Demonstration of an AI-driven workflow for autonomous high-resolution scanning microscopy

Author:

Kandel SaugatORCID,Zhou Tao,Babu Anakha V.,Di Zichao,Li XinxinORCID,Ma XuedanORCID,Holt MartinORCID,Miceli AntoninoORCID,Phatak CharudattaORCID,Cherukara Mathew J.ORCID

Abstract

AbstractModern scanning microscopes can image materials with up to sub-atomic spatial and sub-picosecond time resolutions, but these capabilities come with large volumes of data, which can be difficult to store and analyze. We report the Fast Autonomous Scanning Toolkit (FAST) that addresses this challenge by combining a neural network, route optimization, and efficient hardware controls to enable a self-driving experiment that actively identifies and measures a sparse but representative data subset in lieu of the full dataset. FAST requires no prior information about the sample, is computationally efficient, and uses generic hardware controls with minimal experiment-specific wrapping. We test FAST in simulations and a dark-field X-ray microscopy experiment of a WSe2 film. Our studies show that a FAST scan of <25% is sufficient to accurately image and analyze the sample. FAST is easy to adapt for any scanning microscope; its broad adoption will empower general multi-level studies of materials evolution with respect to time, temperature, or other parameters.

Funder

DOE | SC | Basic Energy Sciences

DOE | LDRD | Argonne National Laboratory

Publisher

Springer Science and Business Media LLC

Subject

General Physics and Astronomy,General Biochemistry, Genetics and Molecular Biology,General Chemistry,Multidisciplinary

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