Differentiable Physics-Neural Models enable Learning of Non-Markovian Closures for Accelerated Coarse-Grained Physics Simulations
PositiveArtificial Intelligence
- A new hybrid physics-neural model has been developed that significantly accelerates coarse-grained physics simulations, reducing computation time from hours to under one minute. This model predicts scalar transport in complex domains by jointly learning physical model parameterization and a non-Markovian neural closure model, achieving high accuracy with minimal training data.
- This advancement is crucial for researchers and industries relying on accurate and efficient simulations of physical phenomena, as it allows for faster decision-making and analysis in various applications, from materials science to environmental studies.
- The integration of neural networks with traditional physics models reflects a growing trend in artificial intelligence, where machine learning techniques are increasingly applied to solve complex scientific problems, enhancing the capability to model dynamic systems and improve predictive accuracy across multiple domains.
— via World Pulse Now AI Editorial System
