Short-Term Forecasting of Electric Loads Using Nonlinear Autoregressive Artificial Neural Networks with Exogenous Vector Inputs

Short-term load forecasting is crucial for the operations planning of an electrical grid. Forecasting the next 24 h of electrical load in a grid allows operators to plan and optimize their resources. The purpose of this study is to develop a more accurate short-term load forecasting method utilizing...

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Main Authors: Jaime Buitrago, Shihab Asfour
Format: Article
Language:English
Published: MDPI AG 2017-01-01
Series:Energies
Subjects:
Online Access:http://www.mdpi.com/1996-1073/10/1/40
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spelling doaj-12a4ce10145c4718a629652b12a1fb842020-11-25T01:06:13ZengMDPI AGEnergies1996-10732017-01-011014010.3390/en10010040en10010040Short-Term Forecasting of Electric Loads Using Nonlinear Autoregressive Artificial Neural Networks with Exogenous Vector InputsJaime Buitrago0Shihab Asfour1University of Miami, Department of Industrial Engineering, 1251 Memorial Drive, 268 McArthur Engineering Building, Coral Gables, FL 33146, USAUniversity of Miami, Department of Industrial Engineering, 1251 Memorial Drive, 268 McArthur Engineering Building, Coral Gables, FL 33146, USAShort-term load forecasting is crucial for the operations planning of an electrical grid. Forecasting the next 24 h of electrical load in a grid allows operators to plan and optimize their resources. The purpose of this study is to develop a more accurate short-term load forecasting method utilizing non-linear autoregressive artificial neural networks (ANN) with exogenous multi-variable input (NARX). The proposed implementation of the network is new: the neural network is trained in open-loop using actual load and weather data, and then, the network is placed in closed-loop to generate a forecast using the predicted load as the feedback input. Unlike the existing short-term load forecasting methods using ANNs, the proposed method uses its own output as the input in order to improve the accuracy, thus effectively implementing a feedback loop for the load, making it less dependent on external data. Using the proposed framework, mean absolute percent errors in the forecast in the order of 1% have been achieved, which is a 30% improvement on the average error using feedforward ANNs, ARMAX and state space methods, which can result in large savings by avoiding commissioning of unnecessary power plants. The New England electrical load data are used to train and validate the forecast prediction.http://www.mdpi.com/1996-1073/10/1/40short-term load forecastingnonlinear autoregressive exogenous inputartificial neural networksclosed-loop forecasting
collection DOAJ
language English
format Article
sources DOAJ
author Jaime Buitrago
Shihab Asfour
spellingShingle Jaime Buitrago
Shihab Asfour
Short-Term Forecasting of Electric Loads Using Nonlinear Autoregressive Artificial Neural Networks with Exogenous Vector Inputs
Energies
short-term load forecasting
nonlinear autoregressive exogenous input
artificial neural networks
closed-loop forecasting
author_facet Jaime Buitrago
Shihab Asfour
author_sort Jaime Buitrago
title Short-Term Forecasting of Electric Loads Using Nonlinear Autoregressive Artificial Neural Networks with Exogenous Vector Inputs
title_short Short-Term Forecasting of Electric Loads Using Nonlinear Autoregressive Artificial Neural Networks with Exogenous Vector Inputs
title_full Short-Term Forecasting of Electric Loads Using Nonlinear Autoregressive Artificial Neural Networks with Exogenous Vector Inputs
title_fullStr Short-Term Forecasting of Electric Loads Using Nonlinear Autoregressive Artificial Neural Networks with Exogenous Vector Inputs
title_full_unstemmed Short-Term Forecasting of Electric Loads Using Nonlinear Autoregressive Artificial Neural Networks with Exogenous Vector Inputs
title_sort short-term forecasting of electric loads using nonlinear autoregressive artificial neural networks with exogenous vector inputs
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2017-01-01
description Short-term load forecasting is crucial for the operations planning of an electrical grid. Forecasting the next 24 h of electrical load in a grid allows operators to plan and optimize their resources. The purpose of this study is to develop a more accurate short-term load forecasting method utilizing non-linear autoregressive artificial neural networks (ANN) with exogenous multi-variable input (NARX). The proposed implementation of the network is new: the neural network is trained in open-loop using actual load and weather data, and then, the network is placed in closed-loop to generate a forecast using the predicted load as the feedback input. Unlike the existing short-term load forecasting methods using ANNs, the proposed method uses its own output as the input in order to improve the accuracy, thus effectively implementing a feedback loop for the load, making it less dependent on external data. Using the proposed framework, mean absolute percent errors in the forecast in the order of 1% have been achieved, which is a 30% improvement on the average error using feedforward ANNs, ARMAX and state space methods, which can result in large savings by avoiding commissioning of unnecessary power plants. The New England electrical load data are used to train and validate the forecast prediction.
topic short-term load forecasting
nonlinear autoregressive exogenous input
artificial neural networks
closed-loop forecasting
url http://www.mdpi.com/1996-1073/10/1/40
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