Researchers use AI to create first 100-billion-star Milky Way simulation
Washington DC [US], November 17 (ANI): Researchers combined deep learning with high-resolution physics to create the first Milky Way model that tracks over 100 billion stars individually.
Researchers led by Keiya Hirashima at the RIKEN Centre for Interdisciplinary Theoretical and Mathematical Sciences (iTHEMS) in Japan, working with partners from the University of Tokyo and Universitat de Barcelona in Spain, have created the first Milky Way simulation capable of tracking more than 100 billion individual stars across 10 thousand years of evolution.
The team achieved this milestone by pairing artificial intelligence (AI) with advanced numerical simulation techniques.
Their model includes 100 times more stars than the most sophisticated earlier simulations and was generated more than 100 times faster.
The same strategy could also be applied to large-scale Earth system studies, including climate and weather research.
Scientists have not previously been able to model a galaxy as large as the Milky Way while maintaining fine detail at the level of single stars.
As a result, the smallest "particle" in those models usually represents a group of roughly 100 stars, which averages away the behaviour of individual stars and limits the accuracy of small-scale processes.
Shrinking the timestep means dramatically greater computational effort. Even with today's best physics-based models, simulating the Milky Way star by star would require about 315 hours for every 1 million years of galactic evolution.
A New Deep Learning Approach
To overcome these barriers, Hirashima and his team designed a method that blends a deep learning surrogate model with standard physical simulations.
This AI component allowed the researchers to capture the galaxy's overall behaviour while still modelling small-scale events, including the fine details of individual supernovae.
This hybrid AI approach could reshape many areas of computational science that require linking small-scale physics with large-scale behaviour.
Fields such as meteorology, oceanography, and climate modelling face similar challenges and could benefit from tools that accelerate complex, multi-scale simulations.
"This achievement also shows that AI-accelerated simulations can move beyond pattern recognition to become a genuine tool for scientific discovery -- helping us trace how the elements that formed life itself emerged within our galaxy," added Hirashima. (ANI)
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