Home  
  Our Team  
  Patient Info  
  Services  
   
  Pay My Bill  
  Contact Us  

News for Healthier Living

Data-Driven Modeling Captures Particle Motion in Turbulence

Whether the dust borne on the violent winds of a tornado or the sugar grains in a swirled cup of coffee, the behavior of particles carried along in turbulence is subject to some similarities -- all of them difficult to predict at scale. As described in a recent publication in the Proceedings of the National Academies of Science, a research team led by Los Alamos National Laboratory scientists has developed a first-of-its-kind machine learning framework that models chaotic particle motions in a turbulent flow.

June 11, 2026


June 11 2026

June 10 2026

June 9 2026

June 8 2026

June 7 2026

June 5 2026

June 4 2026

June 3 2026

June 2 2026

June 1 2026

May 31 2026

May 30 2026

May 29 2026

May 28 2026