Remaining Useful Life Estimation Framework for the Main Bearing of Wind Turbines Operating in Real Time

Author:

Vieira Januário Leal de Moraes1,Farias Felipe Costa1,Ochoa Alvaro Antonio Villa12ORCID,de Menezes Frederico Duarte12,Costa Alexandre Carlos Araújo da23,da Costa José Ângelo Peixoto12ORCID,de Novaes Pires Leite Gustavo123ORCID,Vilela Olga de Castro3,de Souza Marrison Gabriel Guedes4,Michima Paula Suemy Arruda2ORCID

Affiliation:

1. Department of Higher Education Courses (DACS), Federal Institute of Education, Science and Technology of Pernambuco, Av. Prof Luiz Freire, 500, Recife 50740-545, Brazil

2. Department of Mechanical Engineering, Federal University of Pernambuco, Cidade Universitaria, 1235, Recife 50670-901, Brazil

3. Centro de Energias Renováveis (CER), Universidade Federal de Pernambuco, Cidade Universitaria, 1235, Recife 50670-901, Brazil

4. NEOG—New Energy Options Geração de Energia, Guamaré 59598-000, Brazil

Abstract

The prognosis of wind turbine failures in real operating conditions is a significant gap in the academic literature and is essential for achieving viable performance parameters for the operation and maintenance of these machines, especially those located offshore. This paper presents a framework for estimating the remaining useful life (RUL) of the main bearing using regression models fed operational data (temperature, wind speed, and the active power of the network) collected by a supervisory control and data acquisition (SCADA) system. The framework begins with a careful data filtering process, followed by creating a degradation profile based on identifying the behavior of temperature time series. It also uses a cross-validation strategy to mitigate data scarcity and increase model robustness by combining subsets of data from different available turbines. Support vector, gradient boosting, random forest, and extra trees models were created, which, in the tests, showed an average of 20 days in estimating the remaining useful life and presented mean absolute error (MAE) values of 0.047 and mean squared errors (MSE) of 0.012. As its main contributions, this work proposes (i) a robust and effective regression modeling method for estimating RUL based on temperature and (ii) an approach for dealing with a lack of data, a common problem in wind turbine operation. The results demonstrate the potential of using these forecasts to support the decision making of the teams responsible for operating and maintaining wind farms.

Funder

Rio Amazonas SA—2021

Publisher

MDPI AG

Reference26 articles.

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2. Prognostic Techniques Applied to Maintenance of Wind Turbines: A Concise and Specific Review;Rosas;Renew. Sustain. Energy Rev.,2018

3. A Methodology for Reliability Assessment and Prognosis of Bearing Axial Cracking in Wind Turbine Gearboxes;Guo;Renew. Sustain. Energy Rev.,2020

4. (2010). Maintenance—Maintenance Terminology. NSAI (Standard No. BS EN 13306:2010). Available online: https://www.en-standard.eu/bs-en-13306-2017-maintenance-maintenance-terminology/?gad_source=1&gclid=Cj0KCQjwwMqvBhCtARIsAIXsZpZS1xtdpaIhepDSfK9Ukr8llB0tSP-j860QQhjm2l81JU8jXHbnnDIaAu1TEALw_wcB.

5. Randall, R.B. (2011). Vibration-Based Condition Monitoring, John Wiley & Sons, Ltd. [1st ed.].

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