Abstract/Details

Boosting (In)direct Detection of Dark Matter

Necib, Lina.   Massachusetts Institute of Technology ProQuest Dissertations & Theses,  2017. 10742242.

Abstract (summary)

In this thesis, I study the expected direct and indirect detection signals of dark matter. More precisely, I study three aspects of dark matter; I use hydrodynamic simulations to extract properties of weakly interacting dark matter that are relevant for both direct and indirect detection signals, and construct viable dark matter models with interesting experimental signatures. First, I analyze the full scale Illustris simulation, and find that Galactic indirect detection signals are expected to be largely symmetric, while extragalactic signals are not, due to recent mergers and the presence of substructure. Second; through the study of the high resolution Milky Way simulation Eris, I find that metal-poor halo stars can be used as tracers for the dark matter velocity distribution. I use the Sloan Digital Sky Survey to obtain the first empirical velocity distribution of dark matter, which weakens the expected direct detection limits by up to an order of magnitude at masses [special characters omitted] 10 GeV. Finally, I expand the weakly interacting dark matter paradigm by proposing a new dark matter model called boosted dark matter. This novel scenario contains a relativistic component with interesting hybrid direct and indirect detection signatures at neutrino experiments. I propose two search strategies for boosted dark matter, at Cherenkov-based experiments and future liquid-argon neutrino detectors. (Copies available exclusively from MIT Libraries, libraries.mit.edu/docs - [email protected])

Indexing (details)


Subject
Astrophysics;
Theoretical physics;
Particle physics
Classification
0596: Astrophysics
0753: Theoretical physics
0798: Particle physics
Identifier / keyword
Pure sciences; N-body Simulation; Neutrino Experiment
Title
Boosting (In)direct Detection of Dark Matter
Author
Necib, Lina
Number of pages
0
Degree date
2017
School code
0753
Source
DAI-B 79/02(E), Dissertation Abstracts International
Advisor
Thaler, Jesse
University/institution
Massachusetts Institute of Technology
University location
United States -- Massachusetts
Degree
Ph.D.
Source type
Dissertation or Thesis
Language
English
Document type
Dissertation/Thesis
Dissertation/thesis number
10742242
ProQuest document ID
1970725463
Copyright
Database copyright ProQuest LLC; ProQuest does not claim copyright in the individual underlying works.
Document URL
https://www.proquest.com/docview/1970725463