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Machine learning-based analysis of an electron spectrometer for high-repetition-rate laser-driven particle acceleration experiments

ORAL

Abstract

Accurately and rapidly diagnosing laser-plasma interactions is often difficult due to the time-intensive nature of the analysis and will only become more so with the rise of high-repetition-rate lasers. Whereas image analysis often takes several seconds even with a well-constructed algorithm, a laser-driven experiment operating at 10 Hz would need parameters of interest extracted in less than 100 ms to allow for real-time feedback and control. Machine learning-based diagnostic analysis can address this problem while maintaining a high degree of accuracy. We report on the application of machine learning to the analysis of a scintillator-based electron spectrometer for high-intensity, laser-plasma experiments at the CSU ALEPH facility. Our approach utilizes a neural network trained on synthetic data and tested on experiments to extract important electron distribution parameters. Leveraging transfer learning, we improved the accuracy of the neural network for analyzing experimental data at the speeds required in high repetition rate experiments.

Publication: K. K. Swanson, et al., "Applications of machine learning to diagnostics for high-repetition rate,<br>laser-driven particle acceleration", Review of Scientific Instruments (submitted).

Presenters

  • Kelly K Swanson

    Lawrence Livermore National Laboratory

Authors

  • Kelly K Swanson

    Lawrence Livermore National Laboratory

  • Derek A Mariscal

    Lawrence Livermore Natl Lab, Lawrence Livermore National Laboratory

  • Ghassan Zeraouli

    Colorado State University

  • Blagoje Z Djordjevic

    Lawrence Livermore National Lab, Lawrence Livermore National Laboratory, Lawrence Livermore Natl Lab

  • Bryan Sullivan

    Colorado State University

  • Ryan Nedbailo

    Colorado State University

  • Graeme G Scott

    Lawrence Livermore National Laboratory, Lawrence Livermore Natl Lab

  • Reed C Hollinger

    Colorado State University

  • Shoujun Wang

    Colorado State University

  • Jorge J Rocca

    Colorado State University

  • Tammy Ma

    Lawrence Livermore Natl Lab, Lawrence Livermore National Laboratory