New take on machine learning helps us ‘scale up’ phase transitions
Researchers from Tokyo Metropolitan University have enhanced “super-resolution” machine learning techniques to study phase transitions. They identified key features of how large arrays of interacting particles behave at different temperatures by simulating tiny arrays before using a convolutional neural network to generate a good estimate of what a larger array would look like using correlation configurations. The massive saving in computational cost may realize unique ways of understanding how materials behave.
Click to rate this post!
[Total: 0 Average: 0]
You have already voted for this article
(Visited 4 times, 1 visits today)