LAPSE:2023.4113
Published Article
LAPSE:2023.4113
A Text-Mining Approach to Assess the Failure Condition of Wind Turbines Using Maintenance Service History
February 22, 2023
Abstract
Detecting and determining which systems or subsystems of a wind turbine have more failures is essential to improve their design, which will reduce the costs of generating wind power. Two of the most critical failures, the generator and gearbox, are analyzed and characterized with four metrics. This failure analysis usually begins with the identification of the turbine’s condition, a process normally performed by an expert examining the wind turbine’s service history. This is a time-consuming task, as a human expert has to examine each service entry. To automate this process, a new methodology is presented here, which is based on a set of steps to preprocess and decompose the service history to find relevant words and sentences that discriminate an unhealthy wind turbine period from a healthy one. This is achieved by means of two classifiers fed with the matrix of terms from the decomposed document of the training wind turbines. The classifiers can extract essential words and determine the conditions of new turbines of unknown status using the text from the service history, emulating what a human expert manually does when labelling the training set. Experimental results are promising, with accuracy and F-score above 90% in some cases. Condition monitoring system can be improved and automated using this system, which helps the expert in the tedious task of identifying the relevant words from the turbine service history. In addition, the system can be retrained when new knowledge becomes available and may therefore always be as accurate as a human expert. With this new tool, the expert can focus on identifying which systems or subsystems can be redesigned to increase the efficiency of wind turbines.
Keywords
classification, fault diagnosis, Renewable and Sustainable Energy, service history, text mining, wind turbine
Suggested Citation
Blanco-M. A, Marti-Puig P, Gibert K, Cusidó J, Solé-Casals J. A Text-Mining Approach to Assess the Failure Condition of Wind Turbines Using Maintenance Service History. (2023). LAPSE:2023.4113
Author Affiliations
Blanco-M. A: Data and Signal Processing Group, University of Vic—Central University of Catalonia, 08500 Vic, Catalonia, Spain [ORCID]
Marti-Puig P: Data and Signal Processing Group, University of Vic—Central University of Catalonia, 08500 Vic, Catalonia, Spain [ORCID]
Gibert K: Knowledge Engineering and Machine Learning Group at Intelligent Data Science and Artificial Intelligence Research Center (KEMLG-at-IDEAI), Polytechnic University of Catalonia, 08034 Barcelona, Catalonia, Spain [ORCID]
Cusidó J: Data and Signal Processing Group, University of Vic—Central University of Catalonia, 08500 Vic, Catalonia, Spain; Smartive-ITESTIT SL, 08225 Terrassa, Catalonia, Spain [ORCID]
Solé-Casals J: Data and Signal Processing Group, University of Vic—Central University of Catalonia, 08500 Vic, Catalonia, Spain [ORCID]
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Journal Name
Energies
Volume
12
Issue
10
Article Number
E1982
Year
2019
Publication Date
2019-05-23
ISSN
1996-1073
Version Comments
Original Submission
Other Meta
PII: en12101982, Publication Type: Journal Article
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LAPSE:2023.4113
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https://doi.org/10.3390/en12101982
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Feb 22, 2023
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