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Autonomous anomaly detection in MeV ultrafast electron diffraction

ORAL

Abstract

MeV ultrafast electron diffraction (MUED) is a pump-probe technique to measure dynamic material structure evolution. An ultrashort laser initiates a structure change which is probed by an ultrashort relativistic electron beam. Diffraction patterns are integrated over many shots to beat low signal-to-noise ratio. However, electron beam instabilities from shot to shot disturb the patterns and increase uncertainty. To enhance the accuracy of MUED, anomalous patterns should be detected and removed from datasets with thousands of patterns.

In this work, we developed a machine learning approach to enable autonomous detection of anomalous diffraction patterns. We constructed a convolutional autoencoder model that reconstructs measured patterns of Ta2NiS5. We evaluated a one-class support vector machine to detect anomalies based on the distribution of: 1. the feature vectors, 2. the reconstruction errors, and implemented: 3. dimensionality reduction of the reconstruction error by principal component analysis or restricted Boltzmann machine. This hybrid structure allows unsupervised anomaly detection constituting a powerful tool to enhance the accuracy of MUED.

Presenters

  • Mariana A Fazio

    University of New Mexico

Authors

  • Mariana A Fazio

    University of New Mexico

  • Salvador Sosa Guitron

    University of New Mexico

  • Destry Monk

    University of New Mexico

  • Junjie Li

    Brookhaven National Laboratory

  • Marcus Babzien

    Brookhaven National Laboratory

  • Mikhail Fedurin

    Brookhaven National Laboratory

  • Mark A Palmer

    Brookhaven National Laboratory

  • Sandra G Biedron

    University of New Mexico, Element Aero

  • Manel Martínez-Ramón

    University of New Mexico