European Physical Journal C: Particles and Fields (Nov 2021)

Thermal WIMPs and the scale of new physics: global fits of Dirac dark matter effective field theories

  • Peter Athron,
  • Neal Avis Kozar,
  • Csaba Balázs,
  • Ankit Beniwal,
  • Sanjay Bloor,
  • Torsten Bringmann,
  • Joachim Brod,
  • Christopher Chang,
  • Jonathan M. Cornell,
  • Ben Farmer,
  • Andrew Fowlie,
  • Tomás E. Gonzalo,
  • Will Handley,
  • Felix Kahlhoefer,
  • Anders Kvellestad,
  • Farvah Mahmoudi,
  • Markus T. Prim,
  • Are Raklev,
  • Janina J. Renk,
  • Andre Scaffidi,
  • Pat Scott,
  • Patrick Stöcker,
  • Aaron C. Vincent,
  • Martin White,
  • Sebastian Wild,
  • Jure Zupan,
  • GAMBIT Collaboration

DOI
https://doi.org/10.1140/epjc/s10052-021-09712-6
Journal volume & issue
Vol. 81, no. 11
pp. 1 – 33

Abstract

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Abstract We assess the status of a wide class of WIMP dark matter (DM) models in light of the latest experimental results using the global fitting framework GAMBIT. We perform a global analysis of effective field theory (EFT) operators describing the interactions between a gauge-singlet Dirac fermion and the Standard Model quarks, the gluons and the photon. In this bottom-up approach, we simultaneously vary the coefficients of 14 such operators up to dimension 7, along with the DM mass, the scale of new physics and several nuisance parameters. Our likelihood functions include the latest data from Planck, direct and indirect detection experiments, and the LHC. For DM masses below 100 GeV, we find that it is impossible to satisfy all constraints simultaneously while maintaining EFT validity at LHC energies. For new physics scales around 1 TeV, our results are influenced by several small excesses in the LHC data and depend on the prescription that we adopt to ensure EFT validity. Furthermore, we find large regions of viable parameter space where the EFT is valid and the relic density can be reproduced, implying that WIMPs can still account for the DM of the universe while being consistent with the latest data.