LGMTRL-SCIMar 22, 2021

Automated and Autonomous Experiment in Electron and Scanning Probe Microscopy

arXiv:2103.12165v13 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of integrating machine learning into microscopy experiments to improve efficiency and data quality for researchers in physics and materials science, but it is incremental as it builds on existing concepts without introducing new methods.

The paper analyzes pathways for automated and autonomous experiments in scanning probe and electron microscopy, arguing that automation should focus on routine operations and low-latency decision-making rather than excluding human operators.

Machine learning and artificial intelligence (ML/AI) are rapidly becoming an indispensable part of physics research, with domain applications ranging from theory and materials prediction to high-throughput data analysis. In parallel, the recent successes in applying ML/AI methods for autonomous systems from robotics through self-driving cars to organic and inorganic synthesis are generating enthusiasm for the potential of these techniques to enable automated and autonomous experiment (AE) in imaging. Here, we aim to analyze the major pathways towards AE in imaging methods with sequential image formation mechanisms, focusing on scanning probe microscopy (SPM) and (scanning) transmission electron microscopy ((S)TEM). We argue that automated experiments should necessarily be discussed in a broader context of the general domain knowledge that both informs the experiment and is increased as the result of the experiment. As such, this analysis should explore the human and ML/AI roles prior to and during the experiment, and consider the latencies, biases, and knowledge priors of the decision-making process. Similarly, such discussion should include the limitations of the existing imaging systems, including intrinsic latencies, non-idealities and drifts comprising both correctable and stochastic components. We further pose that the role of the AE in microscopy is not the exclusion of human operators (as is the case for autonomous driving), but rather automation of routine operations such as microscope tuning, etc., prior to the experiment, and conversion of low latency decision making processes on the time scale spanning from image acquisition to human-level high-order experiment planning.

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