Exploring higher-order effects in laser-driven ion acceleration via deep learning
POSTER
Abstract
Computer models of intense, laser-driven ion acceleration require expensive particle-in-cell (PIC) simulations that may struggle to capture all the multi-scale, multi-dimensional physics involved. We discuss an approach to ameliorate this deficiency, using a physics-informed, multi-fidelity model that can incorporate physical trends and phenomena at different levels. As the base framework for this study, an ensemble of approximately 10,000 1D PIC simulations was generated to buttress a separate ensemble of hundreds of high-fidelity, one- and two-dimensional simulations. Using transfer learning and multi-fidelity modeling in a deep neural network, one can reproduce the more complex physics at a much smaller cost. The networks trained in this fashion can in turn act as a surrogate model for the simulations themselves, allowing for quick and efficient exploration of the parameter space of interest. Standard figures-of-merit were used as benchmarks such as the hot electron temperature and peak ion energy, in addition to higher-order data such as the fields and particle phase space. These surrogate models are also useful for incorporating more complex scenarios, such as pulse shaping, that are challenging to model systematically let alone execute. We can rapidly identify and explore under what conditions dimensionality becomes a predominant effect as well as the transition between acceleration mechanisms.
*This work was completed under the auspices of the U.S. Department of Energy by Lawrence Livermore National Laboratory under contract DE-AC52-07NA27344 with funding support from the Laboratory Directed Research and Development Program under tracking code 20-ERD-048 and DOE-SC SCW1722.
Publication:Published: B. Z. Djordjević, A. J. Kemp, J. Kim, R. A. Simpson, S. C. Wilks, T. Ma, and D. A. Mariscal , "Modeling laser-driven ion acceleration with deep learning", Physics of Plasmas 28, 043105 (2021) https://doi.org/10.1063/5.0045449
Accepted/Submitted: "Characterizing the acceleration time of laser-driven ion acceleration with data-informed neural networks" by Djordjevic, Blagoje; Kemp, Andreas; Kim, Joohwan; Ludwig, Josh; Simpson, Raspberry; Wilks, Scott; Ma, Tammy; Mariscal, Derek Article reference: PPCF-103407.R1