Artificial Neural Network Base Short-Term Electricity Load Forecasting: A Case Study of a 132/33kv Transmission Sub-Station
<p>Forecasting of electrical load is extremely important for the effective and efficient operation of any power system. Good forecasts results help in minimizing the risk in decision making and reduces the costs of operating the power plant. This work focuses on the short-term load forecast of...
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doaj-f72344ae669a4e27bd94a5e1cd6c8bf82020-11-25T03:58:30ZengEconJournalsInternational Journal of Energy Economics and Policy2146-45532020-01-011022002054330Artificial Neural Network Base Short-Term Electricity Load Forecasting: A Case Study of a 132/33kv Transmission Sub-StationIsaac Adekunle Samuel0Segun Ekundayo1Ayokunle Awelewa2Tobiloba Emmanuel Somefun3Adeyinka Adewale4Covenant UniversityCovenant UniversityTshwane University of Technology, Pretoria, South AfricaCovenant UniversityCovenant University<p>Forecasting of electrical load is extremely important for the effective and efficient operation of any power system. Good forecasts results help in minimizing the risk in decision making and reduces the costs of operating the power plant. This work focuses on the short-term load forecast of the 132/33KV transmission sub-station at Port-Harcourt, Nigeria, using the Artificial Neural Network (ANN). It provides accurate week-ahead load forecast using hourly load data of previous weeks. ANN has three sections namely; input, processing and output sections. There are four input parameters for the input section which are historical hourly load data (in MW), time of the day (in hours), days of the week and weekend while the output parameter after the processing (i.e. training, validation and test) is the next week hourly load predicted for the entire system. The technique used is the artificial neural network with the aid of MATLAB software. It was proven to be a good forecast method as it resulted in R-value of 0.988 which gives a mean absolute deviation (MAD) of 0.104 and mean squared error (MSE) of 0.27.</p><p><strong>Keywords</strong>: Load forecast, transmission substation, artificial neural network, power system</p><p><strong>JEL Classifications:</strong> C63, L94, L98, Q48</p><p>DOI: <a href="https://doi.org/10.32479/ijeep.8629">https://doi.org/10.32479/ijeep.8629</a></p>https://www.econjournals.com/index.php/ijeep/article/view/8629 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Isaac Adekunle Samuel Segun Ekundayo Ayokunle Awelewa Tobiloba Emmanuel Somefun Adeyinka Adewale |
spellingShingle |
Isaac Adekunle Samuel Segun Ekundayo Ayokunle Awelewa Tobiloba Emmanuel Somefun Adeyinka Adewale Artificial Neural Network Base Short-Term Electricity Load Forecasting: A Case Study of a 132/33kv Transmission Sub-Station International Journal of Energy Economics and Policy |
author_facet |
Isaac Adekunle Samuel Segun Ekundayo Ayokunle Awelewa Tobiloba Emmanuel Somefun Adeyinka Adewale |
author_sort |
Isaac Adekunle Samuel |
title |
Artificial Neural Network Base Short-Term Electricity Load Forecasting: A Case Study of a 132/33kv Transmission Sub-Station |
title_short |
Artificial Neural Network Base Short-Term Electricity Load Forecasting: A Case Study of a 132/33kv Transmission Sub-Station |
title_full |
Artificial Neural Network Base Short-Term Electricity Load Forecasting: A Case Study of a 132/33kv Transmission Sub-Station |
title_fullStr |
Artificial Neural Network Base Short-Term Electricity Load Forecasting: A Case Study of a 132/33kv Transmission Sub-Station |
title_full_unstemmed |
Artificial Neural Network Base Short-Term Electricity Load Forecasting: A Case Study of a 132/33kv Transmission Sub-Station |
title_sort |
artificial neural network base short-term electricity load forecasting: a case study of a 132/33kv transmission sub-station |
publisher |
EconJournals |
series |
International Journal of Energy Economics and Policy |
issn |
2146-4553 |
publishDate |
2020-01-01 |
description |
<p>Forecasting of electrical load is extremely important for the effective and efficient operation of any power system. Good forecasts results help in minimizing the risk in decision making and reduces the costs of operating the power plant. This work focuses on the short-term load forecast of the 132/33KV transmission sub-station at Port-Harcourt, Nigeria, using the Artificial Neural Network (ANN). It provides accurate week-ahead load forecast using hourly load data of previous weeks. ANN has three sections namely; input, processing and output sections. There are four input parameters for the input section which are historical hourly load data (in MW), time of the day (in hours), days of the week and weekend while the output parameter after the processing (i.e. training, validation and test) is the next week hourly load predicted for the entire system. The technique used is the artificial neural network with the aid of MATLAB software. It was proven to be a good forecast method as it resulted in R-value of 0.988 which gives a mean absolute deviation (MAD) of 0.104 and mean squared error (MSE) of 0.27.</p><p><strong>Keywords</strong>: Load forecast, transmission substation, artificial neural network, power system</p><p><strong>JEL Classifications:</strong> C63, L94, L98, Q48</p><p>DOI: <a href="https://doi.org/10.32479/ijeep.8629">https://doi.org/10.32479/ijeep.8629</a></p> |
url |
https://www.econjournals.com/index.php/ijeep/article/view/8629 |
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