Vibrational quality classification of metallic turbine blades under measurement uncertainty
Liangliang Cheng, Vahid Yaghoubi, Wim V. Paepegem, Mathias Kersemans

TL;DR
This paper introduces a robust classification system for metallic turbine blades using vibrational testing, accounting for measurement uncertainties to improve reliability in quality assessment.
Contribution
The study develops the IIMCS classifier employing Interval Mahalanobis Space and BPSO, enhancing robustness against measurement errors in vibrational quality classification.
Findings
IIMCS achieves high robustness under measurement uncertainty.
Monte Carlo simulation effectively assesses classification confidence.
Experimental results demonstrate reliable classification of turbine blades.
Abstract
Non-destructive testing on metallic turbine blades is a challenging task due to their complex geometry. Vibrational test-ing such as Process Compensated Resonance Testing (PCRT) has shown an efficient approach, which first measures the vibrational response of the turbine blades, and then employs a classifier to determine if the quality of the turbine blades are good or bad. Our previous work mainly concentrated on the development of Mahalanobis distance-based classifiers which are fed by the measured vibrational features (such as resonant frequencies). In practice, however, measurement errors could lead to a biased trained classifier, potentially resulting in the wrong quality classifications of the turbine blade. In this study, we investigate the classification problem of turbine blades under measurement uncertainty. For this, the concept of Interval Mahalanobis Space is employed,…
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Taxonomy
TopicsFault Detection and Control Systems · Advanced Sensor Technologies Research · Scientific Measurement and Uncertainty Evaluation
