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Update on the Iron Opacity Experiments on the NIF

WORKSHOP ON ASTROPHYSICAL OPACITIES(2018)

Los Alamos Natl Lab

Cited 1|Views96
Abstract
Recent iron opacity experiments on the Sandia National Laboratories Z machine have reported up to factors of two discrepancies between theoretical and experimental results. Much effort has been invested in identifying experimental errors as well as revisiting opacity theories, but a resolution of the discrepancies has not been forthcoming. We emphasize the discrepancies present a fundamental theoretical challenge. To help resolve this question, an experimental platform for opacity experiments is being developed at the National Ignition Facility (NIF). This platform will be able to replicate the experimental conditions of the Z experiments and also extend the measurements to other temperatures and densities. Experiments to date have demonstrated a satisfactory X-ray backlighting source and have achieved the appropriate plasma conditions in the opacity sample. Some initial iron data have been taken, but problems remain with backgrounds and with the spectrometer used to make the measurements. The path forward for correcting these problems is presented. We expect that data for comparing with the Z experiments will be available within a year.
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