Predictive energy management strategy in PV/ESS/DIESEL system for battery degradation reduction using artificial neural network.

Renewable Energy Sources (RES) power generation has increasingly evolved as RES power technology and becoming a valuable substitute for traditional power generation. Energy storage system (ESS), with its flexible charging and discharging features, is most typically utilized to collaborate with RES p...

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Main Authors: M. Saud, Muhammad Noor, Md. Rasid, Madihah, Md. Sapari, Noorazliani, Syed Nasir, Syed Norazizul
Format: Conference or Workshop Item
Published: 2023
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Online Access:http://eprints.utm.my/107921/
http://dx.doi.org/10.1109/ISWTA58588.2023.10249913
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spelling my.utm.1079212024-10-13T09:17:34Z http://eprints.utm.my/107921/ Predictive energy management strategy in PV/ESS/DIESEL system for battery degradation reduction using artificial neural network. M. Saud, Muhammad Noor Md. Rasid, Madihah Md. Sapari, Noorazliani Syed Nasir, Syed Norazizul TK Electrical engineering. Electronics Nuclear engineering Renewable Energy Sources (RES) power generation has increasingly evolved as RES power technology and becoming a valuable substitute for traditional power generation. Energy storage system (ESS), with its flexible charging and discharging features, is most typically utilized to collaborate with RES power generation to efficiently stabilize the process of connecting to the grid and improve power controllability due to variable RES power output. However, the high charging and discharging rate of ESS can lead ESS to degrade faster and shorten the lifetime than it should. Therefore, predictive EMS is introduced in this study. The predicted capacity fading of the ESS is utilized in the EMS to optimize the schedule of ESS operation. The ANN algorithm is implemented to forecast the data. The result shows that the degradation and degradation cost achieved 0.01% and 18.39% reduction with the proposed method. 2023-08 Conference or Workshop Item PeerReviewed M. Saud, Muhammad Noor and Md. Rasid, Madihah and Md. Sapari, Noorazliani and Syed Nasir, Syed Norazizul (2023) Predictive energy management strategy in PV/ESS/DIESEL system for battery degradation reduction using artificial neural network. In: 2023 IEEE Symposium on Wireless Technology and Applications, ISWTA 2023, 15 August 2023 - 16 August 2023, Kuala Lumpur, Malaysia - Hybrid. http://dx.doi.org/10.1109/ISWTA58588.2023.10249913
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic TK Electrical engineering. Electronics Nuclear engineering
spellingShingle TK Electrical engineering. Electronics Nuclear engineering
M. Saud, Muhammad Noor
Md. Rasid, Madihah
Md. Sapari, Noorazliani
Syed Nasir, Syed Norazizul
Predictive energy management strategy in PV/ESS/DIESEL system for battery degradation reduction using artificial neural network.
description Renewable Energy Sources (RES) power generation has increasingly evolved as RES power technology and becoming a valuable substitute for traditional power generation. Energy storage system (ESS), with its flexible charging and discharging features, is most typically utilized to collaborate with RES power generation to efficiently stabilize the process of connecting to the grid and improve power controllability due to variable RES power output. However, the high charging and discharging rate of ESS can lead ESS to degrade faster and shorten the lifetime than it should. Therefore, predictive EMS is introduced in this study. The predicted capacity fading of the ESS is utilized in the EMS to optimize the schedule of ESS operation. The ANN algorithm is implemented to forecast the data. The result shows that the degradation and degradation cost achieved 0.01% and 18.39% reduction with the proposed method.
format Conference or Workshop Item
author M. Saud, Muhammad Noor
Md. Rasid, Madihah
Md. Sapari, Noorazliani
Syed Nasir, Syed Norazizul
author_facet M. Saud, Muhammad Noor
Md. Rasid, Madihah
Md. Sapari, Noorazliani
Syed Nasir, Syed Norazizul
author_sort M. Saud, Muhammad Noor
title Predictive energy management strategy in PV/ESS/DIESEL system for battery degradation reduction using artificial neural network.
title_short Predictive energy management strategy in PV/ESS/DIESEL system for battery degradation reduction using artificial neural network.
title_full Predictive energy management strategy in PV/ESS/DIESEL system for battery degradation reduction using artificial neural network.
title_fullStr Predictive energy management strategy in PV/ESS/DIESEL system for battery degradation reduction using artificial neural network.
title_full_unstemmed Predictive energy management strategy in PV/ESS/DIESEL system for battery degradation reduction using artificial neural network.
title_sort predictive energy management strategy in pv/ess/diesel system for battery degradation reduction using artificial neural network.
publishDate 2023
url http://eprints.utm.my/107921/
http://dx.doi.org/10.1109/ISWTA58588.2023.10249913
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score 13.214268