A New Neural Network Approach to Short Term Load Forecasting of Electrical Power Systems

Short-term load forecast (STLF) is an important operational function in both regulated power systems and deregulated open electricity markets. However, STLF is not easy to handle due to the nonlinear and random-like behaviors of system loads, weather conditions, and social and economic environment v...

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Main Authors: Farshid Keynia, Nima Amjady
Format: Article
Language:English
Published: MDPI AG 2011-03-01
Series:Energies
Subjects:
Online Access:http://www.mdpi.com/1996-1073/4/3/488/
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spelling doaj-a56ef7fbb6dc48e3b97ce9cf035bcf042020-11-24T23:02:43ZengMDPI AGEnergies1996-10732011-03-014348850310.3390/en4030488A New Neural Network Approach to Short Term Load Forecasting of Electrical Power SystemsFarshid KeyniaNima AmjadyShort-term load forecast (STLF) is an important operational function in both regulated power systems and deregulated open electricity markets. However, STLF is not easy to handle due to the nonlinear and random-like behaviors of system loads, weather conditions, and social and economic environment variations. Despite the research work performed in the area, more accurate and robust STLF methods are still needed due to the importance and complexity of STLF. In this paper, a new neural network approach for STLF is proposed. The proposed neural network has a novel learning algorithm based on a new modified harmony search technique. This learning algorithm can widely search the solution space in various directions, and it can also avoid the overfitting problem, trapping in local minima and dead bands. Based on this learning algorithm, the suggested neural network can efficiently extract the input/output mapping function of the forecast process leading to high STLF accuracy. The proposed approach is tested on two practical power systems and the results obtained are compared with the results of several other recently published STLF methods. These comparisons confirm the validity of the developed approach. http://www.mdpi.com/1996-1073/4/3/488/STLFneural networklearning algorithmharmony search
collection DOAJ
language English
format Article
sources DOAJ
author Farshid Keynia
Nima Amjady
spellingShingle Farshid Keynia
Nima Amjady
A New Neural Network Approach to Short Term Load Forecasting of Electrical Power Systems
Energies
STLF
neural network
learning algorithm
harmony search
author_facet Farshid Keynia
Nima Amjady
author_sort Farshid Keynia
title A New Neural Network Approach to Short Term Load Forecasting of Electrical Power Systems
title_short A New Neural Network Approach to Short Term Load Forecasting of Electrical Power Systems
title_full A New Neural Network Approach to Short Term Load Forecasting of Electrical Power Systems
title_fullStr A New Neural Network Approach to Short Term Load Forecasting of Electrical Power Systems
title_full_unstemmed A New Neural Network Approach to Short Term Load Forecasting of Electrical Power Systems
title_sort new neural network approach to short term load forecasting of electrical power systems
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2011-03-01
description Short-term load forecast (STLF) is an important operational function in both regulated power systems and deregulated open electricity markets. However, STLF is not easy to handle due to the nonlinear and random-like behaviors of system loads, weather conditions, and social and economic environment variations. Despite the research work performed in the area, more accurate and robust STLF methods are still needed due to the importance and complexity of STLF. In this paper, a new neural network approach for STLF is proposed. The proposed neural network has a novel learning algorithm based on a new modified harmony search technique. This learning algorithm can widely search the solution space in various directions, and it can also avoid the overfitting problem, trapping in local minima and dead bands. Based on this learning algorithm, the suggested neural network can efficiently extract the input/output mapping function of the forecast process leading to high STLF accuracy. The proposed approach is tested on two practical power systems and the results obtained are compared with the results of several other recently published STLF methods. These comparisons confirm the validity of the developed approach.
topic STLF
neural network
learning algorithm
harmony search
url http://www.mdpi.com/1996-1073/4/3/488/
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