Application of Machine Learning for Predicting Building Energy Use at Different Temporal and Spatial Resolution under Climate Change in USA

Given the urgency of climate change, development of fast and reliable methods is essential to understand urban building energy use in the sector that accounts for 40% of total energy use in USA. Although machine learning (ML) methods may offer promise and are less difficult to develop, discrepancy i...

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Main Authors: Rezvan Mohammadiziazi, Melissa M. Bilec
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Buildings
Subjects:
Online Access:https://www.mdpi.com/2075-5309/10/8/139
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spelling doaj-b664f55d04da4bc49cfa5faa7082b4892020-11-25T03:28:14ZengMDPI AGBuildings2075-53092020-08-011013913910.3390/buildings10080139Application of Machine Learning for Predicting Building Energy Use at Different Temporal and Spatial Resolution under Climate Change in USARezvan Mohammadiziazi0Melissa M. Bilec1Department of Civil and Environmental Engineering, University of Pittsburgh, 3700 O’Hara St., Pittsburgh, PA 15260, USADepartment of Civil and Environmental Engineering, University of Pittsburgh, 3700 O’Hara St., Pittsburgh, PA 15260, USAGiven the urgency of climate change, development of fast and reliable methods is essential to understand urban building energy use in the sector that accounts for 40% of total energy use in USA. Although machine learning (ML) methods may offer promise and are less difficult to develop, discrepancy in methods, results, and recommendations have emerged that requires attention. Existing research also shows inconsistencies related to integrating climate change models into energy modeling. To address these challenges, four models: random forest (RF), extreme gradient boosting (XGBoost), single regression tree, and multiple linear regression (MLR), were developed using the Commercial Building Energy Consumption Survey dataset to predict energy use intensity (EUI) under projected heating and cooling degree days by the Intergovernmental Panel on Climate Change (IPCC) across the USA during the 21st century. The RF model provided better performance and reduced the mean absolute error by 4%, 11%, and 12% compared to XGBoost, single regression tree, and MLR, respectively. Moreover, using the RF model for climate change analysis showed that office buildings’ EUI will increase between 8.9% to 63.1% compared to 2012 baseline for different geographic regions between 2030 and 2080. One region is projected to experience an EUI reduction of almost 1.5%. Finally, good data enhance the predicting ability of ML therefore, comprehensive regional building datasets are crucial to assess counteraction of building energy use in the face of climate change at finer spatial scale.https://www.mdpi.com/2075-5309/10/8/139machine learningbuilding energy useclimate changeprediction modeldata-drivenrandom forest
collection DOAJ
language English
format Article
sources DOAJ
author Rezvan Mohammadiziazi
Melissa M. Bilec
spellingShingle Rezvan Mohammadiziazi
Melissa M. Bilec
Application of Machine Learning for Predicting Building Energy Use at Different Temporal and Spatial Resolution under Climate Change in USA
Buildings
machine learning
building energy use
climate change
prediction model
data-driven
random forest
author_facet Rezvan Mohammadiziazi
Melissa M. Bilec
author_sort Rezvan Mohammadiziazi
title Application of Machine Learning for Predicting Building Energy Use at Different Temporal and Spatial Resolution under Climate Change in USA
title_short Application of Machine Learning for Predicting Building Energy Use at Different Temporal and Spatial Resolution under Climate Change in USA
title_full Application of Machine Learning for Predicting Building Energy Use at Different Temporal and Spatial Resolution under Climate Change in USA
title_fullStr Application of Machine Learning for Predicting Building Energy Use at Different Temporal and Spatial Resolution under Climate Change in USA
title_full_unstemmed Application of Machine Learning for Predicting Building Energy Use at Different Temporal and Spatial Resolution under Climate Change in USA
title_sort application of machine learning for predicting building energy use at different temporal and spatial resolution under climate change in usa
publisher MDPI AG
series Buildings
issn 2075-5309
publishDate 2020-08-01
description Given the urgency of climate change, development of fast and reliable methods is essential to understand urban building energy use in the sector that accounts for 40% of total energy use in USA. Although machine learning (ML) methods may offer promise and are less difficult to develop, discrepancy in methods, results, and recommendations have emerged that requires attention. Existing research also shows inconsistencies related to integrating climate change models into energy modeling. To address these challenges, four models: random forest (RF), extreme gradient boosting (XGBoost), single regression tree, and multiple linear regression (MLR), were developed using the Commercial Building Energy Consumption Survey dataset to predict energy use intensity (EUI) under projected heating and cooling degree days by the Intergovernmental Panel on Climate Change (IPCC) across the USA during the 21st century. The RF model provided better performance and reduced the mean absolute error by 4%, 11%, and 12% compared to XGBoost, single regression tree, and MLR, respectively. Moreover, using the RF model for climate change analysis showed that office buildings’ EUI will increase between 8.9% to 63.1% compared to 2012 baseline for different geographic regions between 2030 and 2080. One region is projected to experience an EUI reduction of almost 1.5%. Finally, good data enhance the predicting ability of ML therefore, comprehensive regional building datasets are crucial to assess counteraction of building energy use in the face of climate change at finer spatial scale.
topic machine learning
building energy use
climate change
prediction model
data-driven
random forest
url https://www.mdpi.com/2075-5309/10/8/139
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