LAPSE:2023.26449
Published Article

LAPSE:2023.26449
An End-to-End, Real-Time Solution for Condition Monitoring of Wind Turbine Generators
April 3, 2023
Abstract
Data-driven wind generator condition monitoring systems largely rely on multi-stage processing involving feature selection and extraction followed by supervised learning. These stages require expert analysis, are potentially error-prone and do not generalize well between applications. In this paper, we introduce a collection of end-to-end Convolutional Neural Networks for advanced condition monitoring of wind turbine generators. End-to-end models have the benefit of utilizing raw, unstructured signals to make predictions about the parameters of interest. This feature makes it easier to scale an existing collection of models to new predictive tasks (e.g., new failure types) since feature extracting steps are not required. These automated models achieve low Mean Squared Errors in predicting the generator operational state (40.85 for Speed and 0.0018 for Load) and high accuracy in diagnosing rotor demagnetization failures (99.67%) by utilizing only raw current signals. We show how to create, deploy and run the collection of proposed models in a real-time setting using a laptop connected to a test rig via a data acquisition card. Based on a sampling rate of 5 kHz, predictions are stored in an efficient time series database and monitored using a dynamic visualization framework. We further discuss existing options for understanding the decision process behind the predictions made by the models.
Data-driven wind generator condition monitoring systems largely rely on multi-stage processing involving feature selection and extraction followed by supervised learning. These stages require expert analysis, are potentially error-prone and do not generalize well between applications. In this paper, we introduce a collection of end-to-end Convolutional Neural Networks for advanced condition monitoring of wind turbine generators. End-to-end models have the benefit of utilizing raw, unstructured signals to make predictions about the parameters of interest. This feature makes it easier to scale an existing collection of models to new predictive tasks (e.g., new failure types) since feature extracting steps are not required. These automated models achieve low Mean Squared Errors in predicting the generator operational state (40.85 for Speed and 0.0018 for Load) and high accuracy in diagnosing rotor demagnetization failures (99.67%) by utilizing only raw current signals. We show how to create, deploy and run the collection of proposed models in a real-time setting using a laptop connected to a test rig via a data acquisition card. Based on a sampling rate of 5 kHz, predictions are stored in an efficient time series database and monitored using a dynamic visualization framework. We further discuss existing options for understanding the decision process behind the predictions made by the models.
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Keywords
condition monitoring, convolutional neural networks, generator, real-time diagnostic, wind turbine
Suggested Citation
Stetco A, Ramirez JM, Mohammed A, Djurović S, Nenadic G, Keane J. An End-to-End, Real-Time Solution for Condition Monitoring of Wind Turbine Generators. (2023). LAPSE:2023.26449
Author Affiliations
Stetco A: Department of Computer Science, University of Manchester, Manchester M13 9PL, UK [ORCID]
Ramirez JM: Department of Electrical and Electronic Engineering, University of Manchester, Manchester M1 3BB, UK
Mohammed A: Department of Electrical and Electronic Engineering, University of Manchester, Manchester M1 3BB, UK
Djurović S: Department of Electrical and Electronic Engineering, University of Manchester, Manchester M1 3BB, UK [ORCID]
Nenadic G: Department of Computer Science, University of Manchester, Manchester M13 9PL, UK
Keane J: Department of Computer Science, University of Manchester, Manchester M13 9PL, UK
Ramirez JM: Department of Electrical and Electronic Engineering, University of Manchester, Manchester M1 3BB, UK
Mohammed A: Department of Electrical and Electronic Engineering, University of Manchester, Manchester M1 3BB, UK
Djurović S: Department of Electrical and Electronic Engineering, University of Manchester, Manchester M1 3BB, UK [ORCID]
Nenadic G: Department of Computer Science, University of Manchester, Manchester M13 9PL, UK
Keane J: Department of Computer Science, University of Manchester, Manchester M13 9PL, UK
Journal Name
Energies
Volume
13
Issue
18
Article Number
E4817
Year
2020
Publication Date
2020-09-15
ISSN
1996-1073
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Original Submission
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PII: en13184817, Publication Type: Journal Article
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LAPSE:2023.26449
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https://doi.org/10.3390/en13184817
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