Bulletin of the American Physical Society
APS March Meeting 2022
Volume 67, Number 3
Monday–Friday, March 14–18, 2022; Chicago
Session Y32: Material Science and Machine Learning II
8:00 AM–9:48 AM,
Friday, March 18, 2022
Room: McCormick Place W-192B
Sponsoring
Unit:
GDS
Chair: William Ratcliff, GDS
Abstract: Y32.00006 : Superconductor and Critical Temperature Predictions Using Machine Learning
9:00 AM–9:12 AM
Presenter:
Benjamin W Roter
(Northwestern University)
Authors:
Benjamin W Roter
(Northwestern University)
Sasa V Dordevic
(Univ of Akron)
Nemanja Ninkovic
(The University of Akron)
supervised machine learning to predict their critical temperatures. Using
only chemical composition as the predictor, our calculations
achieved a coefficient of determination R$^{2} \simeq 0.93$, which is
comparable to, and in some cases higher than, similar estimates using
other artificial intelligence techniques. Based on this machine
learning model, we predicted several new superconductors with
high critical temperatures. We also used unsupervised machine
learning to find possible clustering structure in the
superconducting materials data. Conventional clustering methods
like k-means, hierarchical or Gaussian mixtures, as well a clustering
method based on self-organizing maps (a type of artificial neural network),
were used. Our results indicate that machine learning can achieve,
and in some cases exceed, human level performance in clustering
superconductors.
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