Data-Driven Control Techniques for Renewable Energy Conversion Systems: Wind Turbine and Hydroelectric Plants

The interest in the use of renewable energy resources is increasing, especially towards wind and hydro powers, which should be efficiently converted into electric energy via suitable technology tools. To this end, data-driven control techniques represent viable strategies that can be employed for th...

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Main Authors: Silvio Simani, Stefano Alvisi, Mauro Venturini
Format: Article
Language:English
Published: MDPI AG 2019-02-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/8/2/237
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spelling doaj-298dd6b2d66144d7bb51c916c88e28e12020-11-25T01:14:21ZengMDPI AGElectronics2079-92922019-02-018223710.3390/electronics8020237electronics8020237Data-Driven Control Techniques for Renewable Energy Conversion Systems: Wind Turbine and Hydroelectric PlantsSilvio Simani0Stefano Alvisi1Mauro Venturini2Dipartimento di Ingegneria, Università degli Studi di Ferrara, Via Saragat 1E, 44122 Ferrara (FE), ItalyDipartimento di Ingegneria, Università degli Studi di Ferrara, Via Saragat 1E, 44122 Ferrara (FE), ItalyDipartimento di Ingegneria, Università degli Studi di Ferrara, Via Saragat 1E, 44122 Ferrara (FE), ItalyThe interest in the use of renewable energy resources is increasing, especially towards wind and hydro powers, which should be efficiently converted into electric energy via suitable technology tools. To this end, data-driven control techniques represent viable strategies that can be employed for this purpose, due to the features of these nonlinear dynamic processes of working over a wide range of operating conditions, driven by stochastic inputs, excitations and disturbances. Therefore, the paper aims at providing some guidelines on the design and the application of different data-driven control strategies to a wind turbine benchmark and a hydroelectric simulator. They rely on self-tuning PID, fuzzy logic, adaptive and model predictive control methodologies. Some of the considered methods, such as fuzzy and adaptive controllers, were successfully verified on wind turbine systems, and similar advantages may thus derive from their appropriate implementation and application to hydroelectric plants. These issues represent the key features of the work, which provides some details of the implementation of the proposed control strategies to these energy conversion systems. The simulations will highlight that the fuzzy regulators are able to provide good tracking capabilities, which are outperformed by adaptive and model predictive control schemes. The working conditions of the considered processes will be also taken into account in order to highlight the reliability and robustness characteristics of the developed control strategies, especially interesting for remote and relatively inaccessible location of many plants.https://www.mdpi.com/2079-9292/8/2/237wind turbine systemhydroelectric plant simulatormodel-based controldata-driven approachself-tuning controlrobustness and reliability
collection DOAJ
language English
format Article
sources DOAJ
author Silvio Simani
Stefano Alvisi
Mauro Venturini
spellingShingle Silvio Simani
Stefano Alvisi
Mauro Venturini
Data-Driven Control Techniques for Renewable Energy Conversion Systems: Wind Turbine and Hydroelectric Plants
Electronics
wind turbine system
hydroelectric plant simulator
model-based control
data-driven approach
self-tuning control
robustness and reliability
author_facet Silvio Simani
Stefano Alvisi
Mauro Venturini
author_sort Silvio Simani
title Data-Driven Control Techniques for Renewable Energy Conversion Systems: Wind Turbine and Hydroelectric Plants
title_short Data-Driven Control Techniques for Renewable Energy Conversion Systems: Wind Turbine and Hydroelectric Plants
title_full Data-Driven Control Techniques for Renewable Energy Conversion Systems: Wind Turbine and Hydroelectric Plants
title_fullStr Data-Driven Control Techniques for Renewable Energy Conversion Systems: Wind Turbine and Hydroelectric Plants
title_full_unstemmed Data-Driven Control Techniques for Renewable Energy Conversion Systems: Wind Turbine and Hydroelectric Plants
title_sort data-driven control techniques for renewable energy conversion systems: wind turbine and hydroelectric plants
publisher MDPI AG
series Electronics
issn 2079-9292
publishDate 2019-02-01
description The interest in the use of renewable energy resources is increasing, especially towards wind and hydro powers, which should be efficiently converted into electric energy via suitable technology tools. To this end, data-driven control techniques represent viable strategies that can be employed for this purpose, due to the features of these nonlinear dynamic processes of working over a wide range of operating conditions, driven by stochastic inputs, excitations and disturbances. Therefore, the paper aims at providing some guidelines on the design and the application of different data-driven control strategies to a wind turbine benchmark and a hydroelectric simulator. They rely on self-tuning PID, fuzzy logic, adaptive and model predictive control methodologies. Some of the considered methods, such as fuzzy and adaptive controllers, were successfully verified on wind turbine systems, and similar advantages may thus derive from their appropriate implementation and application to hydroelectric plants. These issues represent the key features of the work, which provides some details of the implementation of the proposed control strategies to these energy conversion systems. The simulations will highlight that the fuzzy regulators are able to provide good tracking capabilities, which are outperformed by adaptive and model predictive control schemes. The working conditions of the considered processes will be also taken into account in order to highlight the reliability and robustness characteristics of the developed control strategies, especially interesting for remote and relatively inaccessible location of many plants.
topic wind turbine system
hydroelectric plant simulator
model-based control
data-driven approach
self-tuning control
robustness and reliability
url https://www.mdpi.com/2079-9292/8/2/237
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AT stefanoalvisi datadrivencontroltechniquesforrenewableenergyconversionsystemswindturbineandhydroelectricplants
AT mauroventurini datadrivencontroltechniquesforrenewableenergyconversionsystemswindturbineandhydroelectricplants
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