Stream Learning in Energy IoT Systems: A Case Study in Combined Cycle Power Plants

The prediction of electrical power produced in combined cycle power plants is a key challenge in the electrical power and energy systems field. This power production can vary depending on environmental variables, such as temperature, pressure, and humidity. Thus, the business problem is how to predi...

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Main Authors: Jesus L. Lobo, Igor Ballesteros, Izaskun Oregi, Javier Del Ser, Sancho Salcedo-Sanz
Format: Article
Language:English
Published: MDPI AG 2020-02-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/13/3/740
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spelling doaj-f7e2b5006f5c4b579fe9b3105b77e72a2020-11-25T01:27:38ZengMDPI AGEnergies1996-10732020-02-0113374010.3390/en13030740en13030740Stream Learning in Energy IoT Systems: A Case Study in Combined Cycle Power PlantsJesus L. Lobo0Igor Ballesteros1Izaskun Oregi2Javier Del Ser3Sancho Salcedo-Sanz4TECNALIA, Basque Research and Technology Alliance (BRTA), 48160 Derio-Bizkaia, SpainUniversity of the Basque Country UPV/EHU, 48013 Bilbao, SpainTECNALIA, Basque Research and Technology Alliance (BRTA), 48160 Derio-Bizkaia, SpainTECNALIA, Basque Research and Technology Alliance (BRTA), 48160 Derio-Bizkaia, SpainDepartment of Signal Processing and Communications, University of Alcalá, E-28871 Alcalá de Henares, SpainThe prediction of electrical power produced in combined cycle power plants is a key challenge in the electrical power and energy systems field. This power production can vary depending on environmental variables, such as temperature, pressure, and humidity. Thus, the business problem is how to predict the power production as a function of these environmental conditions, in order to maximize the profit. The research community has solved this problem by applying Machine Learning techniques, and has managed to reduce the computational and time costs in comparison with the traditional thermodynamical analysis. Until now, this challenge has been tackled from a batch learning perspective, in which data is assumed to be at rest, and where models do not continuously integrate new information into already constructed models. We present an approach closer to the Big Data and Internet of Things paradigms, in which data are continuously arriving and where models learn incrementally, achieving significant enhancements in terms of data processing (time, memory and computational costs), and obtaining competitive performances. This work compares and examines the hourly electrical power prediction of several streaming regressors, and discusses about the best technique in terms of time processing and predictive performance to be applied on this streaming scenario.https://www.mdpi.com/1996-1073/13/3/740electrical power predictioncombined cycle power plantstream learningonline regression
collection DOAJ
language English
format Article
sources DOAJ
author Jesus L. Lobo
Igor Ballesteros
Izaskun Oregi
Javier Del Ser
Sancho Salcedo-Sanz
spellingShingle Jesus L. Lobo
Igor Ballesteros
Izaskun Oregi
Javier Del Ser
Sancho Salcedo-Sanz
Stream Learning in Energy IoT Systems: A Case Study in Combined Cycle Power Plants
Energies
electrical power prediction
combined cycle power plant
stream learning
online regression
author_facet Jesus L. Lobo
Igor Ballesteros
Izaskun Oregi
Javier Del Ser
Sancho Salcedo-Sanz
author_sort Jesus L. Lobo
title Stream Learning in Energy IoT Systems: A Case Study in Combined Cycle Power Plants
title_short Stream Learning in Energy IoT Systems: A Case Study in Combined Cycle Power Plants
title_full Stream Learning in Energy IoT Systems: A Case Study in Combined Cycle Power Plants
title_fullStr Stream Learning in Energy IoT Systems: A Case Study in Combined Cycle Power Plants
title_full_unstemmed Stream Learning in Energy IoT Systems: A Case Study in Combined Cycle Power Plants
title_sort stream learning in energy iot systems: a case study in combined cycle power plants
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2020-02-01
description The prediction of electrical power produced in combined cycle power plants is a key challenge in the electrical power and energy systems field. This power production can vary depending on environmental variables, such as temperature, pressure, and humidity. Thus, the business problem is how to predict the power production as a function of these environmental conditions, in order to maximize the profit. The research community has solved this problem by applying Machine Learning techniques, and has managed to reduce the computational and time costs in comparison with the traditional thermodynamical analysis. Until now, this challenge has been tackled from a batch learning perspective, in which data is assumed to be at rest, and where models do not continuously integrate new information into already constructed models. We present an approach closer to the Big Data and Internet of Things paradigms, in which data are continuously arriving and where models learn incrementally, achieving significant enhancements in terms of data processing (time, memory and computational costs), and obtaining competitive performances. This work compares and examines the hourly electrical power prediction of several streaming regressors, and discusses about the best technique in terms of time processing and predictive performance to be applied on this streaming scenario.
topic electrical power prediction
combined cycle power plant
stream learning
online regression
url https://www.mdpi.com/1996-1073/13/3/740
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AT igorballesteros streamlearninginenergyiotsystemsacasestudyincombinedcyclepowerplants
AT izaskunoregi streamlearninginenergyiotsystemsacasestudyincombinedcyclepowerplants
AT javierdelser streamlearninginenergyiotsystemsacasestudyincombinedcyclepowerplants
AT sanchosalcedosanz streamlearninginenergyiotsystemsacasestudyincombinedcyclepowerplants
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