Forecast electricity demand in commercial building with machine learning models to enable demand response programs

Electricity load forecasting is an important part of power system dispatching. Accurately forecasting electricity load have great impact on a number of departments in power systems. Compared to electricity load simulation (white-box model), electricity load forecasting (black-box model) does not req...

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Main Authors: Fabiano Pallonetto, Changhong Jin, Eleni Mangina
Format: Article
Language:English
Published: Elsevier 2022-01-01
Series:Energy and AI
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666546821000690
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author Fabiano Pallonetto
Changhong Jin
Eleni Mangina
author_facet Fabiano Pallonetto
Changhong Jin
Eleni Mangina
author_sort Fabiano Pallonetto
collection DOAJ
description Electricity load forecasting is an important part of power system dispatching. Accurately forecasting electricity load have great impact on a number of departments in power systems. Compared to electricity load simulation (white-box model), electricity load forecasting (black-box model) does not require expertise in building construction. The development cycle of the electricity load forecasting model is much shorter than the design cycle of the electricity load simulation. Recent developments in machine learning have lead to the creation of models with strong fitting and accuracy to deal with nonlinear characteristics. Based on the real load dataset, this paper evaluates and compares the two mainstream short-term load forecasting techniques. Before the experiment, this paper first enumerates the common methods of short-term load forecasting and explains the principles of Long Short-term Memory Networks (LSTMs) and Support Vector Machines (SVM) used in this paper. Secondly, based on the characteristics of the electricity load dataset, data pre-processing and feature selection takes place. This paper describes the results of a controlled experiment to study the importance of feature selection. The LSTMs model and SVM model are applied to one-hour ahead load forecasting and one-day ahead peak and valley load forecasting. The predictive accuracy of these models are calculated based on the error between the actual and predicted loads, and the runtime of the model is recorded. The results show that the LSTMs model have a higher prediction accuracy when the load data is sufficient. However, the overall performance of the SVM model is better when the load data used to train the model is insufficient and the time cost is prioritized.
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spelling doaj.art-923878b3f3e34a638b084c76d7717faa2022-12-21T19:34:17ZengElsevierEnergy and AI2666-54682022-01-017100121Forecast electricity demand in commercial building with machine learning models to enable demand response programsFabiano Pallonetto0Changhong Jin1Eleni Mangina2School of Business, Maynooth University, Ireland; Corresponding author.School of Computer Science, University College Dublin, IrelandSchool of Computer Science, University College Dublin, IrelandElectricity load forecasting is an important part of power system dispatching. Accurately forecasting electricity load have great impact on a number of departments in power systems. Compared to electricity load simulation (white-box model), electricity load forecasting (black-box model) does not require expertise in building construction. The development cycle of the electricity load forecasting model is much shorter than the design cycle of the electricity load simulation. Recent developments in machine learning have lead to the creation of models with strong fitting and accuracy to deal with nonlinear characteristics. Based on the real load dataset, this paper evaluates and compares the two mainstream short-term load forecasting techniques. Before the experiment, this paper first enumerates the common methods of short-term load forecasting and explains the principles of Long Short-term Memory Networks (LSTMs) and Support Vector Machines (SVM) used in this paper. Secondly, based on the characteristics of the electricity load dataset, data pre-processing and feature selection takes place. This paper describes the results of a controlled experiment to study the importance of feature selection. The LSTMs model and SVM model are applied to one-hour ahead load forecasting and one-day ahead peak and valley load forecasting. The predictive accuracy of these models are calculated based on the error between the actual and predicted loads, and the runtime of the model is recorded. The results show that the LSTMs model have a higher prediction accuracy when the load data is sufficient. However, the overall performance of the SVM model is better when the load data used to train the model is insufficient and the time cost is prioritized.http://www.sciencedirect.com/science/article/pii/S2666546821000690Deep neural networkModel assessmentShort-term load forecastingFeature selectionSupport Vector MachinesArtificial Neural Networks
spellingShingle Fabiano Pallonetto
Changhong Jin
Eleni Mangina
Forecast electricity demand in commercial building with machine learning models to enable demand response programs
Energy and AI
Deep neural network
Model assessment
Short-term load forecasting
Feature selection
Support Vector Machines
Artificial Neural Networks
title Forecast electricity demand in commercial building with machine learning models to enable demand response programs
title_full Forecast electricity demand in commercial building with machine learning models to enable demand response programs
title_fullStr Forecast electricity demand in commercial building with machine learning models to enable demand response programs
title_full_unstemmed Forecast electricity demand in commercial building with machine learning models to enable demand response programs
title_short Forecast electricity demand in commercial building with machine learning models to enable demand response programs
title_sort forecast electricity demand in commercial building with machine learning models to enable demand response programs
topic Deep neural network
Model assessment
Short-term load forecasting
Feature selection
Support Vector Machines
Artificial Neural Networks
url http://www.sciencedirect.com/science/article/pii/S2666546821000690
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AT changhongjin forecastelectricitydemandincommercialbuildingwithmachinelearningmodelstoenabledemandresponseprograms
AT elenimangina forecastelectricitydemandincommercialbuildingwithmachinelearningmodelstoenabledemandresponseprograms