Fast prediction of irradiation-induced cascade defects using denoising diffusion probabilistic model
RH Liao and K Xu and YF Liu and ZB Gao and S Jin and LY Liang and GH Lu, NUCLEAR MATERIALS AND ENERGY, 41, 101805 (2024).
DOI: 10.1016/j.nme.2024.101805
Irradiation-induced cascade collisions produce numerous point defects
within materials, which can severely deteriorate their thermo-mechanical
properties and overall performance. We propose a computational scheme
that combines molecular dynamic (MD) simulations with a denoising
diffusion probabilistic model (DDPM) to rapidly and accurately predict
the spatial coordinates of point defects at any given primary knock atom
(PKA) energy, ranging from 0 to 100.0 key. Importantly, this capability
extends to PKA energies that are exclusive from the training data set,
demonstrating the robustness and generalizability of the model. The
proposed scheme has been thoroughly validated by several designed
indicators, including the Fre
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