AEcroscopy: A Software–Hardware Framework Empowering Microscopy Toward Automated and Autonomous Experimentation

Author:

Liu Yongtao1ORCID,Roccapriore Kevin1,Checa Marti1,Valleti Sai Mani2,Yang Jan‐Chi3,Jesse Stephen1,Vasudevan Rama K.1

Affiliation:

1. Center for Nanophase Materials Sciences Oak Ridge National Laboratory Oak Ridge TN 37831 USA

2. Bredesen Center for Interdisciplinary Research University of Tennessee Knoxville TN 37996 USA

3. Department of Physics National Cheng Kung University Tainan 70101 Taiwan

Abstract

AbstractMicroscopy has been pivotal in improving the understanding of structure‐function relationships at the nanoscale and is by now ubiquitous in most characterization labs. However, traditional microscopy operations are still limited largely by a human‐centric click‐and‐go paradigm utilizing vendor‐provided software, which limits the scope, utility, efficiency, effectiveness, and at times reproducibility of microscopy experiments. Here, a coupled software–hardware platform is developed that consists of a software package termed AEcroscopy (short for Automated Experiments in Microscopy), along with a field‐programmable‐gate‐array device with LabView‐built customized acquisition scripts, which overcome these limitations and provide the necessary abstractions toward full automation of microscopy platforms. The platform works across multiple vendor devices on scanning probe microscopes and electron microscopes. It enables customized scan trajectories, processing functions that can be triggered locally or remotely on processing servers, user‐defined excitation waveforms, standardization of data models, and completely seamless operation through simple Python commands to enable a plethora of microscopy experiments to be performed in a reproducible, automated manner. This platform can be readily coupled with existing machine‐learning libraries and simulations, to provide automated decision‐making and active theory‐experiment optimization to turn microscopes from characterization tools to instruments capable of autonomous model refinement and physics discovery.

Funder

U.S. Department of Energy

Publisher

Wiley

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