Development of Power Transformer Health Index Assessment Using Feedforward Neural Network
The role of a power transformer is to convert the electrical power level and send it to the consumer, making it an essential component of a power system. In addition, transformer asset management is essential for monitoring the functioning of transformers in the system to prevent failure and anticip...
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Penerbit Akademia Baru
2023
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2-s2.0-85162962667 Aziz A.M.A.; Talib M.A.; Abidin A.F.; Al Junid S.A.M. Development of Power Transformer Health Index Assessment Using Feedforward Neural Network 2023 Journal of Advanced Research in Applied Sciences and Engineering Technology 30 3 10.37934/araset.30.3.276289 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85162962667&doi=10.37934%2faraset.30.3.276289&partnerID=40&md5=cedcae9df12b49f3985afcd1a21a2308 The role of a power transformer is to convert the electrical power level and send it to the consumer, making it an essential component of a power system. In addition, transformer asset management is essential for monitoring the functioning of transformers in the system to prevent failure and anticipating the health state of transformers, using a technique known as the health index (HI). However, the calculation and computation to determine the transformer HI based on a scoring and ranking technique is complex and required expert validation. Therefore, this paper presents a transformer HI prediction using a feedforward neural network (FFNN) to improve the existing complex scoring and ranking technique. Levenberg–Marquardt (LM), Bayesian Regularized (BR), and Scaled Conjugate Gradient (SCG) are the FFNN training techniques presented in this study to forecast the transformer HI. To validate the techniques, the HI values generated by different FFNN techniques were compared to the scoring and ranking system. Then, the performance of the proposed ANN was evaluated using the correlation coefficient and mean square error (MSE). As a result, the transformer HI was successfully predicted by employing three FFNN techniques, namely the LM, BR, and SCG techniques, which were able to determine whether the transformer's condition is very good, good, fair, or poor. In conclusion, the ANN suggested in this study has also been validated with the ranking and scoring approach, which provides high similarity score in comparison to the transformer health index. © 2023, Penerbit Akademia Baru. All rights reserved. Penerbit Akademia Baru 24621943 English Article All Open Access; Hybrid Gold Open Access |
author |
Aziz A.M.A.; Talib M.A.; Abidin A.F.; Al Junid S.A.M. |
spellingShingle |
Aziz A.M.A.; Talib M.A.; Abidin A.F.; Al Junid S.A.M. Development of Power Transformer Health Index Assessment Using Feedforward Neural Network |
author_facet |
Aziz A.M.A.; Talib M.A.; Abidin A.F.; Al Junid S.A.M. |
author_sort |
Aziz A.M.A.; Talib M.A.; Abidin A.F.; Al Junid S.A.M. |
title |
Development of Power Transformer Health Index Assessment Using Feedforward Neural Network |
title_short |
Development of Power Transformer Health Index Assessment Using Feedforward Neural Network |
title_full |
Development of Power Transformer Health Index Assessment Using Feedforward Neural Network |
title_fullStr |
Development of Power Transformer Health Index Assessment Using Feedforward Neural Network |
title_full_unstemmed |
Development of Power Transformer Health Index Assessment Using Feedforward Neural Network |
title_sort |
Development of Power Transformer Health Index Assessment Using Feedforward Neural Network |
publishDate |
2023 |
container_title |
Journal of Advanced Research in Applied Sciences and Engineering Technology |
container_volume |
30 |
container_issue |
3 |
doi_str_mv |
10.37934/araset.30.3.276289 |
url |
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85162962667&doi=10.37934%2faraset.30.3.276289&partnerID=40&md5=cedcae9df12b49f3985afcd1a21a2308 |
description |
The role of a power transformer is to convert the electrical power level and send it to the consumer, making it an essential component of a power system. In addition, transformer asset management is essential for monitoring the functioning of transformers in the system to prevent failure and anticipating the health state of transformers, using a technique known as the health index (HI). However, the calculation and computation to determine the transformer HI based on a scoring and ranking technique is complex and required expert validation. Therefore, this paper presents a transformer HI prediction using a feedforward neural network (FFNN) to improve the existing complex scoring and ranking technique. Levenberg–Marquardt (LM), Bayesian Regularized (BR), and Scaled Conjugate Gradient (SCG) are the FFNN training techniques presented in this study to forecast the transformer HI. To validate the techniques, the HI values generated by different FFNN techniques were compared to the scoring and ranking system. Then, the performance of the proposed ANN was evaluated using the correlation coefficient and mean square error (MSE). As a result, the transformer HI was successfully predicted by employing three FFNN techniques, namely the LM, BR, and SCG techniques, which were able to determine whether the transformer's condition is very good, good, fair, or poor. In conclusion, the ANN suggested in this study has also been validated with the ranking and scoring approach, which provides high similarity score in comparison to the transformer health index. © 2023, Penerbit Akademia Baru. All rights reserved. |
publisher |
Penerbit Akademia Baru |
issn |
24621943 |
language |
English |
format |
Article |
accesstype |
All Open Access; Hybrid Gold Open Access |
record_format |
scopus |
collection |
Scopus |
_version_ |
1809677582952562688 |