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Gaussian processes for autonomous data acquisition at large-scale synchrotron and neutron facilities

Authors :
Petrus H. Zwart
Paolo Mutti
Daniela M. Ushizima
Steven B. Lee
Katherine C. Elbert
Tobias Weber
Masafumi Fukuto
Aaron Stein
James A. Sethian
Gregory S. Doerk
Paul Steffens
Yannick Le Goc
Martin Boehm
Marcus M. Noack
Esther H. R. Tsai
Ruipeng Li
Eli Rotenberg
Christopher B. Murray
Guillaume Freychet
Kevin G. Yager
Mikhail Zhernenkov
Hoi-Ying N. Holman
Liang Chen
Source :
Nature Reviews Physics. 3:685-697
Publication Year :
2021
Publisher :
Springer Science and Business Media LLC, 2021.

Abstract

The execution and analysis of complex experiments are challenged by the vast dimensionality of the underlying parameter spaces. Although an increase in data-acquisition rates should allow broader querying of the parameter space, the complexity of experiments and the subtle dependence of the model function on input parameters remains daunting owing to the sheer number of variables. New strategies for autonomous data acquisition are being developed, with one promising direction being the use of Gaussian process regression (GPR). GPR is a quick, non-parametric and robust approximation and uncertainty quantification method that can be applied directly to autonomous data acquisition. We review GPR-driven autonomous experimentation and illustrate its functionality using real-world examples from large experimental facilities in the USA and France. We introduce the basics of a GPR-driven autonomous loop with a focus on Gaussian processes, and then shift the focus to the infrastructure that needs to be built around GPR to create a closed loop. Finally, the case studies we discuss show that Gaussian-process-based autonomous data acquisition is a widely applicable method that can facilitate the optimal use of instruments and facilities by enabling the efficient acquisition of high-value datasets. Gaussian process regression (GPR) is a powerful, non-parametric and robust technique for uncertainty quantification and function approximation that can be applied to optimal and autonomous data acquisition. This Review introduces the basics of GPR and discusses several use cases from different fields.

Details

ISSN :
25225820
Volume :
3
Database :
OpenAIRE
Journal :
Nature Reviews Physics
Accession number :
edsair.doi...........71d1861836a46e40f756c036b0470572
Full Text :
https://doi.org/10.1038/s42254-021-00345-y