Getting the most out of dark matter observations and experiments
by
DrAnnika Peter(California Institute of Technology)
→
Europe/Stockholm
FA32
FA32
Description
Dark matter, constituting a fifth of the mass-energy in the Universe
today, is one of the major "known unknowns" in physics. There are
currently four approaches to determining the nature of dark matter,
assuming it is composed of at least one new species of particle: 1)
creation in collider experiments; 2) indirect detection via its
annihilation or decay products; 3) direct detection; and 4)
observations sensitive to the gravity of dark matter. For the latter
three approaches, event rates are not only sensitive to the "physics"
of dark matter (mass, cross sections, and the theory in which the dark
matter particles live) but to the "astrophysics" of dark matter as
well, namely the phase-space density of dark matter throughout the
Milky Way and other galaxies and its evolution through cosmic time.
In this talk, I will demonstrate how to get robust constraints on the
particle-physics properties of dark matter either by careful modeling
the astrophysics properties of dark matter or by elevating the
astrophysics properties of dark matter as something to be extracted
from future data sets alongside particle-physics parameters, and which
approach (modeling vs. empirical) is more useful for given problems.
As an example, I will show which aspects of the local dark-matter
phase-space density can be understood through modeling and which
aspects may be possible to infer empirically, and what the
implications are for determining the particle-physics of dark matter
from direct and indirect detection. I will conclude with some
comments on extensions of some of the techniques to other future
dark-matter data sets, and indicate which astrophysical aspects of
dark matter are likely to be better understood empirically rather than
modeling.