Developing Data-driven deformation models for tin using symbolic regression and genetic programming
ORAL
Abstract
Tin (Sn) exhibits complex deformation behavior characterized by significant dependence of strength on temperature and strain rate, which complicates predicting its deformation using traditional strength models. This work addresses this challenge by training a data-driven model on a set of compression tests at various strain rates and temperatures using genetic programming to perform symbolic regression. The strength model developed in this work showed increased accuracy compared to traditional strength models. Furthermore, the developed strength model adequately predicted independent experimental data (i.e., data that was not used to train the model). Results demonstrate that genetic programming successfully established a valid analytical function that adequately characterizes the temperature and strain rate dependent strength behavior of tin. Lastly, the analytical nature of the resultant model enables the possibility to perform high strain-rate simulations given that it can be incorporated into high-fidelity simulation codes.
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Presenters
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David O Montes de Oca Zapiain
Sandia National laboratories
Authors
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David O Montes de Oca Zapiain
Sandia National laboratories
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Nicole Aragon
Sandia National Laboratories
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J Matthew D Lane
Sandia National Laboratories
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Jay Carroll
Sandia National Laboratories
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Zachary Casias
Sandia National Laboratories
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Corbett Battaile
Sandia National Laboratories
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Saryu J Fensin
Los Alamos Natl Lab
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Hojun Lim
Sandia National Laboratories