Short load forecasting by using a hybrid model of adaptive neuro-fuzzy system for electric load / Muhammad Aidil Adha Aziz

Short Load forecasting is vitally necessary for the electric for any power system and real- life difficulty in industry in the deregulated economy. It has various applications including energy purchasing and generation, contract evaluation, load switching, infrastructure development and to forecast...

Full description

Saved in:
Bibliographic Details
Main Author: Aziz, Muhammad Aidil Adha
Format: Thesis
Language:English
Published: 2014
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/79778/1/79778.pdf
https://ir.uitm.edu.my/id/eprint/79778/
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.uitm.ir.79778
record_format eprints
spelling my.uitm.ir.797782024-08-17T14:02:33Z https://ir.uitm.edu.my/id/eprint/79778/ Short load forecasting by using a hybrid model of adaptive neuro-fuzzy system for electric load / Muhammad Aidil Adha Aziz Aziz, Muhammad Aidil Adha Electronic data processing. Computer-aided engineering Short Load forecasting is vitally necessary for the electric for any power system and real- life difficulty in industry in the deregulated economy. It has various applications including energy purchasing and generation, contract evaluation, load switching, infrastructure development and to forecast the load demand from the customers by rising or declining the power generated and to lessen the operating costs of producing electricity. Besides, the conventional traditional models, some models based on artificial intelligence have been purposed in the literature, specifically, neural network for their good performance. Other non-parametric approaches of artificial intelligence have also been applied. However, all these models are imprecise when used in real time operation. The need for accurate load forecasting will increase in the future because of the dramatic change occurring in the structure of the utility industry due to deregulation and competition. This environment compels the utilities to operate at the highest possible efficiency. However, mush effort has been devoted over the past decades to develop and improve the short term electric load and its corresponding price forecasting models in order to make an appropriate market decision. Various types of load forecasting methodologies that have been reported in have their own advantages. The purpose of this research is to present an electric system load forecasting model using an adaptive Neuro-Fuzzy interface system (ANFIS) and discuss in detail how ANFIS is effectively applied to weekly, short term load forecasting with respect to different day types. This project present a study if short term hourly forecasting using Adaptive Neuro-Fuzzy system (ANFIS). To demonstrate the effectiveness of the proposed approach, publicly available data from the New England national electricity market web site has been taken to forecast the hourly load for the Victorian power system. It has been predicted the hourly load demand for a full week with a high degree of accuracy. The data obtained was divided into several where part where half of them are used for training and the other half is used for testing the Neuro-Fuzzy. The inputs used were the hour daily temperature, dry bulb, and dew points. The outputs obtained were predicted electric load in Mwh unit. The outcome and forecasting performance obtained reveal the effectiveness of the proposed approach and shows that it has potential to build a high accurateness model with less historical data using a hybrid of neural network and fuzzy logic which can be used in real time. 2014 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/79778/1/79778.pdf Short load forecasting by using a hybrid model of adaptive neuro-fuzzy system for electric load / Muhammad Aidil Adha Aziz. (2014) Degree thesis, thesis, Universiti Teknologi MARA (UiTM). <http://terminalib.uitm.edu.my/79778.pdf>
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Electronic data processing. Computer-aided engineering
spellingShingle Electronic data processing. Computer-aided engineering
Aziz, Muhammad Aidil Adha
Short load forecasting by using a hybrid model of adaptive neuro-fuzzy system for electric load / Muhammad Aidil Adha Aziz
description Short Load forecasting is vitally necessary for the electric for any power system and real- life difficulty in industry in the deregulated economy. It has various applications including energy purchasing and generation, contract evaluation, load switching, infrastructure development and to forecast the load demand from the customers by rising or declining the power generated and to lessen the operating costs of producing electricity. Besides, the conventional traditional models, some models based on artificial intelligence have been purposed in the literature, specifically, neural network for their good performance. Other non-parametric approaches of artificial intelligence have also been applied. However, all these models are imprecise when used in real time operation. The need for accurate load forecasting will increase in the future because of the dramatic change occurring in the structure of the utility industry due to deregulation and competition. This environment compels the utilities to operate at the highest possible efficiency. However, mush effort has been devoted over the past decades to develop and improve the short term electric load and its corresponding price forecasting models in order to make an appropriate market decision. Various types of load forecasting methodologies that have been reported in have their own advantages. The purpose of this research is to present an electric system load forecasting model using an adaptive Neuro-Fuzzy interface system (ANFIS) and discuss in detail how ANFIS is effectively applied to weekly, short term load forecasting with respect to different day types. This project present a study if short term hourly forecasting using Adaptive Neuro-Fuzzy system (ANFIS). To demonstrate the effectiveness of the proposed approach, publicly available data from the New England national electricity market web site has been taken to forecast the hourly load for the Victorian power system. It has been predicted the hourly load demand for a full week with a high degree of accuracy. The data obtained was divided into several where part where half of them are used for training and the other half is used for testing the Neuro-Fuzzy. The inputs used were the hour daily temperature, dry bulb, and dew points. The outputs obtained were predicted electric load in Mwh unit. The outcome and forecasting performance obtained reveal the effectiveness of the proposed approach and shows that it has potential to build a high accurateness model with less historical data using a hybrid of neural network and fuzzy logic which can be used in real time.
format Thesis
author Aziz, Muhammad Aidil Adha
author_facet Aziz, Muhammad Aidil Adha
author_sort Aziz, Muhammad Aidil Adha
title Short load forecasting by using a hybrid model of adaptive neuro-fuzzy system for electric load / Muhammad Aidil Adha Aziz
title_short Short load forecasting by using a hybrid model of adaptive neuro-fuzzy system for electric load / Muhammad Aidil Adha Aziz
title_full Short load forecasting by using a hybrid model of adaptive neuro-fuzzy system for electric load / Muhammad Aidil Adha Aziz
title_fullStr Short load forecasting by using a hybrid model of adaptive neuro-fuzzy system for electric load / Muhammad Aidil Adha Aziz
title_full_unstemmed Short load forecasting by using a hybrid model of adaptive neuro-fuzzy system for electric load / Muhammad Aidil Adha Aziz
title_sort short load forecasting by using a hybrid model of adaptive neuro-fuzzy system for electric load / muhammad aidil adha aziz
publishDate 2014
url https://ir.uitm.edu.my/id/eprint/79778/1/79778.pdf
https://ir.uitm.edu.my/id/eprint/79778/
_version_ 1808975925355741184
score 13.19449