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Development of an SVR model for the fault diagnosis of large-scale doubly-fed wind turbines using SCADA data

Authors :
Huawei Wu
Long Wen
Qi Zhao
Kang Zhang
Wei Chen
Lida Liao
Mingzhu Tang
Bin Huang
Tang, Mingzhu
Chen, Wei
Zhao, Qi
Wu, Huawei
Long, Wen
Huang, Bin
Liao, Lida
Zhang, Kang
Source :
Energies; Volume 12; Issue 17; Pages: 3396, Energies, Vol 12, Iss 17, p 3396 (2019)
Publication Year :
2019
Publisher :
MDPI AG : Switzerland, 2019.

Abstract

Fault diagnosis and forecasting contribute significantly to the reduction of operating and maintenance associated costs, as well as to improve the resilience of wind turbine systems. Different from the existing fault diagnosis approaches using monitored vibration and acoustic data from the auxiliary equipment, this research presents a novel fault diagnosis and forecasting approach underpinned by a support vector regression model using data obtained by the supervisory control and data acquisition system (SCADA) of wind turbines (WT). To operate, the extraction of fault diagnosis features is conducted by measuring SCADA parameters. After that, confidence intervals are set up to guide the fault diagnosis implemented by the support vector regression (SVR) model. With the employment of confidence intervals as the performance indicators, an SVR-based fault detecting approach is then developed. Based on the WT SCADA data and the SVR model, a fault diagnosis strategy for large-scale doubly-fed wind turbine systems is investigated. A case study including a one-year monitoring SCADA data collected from a wind farm in Southern China is employed to validate the proposed methodology and demonstrate how it works. Results indicate that the proposed strategy can support the troubleshooting of wind turbine systems with high precision and effective response. Refereed/Peer-reviewed

Details

Language :
English
Database :
OpenAIRE
Journal :
Energies; Volume 12; Issue 17; Pages: 3396, Energies, Vol 12, Iss 17, p 3396 (2019)
Accession number :
edsair.doi.dedup.....0d9e881d34a071af6ac4f59d7dd719ba