%0 Conference Paper
%A Burghart, Philipp
%A Boulton, Lewis Anthony
%A Wood, Jonathan Christopher
%A Beinortaite, Judita
%A Björklund Svensson, Jonas Halfdan
%A D'Arcy, Richard
%A Ferran Pousa, Angel
%A Foster, Brian
%A Gonzalez Caminal, Pau
%A Huck, Maryam
%A Jones, Harry
%A Kanekar, Advait
%A Lindstroem, Carl Andreas
%A Loisch, Gregor
%A Long, Tianyun
%A Maier, Andreas
%A Mewes, Steven Mathis
%A Osterhoff, Jens
%A Pena Asmus, Felipe Lars
%A Schröder, Sarah
%A Thévenet, Maxence
%A Wesch, Stephan
%A Wing, Matthew
%A Moortgat-Pick, Gudrid
%T A virtual spectral diagnostic for plasma accelerated bunches at FLASHForward
%I DESY
%M PUBDB-2025-05713
%D 2025
%X Plasma-wakefield acceleration (PWFA) promises to reduce the size of future machines significantly by providing multi-GeV/m acceleration gradients, orders of magnitude higher than conventional RF accelerators. However, PWFA is a process with many non-linear dependencies, making it difficult to understand the influence of input parameters. Moreover, measurements of e.g. energy spectra are destructive, preventing the output beam from being used for applications whilst only allowing for the diagnosis of one bunch in a bunch train simultaneously. Neural networks trained on non-destructive measurements can be used to predict the properties of accelerated bunches, which would provide more insight into sources of variability and potential shot-to-shot, nondestructive measurements for whole bunch trains. Using experimental data collected at FLASHForward - a beam-driven plasma acceleration experiment at DESY, Hamburg - a neural network-based virtual diagnostic predicting the spectral properties of plasma accelerated bunches is being investigated. In this contribution, we present first results from this project.
%B DPG Spring Meeting 2025
%C 31 Mar 2025 - 4 Apr 2025, Göttingen (Germany)
Y2 31 Mar 2025 - 4 Apr 2025
M2 Göttingen, Germany
%F PUB:(DE-HGF)24
%9 Poster
%U https://bib-pubdb1.desy.de/record/642917