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Crack localization in glass fiber composite beams by experimental modal analysis and multi variable Gaussian process regression method

S. Rama Krishna (Gayatri Vidya Parishad College of Engineering, Vishakhapatnam, India)
J. Sathish (Gayatri Vidya Parishad College of Engineering, Vishakhapatnam, India)
Talari Rahul Mani Datta (Gayatri Vidya Parishad College of Engineering, Vishakhapatnam, India)
S. Raghu Vamsi (Gayatri Vidya Parishad College of Engineering, Vishakhapatnam, India)

International Journal of Structural Integrity

ISSN: 1757-9864

Article publication date: 5 December 2023

Issue publication date: 10 January 2024

75

Abstract

Purpose

Ensuring the early detection of structural issues in aircraft is crucial for preserving human lives. One effective approach involves identifying cracks in composite structures. This paper employs experimental modal analysis and a multi-variable Gaussian process regression method to detect and locate cracks in glass fiber composite beams.

Design/methodology/approach

The present study proposes Gaussian process regression model trained by the first three natural frequencies determined experimentally using a roving impact hammer method with crystal four-channel analyzer, uniaxial accelerometer and experimental modal analysis software. The first three natural frequencies of the cracked composite beams obtained from experimental modal analysis are used to train a multi-variable Gaussian process regression model for crack localization. Radial basis function is used as a kernel function, and hyperparameters are optimized using the negative log marginal likelihood function. Bayesian conditional probability likelihood function is used to estimate the mean and variance for crack localization in composite structures.

Findings

The efficiency of Gaussian process regression is improved in the present work with the normalization of input data. The fitted Gaussian process regression model validates with experimental modal analysis for crack localization in composite structures. The discrepancy between predicted and measured values is 1.8%, indicating strong agreement between the experimental modal analysis and Gaussian process regression methods. Compared to other recent methods in the literature, this approach significantly improves efficiency and reduces error from 18.4% to 1.8%. Gaussian process regression is an efficient machine learning algorithm for crack localization in composite structures.

Originality/value

The experimental modal analysis results are first utilized for crack localization in cracked composite structures. Additionally, the input data are normalized and employed in a machine learning algorithm, such as the multi-variable Gaussian process regression method, to efficiently determine the crack location in these structures.

Keywords

Citation

Rama Krishna, S., Sathish, J., Rahul Mani Datta, T. and Raghu Vamsi, S. (2024), "Crack localization in glass fiber composite beams by experimental modal analysis and multi variable Gaussian process regression method", International Journal of Structural Integrity, Vol. 15 No. 1, pp. 61-76. https://doi.org/10.1108/IJSI-09-2023-0092

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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