Litcius/Paper detail

Automated crystal system identification from electron diffraction patterns using multiview opinion fusion machine learning

Jie Chen, Hengrui Zhang, Carolin B. Wahl, Wei Liu, Chad A. Mirkin, Vinayak P. Dravid, Daniel W. Apley, Wei Chen

2023Proceedings of the National Academy of Sciences23 citationsDOIOpen Access PDF

Abstract

A bottleneck in high-throughput nanomaterials discovery is the pace at which new materials can be structurally characterized. Although current machine learning (ML) methods show promise for the automated processing of electron diffraction patterns (DPs), they fail in high-throughput experiments where DPs are collected from crystals with random orientations. Inspired by the human decision-making process, a framework for automated crystal system classification from DPs with arbitrary orientations was developed. A convolutional neural network was trained using evidential deep learning, and the predictive uncertainties were quantified and leveraged to fuse multiview predictions. Using vector map representations of DPs, the framework achieves a testing accuracy of 0.94 in the examples considered, is robust to noise, and retains remarkable accuracy using experimental data. This work highlights the ability of ML to be used to accelerate experimental high-throughput materials data analytics.

Topics & Concepts

BottleneckComputer scienceConvolutional neural networkThroughputFuse (electrical)Artificial intelligenceMachine learningAnalyticsProcess (computing)Support vector machineIdentification (biology)Artificial neural networkPattern recognition (psychology)Data miningPhysicsWirelessOperating systemBiologyQuantum mechanicsBotanyTelecommunicationsEmbedded systemMachine Learning in Materials ScienceX-ray Diffraction in CrystallographyComputational Drug Discovery Methods