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Research Article
Jan 22, 2021

Damage Classification of Composites Based on Analysis of Lamb Wave Signals Using Machine Learning

Publication: ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part B: Mechanical Engineering
Volume 7, Issue 1

Abstract

Composite materials have a myriad of applications in complex engineering systems, and multiple structural health monitoring (SHM) strategies have been developed. However, these methods are challenging due to signal attenuation and excessive noise interference in composite materials. Signal processing can capture a small difference between the input–output signals associated with the severity of the damage in composites. Thus, the research question is “can signal processing techniques reduce the required number of features and assess the randomness of fatigue damage classification in composite materials using machine learning (ML) algorithms?” To answer this question, piezo-electric signals for carbon fiber reinforced polymer (CFRP) test specimens were taken from NASA Ames prognostics data repository. A framework based on a comparative analysis of signals was developed. For the first specific aim, the effectiveness of features based on statistical condition indicators of the sensor signals were evaluated. For the second specific aim, actuator-sensor signal pair were analyzed using cross-correlation to extract two features. These features were used to train and test four supervised ML algorithms for damage classification and their performance was discussed. For the third specific aim, randomness in the dataset of fatigue damage of the specimens was assessed. Results showed that by signal processing, the requirement of features for training ML was reduced with the improvement in the performance of ML. The randomness was captured by the utilization of two specimens from the same material. This work contributes to the improvement of intelligent damage classification of composite materials, operating under complex working conditions. This article is available in the ASME Digital Collection at https://doi.org/10.1115/1.4048867.

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Information

Published In

Go to ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part B: Mechanical Engineering
ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part B: Mechanical Engineering
Volume 7Issue 1March 2021

History

Received: Feb 26, 2020
Revision received: Aug 23, 2020
Published online: Jan 22, 2021
Published in print: Mar 1, 2021

Authors

Affiliations

Shweta Dabetwar [email protected]
Mem. ASME Department of Mechanical Engineering, Texas Tech University, 805 Boston Avenue, Lubbock, TX 79409 e-mail: [email protected]
Stephen Ekwaro-Osire [email protected]
Fellow ASME
Department of Mechanical Engineering, Texas Tech University, 805 Boston Avenue, Lubbock, TX 79409 e-mail: [email protected]
João Paulo Dias [email protected]
Mem. ASME
Department of Civil and Mechanical Engineering, Shippensburg University of Pennsylvania, 1871 Old Main Drive, Shippensburg, PA 17257 e-mai: [email protected]

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