Improved Intelligent Condition Monitoring with Diagnostic Indicator Selection

In this study, a predictive maintenance (PdM) system focused on feature selection for the detection and classification of simulated defects in wind turbine blades has been developed. Traditional PdM systems often rely on numerous, broadly chosen diagnostic indicators derived from vibration data, yet...

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Main Authors: Urszula Jachymczyk, Paweł Knap, Krzysztof Lalik
Format: Article
Language:English
Published: MDPI AG 2024-12-01
Series:Sensors
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Online Access:https://www.mdpi.com/1424-8220/25/1/137
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author Urszula Jachymczyk
Paweł Knap
Krzysztof Lalik
author_facet Urszula Jachymczyk
Paweł Knap
Krzysztof Lalik
author_sort Urszula Jachymczyk
collection DOAJ
description In this study, a predictive maintenance (PdM) system focused on feature selection for the detection and classification of simulated defects in wind turbine blades has been developed. Traditional PdM systems often rely on numerous, broadly chosen diagnostic indicators derived from vibration data, yet many of these features offer little added value and may even degrade model performance. General feature selection methods might not be suitable for PdM solutions, as information regarding observed faults is often misinterpreted or lost. To address these issues, a structured feature selection method based on correlation analysis supplemented with comprehensive visual evaluation was proposed. Unlike generic dimensionality reduction techniques, this approach preserves critical domain-specific information and avoids misinterpretation of fault indicators. By applying the proposed method, it was possible to successfully filter out redundant features, enabling simpler machine learning (ML) models to match or even surpass the performance of more complex deep learning (DL) architectures. The best results were achieved by a deep neural network trained on the full dataset, with accuracy, precision, recall, and F1 score of 97.30%, 97.23%, 97.23%, and 97.23%, respectively, while the top-performing ML model (a voting classifier trained on the reduced dataset) attained scores of 97.13%, 96.99%, 96.95%, and 96.94%. The proposed method for reducing condition indicators successfully decreased their number by approximately 3.27 times, simultaneously significantly reducing computational time of prediction, reaching up to 50% reduction for complex models. In doing so, we lowered computational demands and improved classification efficiency without compromising accuracy for ML models. Although feature reduction did not similarly benefit the metrics for DL models, these findings highlight that well-chosen, domain-relevant condition indicators can streamline data input and deliver interpretable, cost-effective PdM solutions suitable for industrial applications.
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spelling doaj-art-2c7cdbdb70f64393b0dc548ecb1a0d972025-01-10T13:21:00ZengMDPI AGSensors1424-82202024-12-0125113710.3390/s25010137Improved Intelligent Condition Monitoring with Diagnostic Indicator SelectionUrszula Jachymczyk0Paweł Knap1Krzysztof Lalik2Faculty of Mechanical Engineering and Robotics, AGH University of Krakow, 30-059, Krakow, PolandFaculty of Mechanical Engineering and Robotics, AGH University of Krakow, 30-059, Krakow, PolandFaculty of Mechanical Engineering and Robotics, AGH University of Krakow, 30-059, Krakow, PolandIn this study, a predictive maintenance (PdM) system focused on feature selection for the detection and classification of simulated defects in wind turbine blades has been developed. Traditional PdM systems often rely on numerous, broadly chosen diagnostic indicators derived from vibration data, yet many of these features offer little added value and may even degrade model performance. General feature selection methods might not be suitable for PdM solutions, as information regarding observed faults is often misinterpreted or lost. To address these issues, a structured feature selection method based on correlation analysis supplemented with comprehensive visual evaluation was proposed. Unlike generic dimensionality reduction techniques, this approach preserves critical domain-specific information and avoids misinterpretation of fault indicators. By applying the proposed method, it was possible to successfully filter out redundant features, enabling simpler machine learning (ML) models to match or even surpass the performance of more complex deep learning (DL) architectures. The best results were achieved by a deep neural network trained on the full dataset, with accuracy, precision, recall, and F1 score of 97.30%, 97.23%, 97.23%, and 97.23%, respectively, while the top-performing ML model (a voting classifier trained on the reduced dataset) attained scores of 97.13%, 96.99%, 96.95%, and 96.94%. The proposed method for reducing condition indicators successfully decreased their number by approximately 3.27 times, simultaneously significantly reducing computational time of prediction, reaching up to 50% reduction for complex models. In doing so, we lowered computational demands and improved classification efficiency without compromising accuracy for ML models. Although feature reduction did not similarly benefit the metrics for DL models, these findings highlight that well-chosen, domain-relevant condition indicators can streamline data input and deliver interpretable, cost-effective PdM solutions suitable for industrial applications.https://www.mdpi.com/1424-8220/25/1/137predictive maintenancecondition indicatorsartificial intelligencefeature selectionvibrodiagnosticsfault identification
spellingShingle Urszula Jachymczyk
Paweł Knap
Krzysztof Lalik
Improved Intelligent Condition Monitoring with Diagnostic Indicator Selection
Sensors
predictive maintenance
condition indicators
artificial intelligence
feature selection
vibrodiagnostics
fault identification
title Improved Intelligent Condition Monitoring with Diagnostic Indicator Selection
title_full Improved Intelligent Condition Monitoring with Diagnostic Indicator Selection
title_fullStr Improved Intelligent Condition Monitoring with Diagnostic Indicator Selection
title_full_unstemmed Improved Intelligent Condition Monitoring with Diagnostic Indicator Selection
title_short Improved Intelligent Condition Monitoring with Diagnostic Indicator Selection
title_sort improved intelligent condition monitoring with diagnostic indicator selection
topic predictive maintenance
condition indicators
artificial intelligence
feature selection
vibrodiagnostics
fault identification
url https://www.mdpi.com/1424-8220/25/1/137
work_keys_str_mv AT urszulajachymczyk improvedintelligentconditionmonitoringwithdiagnosticindicatorselection
AT pawełknap improvedintelligentconditionmonitoringwithdiagnosticindicatorselection
AT krzysztoflalik improvedintelligentconditionmonitoringwithdiagnosticindicatorselection