logo
ResearchBunny Logo
Synthetic Lagrangian turbulence by generative diffusion models

Physics

Synthetic Lagrangian turbulence by generative diffusion models

T. Li, L. Biferale, et al.

This groundbreaking research by T. Li, L. Biferale, F. Bonaccorso, M. A. Scarpolini, and M. Buzzicotti introduces a machine learning approach leveraging a state-of-the-art diffusion model to generate single-particle trajectories in three-dimensional turbulence. The model excels in reproducing statistical benchmarks, paving the way for high-quality synthetic datasets with significant applications.... show more
Abstract
Lagrangian turbulence lies at the core of numerous applied and fundamental problems related to the physics of dispersion and mixing in engineering, biofluids, the atmosphere, oceans and astrophysics. Despite exceptional theoretical, numerical and experimental efforts conducted over the past 30 years, no existing models are capable of faithfully reproducing statistical and topological properties exhibited by particle trajectories in turbulence. We propose a machine learning approach, based on a state-of-the-art diffusion model, to generate single-particle trajectories in three-dimensional turbulence at high Reynolds numbers, thereby bypassing the need for direct numerical simulations or experiments to obtain reliable Lagrangian data. Our model demonstrates the ability to reproduce most statistical benchmarks across time scales, including the fat-tail distribution for velocity increments, the anomalous power law and the increased intermittency around the dissipative scale. Slight deviations are observed below the dissipative scale, particularly in the acceleration and flatness statistics. Surprisingly, the model exhibits strong generalizability for extreme events, producing events of higher intensity and rarity that still match the realistic statistics. This paves the way for producing synthetic high-quality datasets for pretraining various downstream applications of Lagrangian turbulence.
Publisher
Nature Machine Intelligence
Published On
Apr 17, 2024
Authors
T. Li, L. Biferale, F. Bonaccorso, M. A. Scarpolini, M. Buzzicotti
Tags
machine learning
diffusion model
three-dimensional turbulence
high Reynolds numbers
synthetic datasets
velocity increment distributions
anomalous power laws
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 12+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny