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Explainable AI Algorithms for Vibration Data-Based Fault Detection : Use Case-Adadpted Methods and Critical Evaluation
Mey, Oliver; Neufeld, Deniz (2022): Explainable AI Algorithms for Vibration Data-Based Fault Detection : Use Case-Adadpted Methods and Critical Evaluation, in: Sensors, Basel: MDPI, Jg. 22, Nr. 23, 9037, S. 1–22, doi: 10.3390/s22239037.
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Title of the Journal:
Sensors
ISSN:
1424-8220
Publisher Information:
Year of publication:
2022
Volume:
22
Issue:
23, 9037
Pages:
Language:
English
DOI:
Abstract:
Analyzing vibration data using deep neural networks is an effective way to detect damages in rotating machinery at an early stage. However, the black-box approach of these methods often does not provide a satisfactory solution because the cause of classifications is not comprehensible to humans. Therefore, this work investigates the application of the explainable AI (XAI) algorithms to convolutional neural networks for vibration-based condition monitoring. Thus, the three XAI algorithms GradCAM, LRP and LIME with a modified perturbation strategy are applied to classifications based on the Fourier transform as well as the order analysis of the vibration signal. The following visualization as frequency-RPM maps and order-RPM maps allows for an effective assessment of saliency values for variable periodicity of the data, which translates to a varying rotation speed of a real-world machine. To compare the explanatory power of the XAI methods, investigations are first carried out with a synthetic data set with known class-specific characteristics. Both a visual and a quantitative analysis of the resulting saliency maps are presented. Then, a real-world data set for vibration-based imbalance classification on an electric motor, which runs at a broad range of rotation speeds, is used. The results indicate that the investigated algorithms are each partially successful in providing sample-specific saliency maps which highlight class-specific features and omit features which are not relevant for classification.
GND Keywords: ;  ;  ;  ; 
Zustandsüberwachung
Explainable Artificial Intelligence
Fehlererkennung
Maschinelles Lernen
Sensorische Prüfung
Keywords: ;  ;  ;  ;  ; 
condition monitoring
explainable AI
fault detection
machine learning
order analysis
vibration analysis
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RVK Classification:
Type:
Article
Activation date:
January 12, 2024
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https://fis.uni-bamberg.de/handle/uniba/92744