fuel cells
Fuel technology
History of Science
Humanities and Social Sciences
Hybrid systems
multidisciplinary
Neural networks
Performance measurement
Photovoltaic cells
Power management
Renewable energy
Science
Science (multidisciplinary)
Short Communication
title Artificial Neural Network-Based Hybrid Model for Efficient Battery Management
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