4.7 Article

The impact of self-interacting dark matter on the intrinsic alignments of galaxies

期刊

出版社

OXFORD UNIV PRESS
DOI: 10.1093/mnras/stab1741

关键词

dark matter; large-scale structure of Universe

资金

  1. Dutch Ministry of Education, Culture and Science (OCW)
  2. European Research Council [AMD-776247-6]

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The study finds that self-interactions of dark matter can leave a long-lasting imprint on galaxy shape correlations, inducing mass-dependent suppression in the intrinsic alignment signal. This suggests that self-interactions can impact structure outside the core of clusters and have a scale-dependent effect on the intrinsic alignment signal.
The formation and evolution of galaxies is known to be sensitive to tidal processes leading to intrinsic correlations between their shapes and orientations. Such correlations can be measured to high significance today, suggesting that cosmological information can be extracted from them. Among the most pressing questions in particle physics and cosmology is the nature of dark matter. If dark matter is self-interacting, it can leave an imprint on galaxy shapes. In this work, we investigate whether self-interactions can produce a long-lasting imprint on intrinsic galaxy shape correlations. We investigate this observable at low redshift (z < 0.4) using a state-of-the-art suite of cosmological hydro-dynamical simulations where the dark matter model is varied. We find that dark matter self-interactions induce a mass-dependent suppression in the intrinsic alignment signal by up to 50 per cent out to tens of mega-parsecs, showing that self-interactions can impact structure outside the very core of clusters. We find evidence that self-interactions have a scale-dependent impact on the intrinsic alignment signal that is sufficiently different from signatures introduced by differing baryonic physics prescriptions, suggesting that it is detectable with upcoming all-sky surveys.

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