Publications Details
Developing a robust strength model using physically-informed genetic programming
Aragon, Nicole K.; Lim, Hojun; Battaile, Corbett C.; De Zapiain, David M.
The strength of materials is influenced by a range of external conditions, such as temperature and deformation rate. Consequently, materials that demonstrate substantial variations in their mechanical behavior due to fluctuations in temperature and strain rate require complex strength models to accurately predict material performance in real-world applications. To predict such complex behavior, a robust and flexible strength model is necessary. In this work, we utilize genetic programming-based symbolic regression (GPSR) to develop data-driven strength models that accurately represent the measured stress–strain responses of tin across a wide range of strain, strain rate and temperature regimes. The GPSR models are constrained by physically-informed conditions, which leads to significant improvement in extrapolation. The best model is integrated into a multi-physics code to perform Taylor impact simulations, validating the model's accuracy and robustness. The model predictions showed excellent agreement with experimental results, particularly when compared to predictions using traditional strength models.