Physics-Informed Feature Selection for CFRP Damage Assessment Using ECS and GPR

Muideen Bankole Opejin *

Hobas Pipe Inc., Houston, USA.

Francis Ikechukwu Odinaka

Industrial and System Engineering, Northern Illinois University, DeKalb, USA.

Oyedele Joseph Adewole

Industrial Engineering, Lamar University, Beaumont TX., USA.

*Author to whom correspondence should be addressed.


Abstract

Aims: To develop a physics-based feature selection algorithm to be used in detecting structural damage of CFRP with ECS capacitance data, and to perform a statistical analysis of a Gaussian Process Regression (GPR) model with uncertainty quantification to be tested on a small sample scale.

Dataset: The ECS-CFRP Altabey (2022) dataset (DOI: 10.17632/c9v4zy3555b.1) of 11 progressive fatigue damage conditions (D0-D10) consisting of 78 raw capacitance data (12 self-capacitance and 66 mutual-capacitance) of a CFRP composite pipeline system was used.

Methodology: The research utilized a structured approach to feature selection and validation, including Principal Component Analysis for dimensionality reduction, Random Forest feature selection with cross-validation, and physics-based validation of angular span effects. Gaussian Process Regression was utilized with a Matern 3/2 kernel, and Leave-One-Out Cross-Validation was employed.

Results: The results demonstrate that a reduced, geometry-independent representation, based upon delta capacitance, was found to be more accurate than the entire feature set, with higher values of R² (0.986 vs. 0.974) and lower values of RMSE (0.380 vs. 0.508). The response was also shown to increase with angular span, as expected physically.

Conclusion: A physically interpretable, small five-feature ECS subset, provides better damage-level prediction accuracy with the uncertainty calibrated. The delta-capacitance formulation allows a cross-configuration transferability, which has been a major gap in ECS-based SHM, which has been based on ad-hoc rules of empirical thresholds without interpretable ML explanation.

Keywords: CFRP, electrode configuration sensor, structural health monitoring, delta-capacitance, gaussian process regression, feature selection, physics-informed machine learning, fatigue damage, uncertainty quantification and small sample learning


How to Cite

Opejin, Muideen Bankole, Francis Ikechukwu Odinaka, and Oyedele Joseph Adewole. 2026. “Physics-Informed Feature Selection for CFRP Damage Assessment Using ECS and GPR”. Journal of Engineering Research and Reports 28 (4):351-66. https://doi.org/10.9734/jerr/2026/v28i41868.

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