Denoising diffusion and latent diffusion models for physics field simulations
Yuan Jia, Chi Zhang, Hao Ma, Qiao Zhang, Kai Liu, Chih-Yung Wen

TL;DR
This paper demonstrates the effectiveness of denoising diffusion models, including a latent space variant, for accurate and efficient simulation of complex physical fields such as thermal and flow fields across various regimes.
Contribution
It introduces a conditional DDPM framework for physical field prediction and a latent diffusion model with an autoencoder for reduced computational cost, both validated on diverse flow problems.
Findings
High accuracy in thermal diffusion prediction with ~0.013 error.
Robust performance across incompressible to hypersonic flows.
Latent diffusion reduces training cost while maintaining quality.
Abstract
Accurate prediction of physical fields is critical in various engineering applications, including thermal management in electronic systems, airfoil shape optimization in aerospace, and flow field control in hypersonic vehicles. This study employs the Denoising Diffusion Probabilistic Models (DDPMs) for predicting the temperature field caused by the thermal diffusion, and the flow fields spanning from incompressible to hypersonic regimes. A conditional DDPM framework is first validated with a steady-state thermal diffusion problem by predicting the temperature distribution around a plate with holes. Strong agreement with ground truth data is shown with an average error of approximately 0.013 for plates with a central circular hole. The model also delivers high accuracy in critical regions, such as near the inner circular or square holes. Its performance is further evaluated on…
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Taxonomy
TopicsModel Reduction and Neural Networks · Generative Adversarial Networks and Image Synthesis · Lattice Boltzmann Simulation Studies
