Application of neural networks to prediction of advanced composite structures mechanical response and behavior
Abstract
Two types of neural networks were used to evaluate acousto-ultrasonic (AU) data for material characterization and mechanical reponse prediction. The neural networks included a simple feedforward network (backpropagation) and a radial basis functions network. Comparisons of results in terms of accuracy and training time are given. Acousto-ultrasonic (AU) measurements were performed on a series of tensile specimens composed of eight laminated layers of continuous, SiC fiber reinforced Ti-15-3 matrix. The frequency spectrum was dominated by frequencies of longitudinal wave resonance through the thickness of the specimen at the sending transducer. The magnitude of the frequency spectrum of the AU signal was used for calculating a stress-wave factor based on integrating the spectral distribution function and used for comparison with neural networks results.
- Publication:
-
Computing Systems in Engineering
- Pub Date:
- 1992
- Bibcode:
- 1992ComSE...3..539C
- Keywords:
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- Composite Structures;
- Fiber Composites;
- Neural Nets;
- Nondestructive Tests;
- Ultrasonic Tests;
- Acoustic Emission;
- Stress Waves;
- Tensile Tests;
- Instrumentation and Photography