Precision measurement of the electron energy-loss function in tritium and deuterium gas for the KATRIN experiment
M. Aker, A. Beglarian, J. Behrens, A. Berlev, U. Besserer, B., Bieringer, F. Block, B. Bornschein, L. Bornschein, M. B\"ottcher, T. Brunst,, T. S. Caldwell, R. M. D. Carney, S. Chilingaryan, W. Choi, K. Debowski, M., Deffert, M. Descher, D. D\'iaz Barrero, P. J. Doe, O. Dragoun

TL;DR
This paper precisely measures the electron energy-loss function in tritium and deuterium gases, crucial for reducing systematic uncertainties in the KATRIN neutrino mass experiment's endpoint spectrum analysis.
Contribution
It introduces a semi-empirical model for the electron energy-loss function based on in-situ measurements with novel techniques, improving the accuracy of neutrino mass determination.
Findings
Achieved high-precision energy-loss function measurements in tritium and deuterium gases.
Developed a semi-empirical parametrization fitting experimental data.
Reduced the systematic uncertainty in neutrino mass measurement to below 0.01 eV².
Abstract
The KATRIN experiment is designed for a direct and model-independent determination of the effective electron anti-neutrino mass via a high-precision measurement of the tritium -decay endpoint region with a sensitivity on of 0.2eV/c (90% CL). For this purpose, the -electrons from a high-luminosity windowless gaseous tritium source traversing an electrostatic retarding spectrometer are counted to obtain an integral spectrum around the endpoint energy of 18.6keV. A dominant systematic effect of the response of the experimental setup is the energy loss of -electrons from elastic and inelastic scattering off tritium molecules within the source. We determined the \linebreak energy-loss function in-situ with a pulsed angular-selective and monoenergetic photoelectron source at various tritium-source densities. The data was recorded in integral and…
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