Predicting city-scale daily electricity consumption using data-driven models

Accurate electricity demand forecasts that account for impacts of extreme weather events are needed to inform electric grid operation and utility resource planning, as well as to enhance energy security and grid resilience. Three common data-driven models are used to predict city-scale daily electri...

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Main Authors: Zhe Wang, Tianzhen Hong, Han Li, Mary Ann Piette
Format: Article
Language:English
Published: Elsevier 2021-05-01
Series:Advances in Applied Energy
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666792421000184
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spelling doaj-493280b6c74345c5adb3af734b285e512021-06-10T04:58:46ZengElsevierAdvances in Applied Energy2666-79242021-05-012100025Predicting city-scale daily electricity consumption using data-driven modelsZhe Wang0Tianzhen Hong1Han Li2Mary Ann Piette3Building Technology and Urban Systems Division, Lawrence Berkeley National Laboratory, One Cyclotron Road, Berkeley, CA 94720, USACorresponding author.; Building Technology and Urban Systems Division, Lawrence Berkeley National Laboratory, One Cyclotron Road, Berkeley, CA 94720, USABuilding Technology and Urban Systems Division, Lawrence Berkeley National Laboratory, One Cyclotron Road, Berkeley, CA 94720, USABuilding Technology and Urban Systems Division, Lawrence Berkeley National Laboratory, One Cyclotron Road, Berkeley, CA 94720, USAAccurate electricity demand forecasts that account for impacts of extreme weather events are needed to inform electric grid operation and utility resource planning, as well as to enhance energy security and grid resilience. Three common data-driven models are used to predict city-scale daily electricity usage: linear regression models, machine learning models for time series data, and machine learning models for tabular data. In this study, we developed and compared seven data-driven models: (1) five-parameter change-point model, (2) Heating/Cooling Degree Hour model, (3) time series decomposed model implemented by Facebook Prophet, (4) Gradient Boosting Machine implemented by Microsoft lightGBM, and (5) three widely-used machine learning models (Random Forest, Support Vector Machine, Neural Network). Seven models are applied to the city-scale electricity usage data for three metropolitan areas in the United States: Sacramento, Los Angeles, and New York. Results show seven models can predict the metropolitan area's daily electricity use, with a coefficient of variation of the root mean square error (CVRMSE) less than 10%. The lightGBM provides the most accurate results, with CVRMSE on the test dataset of 6.5% for Los Angeles, 4.6% for Sacramento, and 4.1% for the New York metropolitan area. These models are further applied to explore how extreme weather events (e.g., heat waves) and unexpected public health events (e.g., COVID-19 pandemic) influence each city's electricity demand. Results show weather-sensitive component accounts for 30%–50% of the total daily electricity usage. Every degree Celsius ambient temperature increase in summer leads to about 5% (4.7% in Los Angeles, 6.2% in Sacramento, and 5.1% in New York) more daily electricity usage compared with the base load in the three metropolitan areas. The COVID-19 pandemic reduced city-scale electricity demand: compared with the pre-pandemic same months in 2019, daily electricity usage during the 2020 pandemic decreased by 10% in April and started to rebound in summer.http://www.sciencedirect.com/science/article/pii/S2666792421000184City-scale electricity usageDecomposed time-series modelingGradient boosting treesTemperature-sensitive energy demandMachine learning prediction
collection DOAJ
language English
format Article
sources DOAJ
author Zhe Wang
Tianzhen Hong
Han Li
Mary Ann Piette
spellingShingle Zhe Wang
Tianzhen Hong
Han Li
Mary Ann Piette
Predicting city-scale daily electricity consumption using data-driven models
Advances in Applied Energy
City-scale electricity usage
Decomposed time-series modeling
Gradient boosting trees
Temperature-sensitive energy demand
Machine learning prediction
author_facet Zhe Wang
Tianzhen Hong
Han Li
Mary Ann Piette
author_sort Zhe Wang
title Predicting city-scale daily electricity consumption using data-driven models
title_short Predicting city-scale daily electricity consumption using data-driven models
title_full Predicting city-scale daily electricity consumption using data-driven models
title_fullStr Predicting city-scale daily electricity consumption using data-driven models
title_full_unstemmed Predicting city-scale daily electricity consumption using data-driven models
title_sort predicting city-scale daily electricity consumption using data-driven models
publisher Elsevier
series Advances in Applied Energy
issn 2666-7924
publishDate 2021-05-01
description Accurate electricity demand forecasts that account for impacts of extreme weather events are needed to inform electric grid operation and utility resource planning, as well as to enhance energy security and grid resilience. Three common data-driven models are used to predict city-scale daily electricity usage: linear regression models, machine learning models for time series data, and machine learning models for tabular data. In this study, we developed and compared seven data-driven models: (1) five-parameter change-point model, (2) Heating/Cooling Degree Hour model, (3) time series decomposed model implemented by Facebook Prophet, (4) Gradient Boosting Machine implemented by Microsoft lightGBM, and (5) three widely-used machine learning models (Random Forest, Support Vector Machine, Neural Network). Seven models are applied to the city-scale electricity usage data for three metropolitan areas in the United States: Sacramento, Los Angeles, and New York. Results show seven models can predict the metropolitan area's daily electricity use, with a coefficient of variation of the root mean square error (CVRMSE) less than 10%. The lightGBM provides the most accurate results, with CVRMSE on the test dataset of 6.5% for Los Angeles, 4.6% for Sacramento, and 4.1% for the New York metropolitan area. These models are further applied to explore how extreme weather events (e.g., heat waves) and unexpected public health events (e.g., COVID-19 pandemic) influence each city's electricity demand. Results show weather-sensitive component accounts for 30%–50% of the total daily electricity usage. Every degree Celsius ambient temperature increase in summer leads to about 5% (4.7% in Los Angeles, 6.2% in Sacramento, and 5.1% in New York) more daily electricity usage compared with the base load in the three metropolitan areas. The COVID-19 pandemic reduced city-scale electricity demand: compared with the pre-pandemic same months in 2019, daily electricity usage during the 2020 pandemic decreased by 10% in April and started to rebound in summer.
topic City-scale electricity usage
Decomposed time-series modeling
Gradient boosting trees
Temperature-sensitive energy demand
Machine learning prediction
url http://www.sciencedirect.com/science/article/pii/S2666792421000184
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