An Empirical Study of Environmental Data Prediction in the United States Energy-Water Nexus
Electricity generation systems are dependent on water availability and planning for future water scarcity is currently hindered by limited data and predictive models. The Energy-Water-Emissions Dashboard (EWED) is a novel environmental data management system that integrates multiple heterogeneous da...
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doaj-7b6b420d12664bc097f4575ce21893c92021-03-30T15:30:10ZengIEEEIEEE Access2169-35362021-01-019327473275910.1109/ACCESS.2021.30588879352764An Empirical Study of Environmental Data Prediction in the United States Energy-Water NexusYing Jin0https://orcid.org/0000-0003-4522-5820Emily J. Yang1https://orcid.org/0000-0003-2981-9119Julian Fulton2Computer Science Department, California State University, Sacramento, CA, USAFolsom High School, Folsom, CA, USAEnvironmental Studies Department, California State University, Sacramento, CA, USAElectricity generation systems are dependent on water availability and planning for future water scarcity is currently hindered by limited data and predictive models. The Energy-Water-Emissions Dashboard (EWED) is a novel environmental data management system that integrates multiple heterogeneous data sources and provides information for nearly 10,000 individual power plants across the United States. This article describes our empirical research of using machine learning models for electricity prediction and water usage in the context of water availability constraints. We evaluate the use of linear regression, decision tree regression, random forest regression, eXtreme Gradient Boosting (XGBoost), and Artificial Neural Network (ANN). Based on the performance evaluation of each model, we use ANN for generation and water consumption and XGBoost for water withdrawal prediction in the production environment. Model performance evaluation is based on statistical measures including Root Mean Square Error (RMSE), Mean Absolute Error (MAE), coefficient of determination (R<sup>2</sup>), Willmott's Index of Agreement (WIA), RMSE-observations to Standard deviation Ratio (RSR), Nash-Sutcliffe model Efficiency Coefficient (NSEC), and Percent Bias (PBIAS). This article presents performance improvements of our machine learning approach compared to the conventional coefficient method used by EWED, for example, RMSE decreased 8.1% in generation, 59% in water consumption, and 53% in water withdrawal prediction. The significance of this research is that it covers a wide variety of power plant types, it uses consistent methods across energy and water systems, and provides predictions at multiple management scales across the United States to assist with future planning at the energy-water nexus.https://ieeexplore.ieee.org/document/9352764/Power systems modelingelectricity generation predictionwater consumption predictionwater withdrawal predictionmachine learningenergy-water nexus |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ying Jin Emily J. Yang Julian Fulton |
spellingShingle |
Ying Jin Emily J. Yang Julian Fulton An Empirical Study of Environmental Data Prediction in the United States Energy-Water Nexus IEEE Access Power systems modeling electricity generation prediction water consumption prediction water withdrawal prediction machine learning energy-water nexus |
author_facet |
Ying Jin Emily J. Yang Julian Fulton |
author_sort |
Ying Jin |
title |
An Empirical Study of Environmental Data Prediction in the United States Energy-Water Nexus |
title_short |
An Empirical Study of Environmental Data Prediction in the United States Energy-Water Nexus |
title_full |
An Empirical Study of Environmental Data Prediction in the United States Energy-Water Nexus |
title_fullStr |
An Empirical Study of Environmental Data Prediction in the United States Energy-Water Nexus |
title_full_unstemmed |
An Empirical Study of Environmental Data Prediction in the United States Energy-Water Nexus |
title_sort |
empirical study of environmental data prediction in the united states energy-water nexus |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2021-01-01 |
description |
Electricity generation systems are dependent on water availability and planning for future water scarcity is currently hindered by limited data and predictive models. The Energy-Water-Emissions Dashboard (EWED) is a novel environmental data management system that integrates multiple heterogeneous data sources and provides information for nearly 10,000 individual power plants across the United States. This article describes our empirical research of using machine learning models for electricity prediction and water usage in the context of water availability constraints. We evaluate the use of linear regression, decision tree regression, random forest regression, eXtreme Gradient Boosting (XGBoost), and Artificial Neural Network (ANN). Based on the performance evaluation of each model, we use ANN for generation and water consumption and XGBoost for water withdrawal prediction in the production environment. Model performance evaluation is based on statistical measures including Root Mean Square Error (RMSE), Mean Absolute Error (MAE), coefficient of determination (R<sup>2</sup>), Willmott's Index of Agreement (WIA), RMSE-observations to Standard deviation Ratio (RSR), Nash-Sutcliffe model Efficiency Coefficient (NSEC), and Percent Bias (PBIAS). This article presents performance improvements of our machine learning approach compared to the conventional coefficient method used by EWED, for example, RMSE decreased 8.1% in generation, 59% in water consumption, and 53% in water withdrawal prediction. The significance of this research is that it covers a wide variety of power plant types, it uses consistent methods across energy and water systems, and provides predictions at multiple management scales across the United States to assist with future planning at the energy-water nexus. |
topic |
Power systems modeling electricity generation prediction water consumption prediction water withdrawal prediction machine learning energy-water nexus |
url |
https://ieeexplore.ieee.org/document/9352764/ |
work_keys_str_mv |
AT yingjin anempiricalstudyofenvironmentaldatapredictionintheunitedstatesenergywaternexus AT emilyjyang anempiricalstudyofenvironmentaldatapredictionintheunitedstatesenergywaternexus AT julianfulton anempiricalstudyofenvironmentaldatapredictionintheunitedstatesenergywaternexus AT yingjin empiricalstudyofenvironmentaldatapredictionintheunitedstatesenergywaternexus AT emilyjyang empiricalstudyofenvironmentaldatapredictionintheunitedstatesenergywaternexus AT julianfulton empiricalstudyofenvironmentaldatapredictionintheunitedstatesenergywaternexus |
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