Gaussian process regression of chirplet decomposed ultrasonic B-scans of a simulated design case
The US Air Force seeks to implement damage tolerant lifecycle management of composite structures. Nondestructive characterization of damage is a key input to this framework. One approach to characterization is model-based inversion of the ultrasonic response from damage features; however, the comput...
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Format: | Tagungsbericht |
Sprache: | eng |
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Zusammenfassung: | The US Air Force seeks to implement damage tolerant lifecycle management of composite structures. Nondestructive characterization of damage is a key input to this framework. One approach to characterization is model-based inversion of the ultrasonic response from damage features; however, the computational expense of modeling the ultrasonic waves within composites is a major hurdle to implementation. A surrogate forward model with sufficient accuracy and greater computational efficiency is therefore critical to enabling model-based inversion and damage characterization. In this work, a surrogate model is developed on the simulated ultrasonic response from delamination-like structures placed at different locations within a representative composite layup. The resulting B-scans are decomposed via the chirplet transform, and a Gaussian process model is trained on the chirplet parameters. The quality of the surrogate is tested by comparing the B-scan for a delamination configuration not represented within the training data set. The estimated B-scan has a maximum error of ∼15% for an estimated reduction in computational runtime of ∼95% for 200 function calls. This considerable reduction in computational expense makes full 3D characterization of impact damage tractable. |
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ISSN: | 0094-243X 1551-7616 |
DOI: | 10.1063/1.5031602 |