Artificial neural networks in short term load forecasting / Zulkifle Ahmad

The artificial neuron network (ANN) technique for short-term load forecasting (STLF) has been proposed by several authors in order to evaluate ANN as a viable technique for STLF. Once we have to evaluate the performance of ANN methodology for practical considerations of STLF problem. This paper will...

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Main Author: Ahmad, Zulkifle
Format: Thesis
Language:English
Published: 2003
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/67083/2/67083.pdf
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spelling my-uitm-ir.670832023-01-05T03:58:08Z Artificial neural networks in short term load forecasting / Zulkifle Ahmad 2003 Ahmad, Zulkifle Neural networks (Computer science) Computer networks. General works. Traffic monitoring The artificial neuron network (ANN) technique for short-term load forecasting (STLF) has been proposed by several authors in order to evaluate ANN as a viable technique for STLF. Once we have to evaluate the performance of ANN methodology for practical considerations of STLF problem. This paper wills presents the results of a study to look the effectiveness of next 1 hour ANN model in 24-hour load profile at the one time was compared with the previous load on 3 months load. Data from utilities were used in modeling and forecasting. In this thesis, the back propagation will be applied as the most popular technique in Artificial Neural Network. This model is propagated forward and the error between the actual and desired output is back propagated to obtain a minimize error closer to zero. From this study we can also find that whether the Short Term Load Forecasting, Artificial Neural Network is sensitive load forecast or not. 2003 Thesis https://ir.uitm.edu.my/id/eprint/67083/ https://ir.uitm.edu.my/id/eprint/67083/2/67083.pdf text en public degree Universiti Teknologi MARA (UiTM) Faculty of Electrical Engineering Abd. Hadi, Razali
institution Universiti Teknologi MARA
collection UiTM Institutional Repository
language English
advisor Abd. Hadi, Razali
topic Neural networks (Computer science)
Neural networks (Computer science)
spellingShingle Neural networks (Computer science)
Neural networks (Computer science)
Ahmad, Zulkifle
Artificial neural networks in short term load forecasting / Zulkifle Ahmad
description The artificial neuron network (ANN) technique for short-term load forecasting (STLF) has been proposed by several authors in order to evaluate ANN as a viable technique for STLF. Once we have to evaluate the performance of ANN methodology for practical considerations of STLF problem. This paper wills presents the results of a study to look the effectiveness of next 1 hour ANN model in 24-hour load profile at the one time was compared with the previous load on 3 months load. Data from utilities were used in modeling and forecasting. In this thesis, the back propagation will be applied as the most popular technique in Artificial Neural Network. This model is propagated forward and the error between the actual and desired output is back propagated to obtain a minimize error closer to zero. From this study we can also find that whether the Short Term Load Forecasting, Artificial Neural Network is sensitive load forecast or not.
format Thesis
qualification_level Bachelor degree
author Ahmad, Zulkifle
author_facet Ahmad, Zulkifle
author_sort Ahmad, Zulkifle
title Artificial neural networks in short term load forecasting / Zulkifle Ahmad
title_short Artificial neural networks in short term load forecasting / Zulkifle Ahmad
title_full Artificial neural networks in short term load forecasting / Zulkifle Ahmad
title_fullStr Artificial neural networks in short term load forecasting / Zulkifle Ahmad
title_full_unstemmed Artificial neural networks in short term load forecasting / Zulkifle Ahmad
title_sort artificial neural networks in short term load forecasting / zulkifle ahmad
granting_institution Universiti Teknologi MARA (UiTM)
granting_department Faculty of Electrical Engineering
publishDate 2003
url https://ir.uitm.edu.my/id/eprint/67083/2/67083.pdf
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