Fr. 134.00

Optimized Dark Matter Searches in Deep Observations of Segue 1 with MAGIC

English · Hardback

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Description

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This thesis presents the results of indirect dark matter searches in the gamma-ray sky of the near Universe, as seen by the MAGIC Telescopes. The author has proposed and led the 160 hours long observations of the dwarf spheroidal galaxy Segue 1, which is the deepest survey of any such object by any Cherenkov telescope so far. Furthermore, she developed and completely characterized a new method, dubbed "Full Likelihood", that optimizes the sensitivity of Cherenkov instruments for detection of gamma-ray signals of dark matter origin. Compared to the standard analysis techniques, this novel approach introduces a sensitivity improvement of a factor of two (i.e. it requires 4 times less observation time to achieve the same result). In addition, it allows a straightforward merger of results from different targets and/or detectors.

By selecting the optimal observational target and combining its very deep exposure with the Full Likelihood analysis of the acquired data, the author has improved the existing MAGIC bounds to the dark matter properties by more than one order of magnitude. Furthermore, for particles more massive than a few hundred GeV, those are the strongest constraints from dwarf galaxies achieved by any gamma-ray instrument, both ground-based or space-borne alike.

List of contents

Introduction.- Dark matter searches.- The MAGIC Telescopes.- Full Likelihood Method.- Dark Matter Searches in Dwarf Spheroidal Galaxy Segue 1 with MAGIC.- Future Prospects.- Conclusions.

About the author

Jelena Aleksić received her PhD from Universitat Autònoma de Barcelona in 2013 for her work with the MAGIC Telescopes. She is currently Postdoctoral Fellow at the Institut de Fisica d’Altes Energies (Barcelona) and member of the Dark Energy Survey (DES) Collaboration.

Summary

This thesis presents the results of indirect dark matter searches in the gamma-ray sky of the near Universe, as seen by the MAGIC Telescopes. The author has proposed and led the 160 hours long observations of the dwarf spheroidal galaxy Segue 1, which is the deepest survey of any such object by any Cherenkov telescope so far. Furthermore, she developed and completely characterized a new method, dubbed “Full Likelihood”, that optimizes the sensitivity of Cherenkov instruments for detection of gamma-ray signals of dark matter origin. Compared to the standard analysis techniques, this novel approach introduces a sensitivity improvement of a factor of two (i.e. it requires 4 times less observation time to achieve the same result). In addition, it allows a straightforward merger of results from different targets and/or detectors.

By selecting the optimal observational target and combining its very deep exposure with the Full Likelihood analysis of the acquired data, the author has improved the existing MAGIC bounds to the dark matter properties by more than one order of magnitude. Furthermore, for particles more massive than a few hundred GeV, those are the strongest constraints from dwarf galaxies achieved by any gamma-ray instrument, both ground-based or space-borne alike.

Product details

Authors Jelena Aleksi¿, Jelena Aleksic, Jelena Aleksić
Publisher Springer, Berlin
 
Languages English
Product format Hardback
Released 01.01.2015
 
EAN 9783319231228
ISBN 978-3-31-923122-8
No. of pages 184
Dimensions 161 mm x 18 mm x 242 mm
Weight 450 g
Illustrations XXXVII, 184 p. 116 illus., 53 illus. in color.
Series Springer Theses
Springer Theses
Subject Natural sciences, medicine, IT, technology > Physics, astronomy > Astronomy

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