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X-FAST: A Versatile, High-Throughput, and User-Friendly XUV Femtosecond Absorption Spectroscopy Tabletop Instrument.

Review of Scientific Instruments(2023)

Univ Wisconsin Madison | Helmholtz Zent Berlin Materialien & Energie

Cited 1|Views50
Abstract
We present the X-FAST (XUV Femtosecond Absorption Spectroscopy Tabletop) instrument at the University of Wisconsin-Madison. The instrument produces femtosecond extreme ultraviolet photon pulses via high-harmonic generation in the range of 40-72 eV, as well as optical pump pulses for transient-absorption experiments. The system implements a gas-cooled sample cell that enables studying the dynamics of thermally sensitive thin-film samples. This paper provides potential users with specifications of the optical, vacuum, data acquisition, and sample cooling systems of the X-FAST instrument, along with performance metrics and data of an ultrafast laser-induced phase transition in a Ni2MnGa Heusler thin film.
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