First model independent results from DAMA/LIBRA-phase2
R. Bernabei (1), P. Belli (1), A. Bussolotti (1), F. Cappella (2), V., Caracciolo (3), R. Cerulli (1), C.J. Dai (4), A. d'Angelo (2), A. Di Marco, (1), H.L. He (4), A. Incicchitti (2), X.H. Ma (4), A. Mattei (2), V. Merlo, (1), F. Montecchia (1,5), X.D. Sheng (4), Z.P. Ye (4

TL;DR
The DAMA/LIBRA-phase2 experiment provides model-independent evidence of annual modulation consistent with dark matter particles, with high statistical significance, improved detection capabilities, and no identified systematics mimicking the signal.
Contribution
This work presents the first model-independent results from DAMA/LIBRA-phase2, confirming dark matter detection with enhanced experimental setup and analysis over multiple annual cycles.
Findings
9.5 sigma evidence of annual modulation in 1-6 keV range
Modulation amplitude of 0.0103 cpd/kg/keV
Measured phase at 145 days, period near 1 year
Abstract
The first model independent results obtained by the DAMA/LIBRA-phase2 experiment are presented. The data have been collected over 6 annual cycles corresponding to a total exposure of 1.13 ton yr, deep underground at the Gran Sasso National Laboratory (LNGS) of the I.N.F.N. The DAMA/LIBRA-phase2 apparatus, 250 kg highly radio-pure NaI(Tl), profits from a second generation high quantum efficiency photomultipliers and of new electronics with respect to DAMA/LIBRA-phase1. The improved experimental configuration has also allowed to lower the software energy threshold. New data analysis strategies are presented. The DAMA/LIBRA-phase2 data confirm the evidence of a signal that meets all the requirements of the model independent Dark Matter (DM) annual modulation signature, at 9.5 C.L. in the energy region (1-6) keV. In the energy region between 2 and 6 keV, where…
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