Liu, Dehao
GrainPaint: A multi-scale diffusion-based generative model for microstructure reconstruction of large-scale objects
Hoffman, Nathan, Diniz, Cashen, Liu, Dehao, Rodgers, Theron, Tran, Anh, Fuge, Mark
Simulation-based approaches to microstructure generation can suffer from a variety of limitations, such as high memory usage, long computational times, and difficulties in generating complex geometries. Generative machine learning models present a way around these issues, but they have previously been limited by the fixed size of their generation area. We present a new microstructure generation methodology leveraging advances in inpainting using denoising diffusion models to overcome this generation area limitation. We show that microstructures generated with the presented methodology are statistically similar to grain structures generated with a kinetic Monte Carlo simulator, SPPARKS.* These authors contributed equally to this work.
Label Propagation Training Schemes for Physics-Informed Neural Networks and Gaussian Processes
Zhong, Ming, Liu, Dehao, Arroyave, Raymundo, Braga-Neto, Ulisses
This paper proposes a semi-supervised methodology for training physics-informed machine learning methods. This includes self-training of physics-informed neural networks and physics-informed Gaussian processes in isolation, and the integration of the two via co-training. We demonstrate via extensive numerical experiments how these methods can ameliorate the issue of propagating information forward in time, which is a common failure mode of physics-informed machine learning.