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Generative diffusion models for synthetic trajectories of heavy and light particles in turbulence

Authors :
Li, Tianyi
Tommasi, Samuele
Buzzicotti, Michele
Bonaccorso, Fabio
Biferale, Luca
Publication Year :
2024

Abstract

Heavy and light particles are commonly found in many natural phenomena and industrial processes, such as suspensions of bubbles, dust, and droplets in incompressible turbulent flows. Based on a recent machine learning approach using a diffusion model that successfully generated single tracer trajectories in three-dimensional turbulence and passed most statistical benchmarks across time scales, we extend this model to include heavy and light particles. Given the particle type - tracer, light, or heavy - the model can generate synthetic, realistic trajectories with correct fat-tail distributions for acceleration, anomalous power laws, and scale dependent local slope properties. This work paves the way for future exploration of the use of diffusion models to produce high-quality synthetic datasets for different flow configurations, potentially allowing interpolation between different setups and adaptation to new conditions.

Subjects

Subjects :
Physics - Fluid Dynamics

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.05008
Document Type :
Working Paper