Collider signals and neutralino dark matter detection in relic-density-consistent models without universality
Howard Baer (Florida State U.), Azar Mustafayev (Kansas U.), Eun-Kyung, Park (Bonn U.), Xerxes Tata (Hawaii U.)

TL;DR
This paper explores supersymmetric models with non-universal parameters that align with observed dark matter relic density, analyzing their implications for collider and dark matter detection experiments, and highlighting differences from minimal supergravity models.
Contribution
It introduces and analyzes non-universal supersymmetric models that match relic density constraints and compares their collider and detection signatures to traditional mSUGRA models.
Findings
Many models predict detectable dilepton edges at LHC.
Enhanced neutralino annihilation often increases direct detection rates.
Relic density constraints significantly influence dark matter detection prospects.
Abstract
We present brief synopses of supersymmetric models where either the neutralino composition or its mass is adjusted so that thermal relic neutralinos from the Big Bang saturate the measured abundance of cold dark matter in the universe. We first review minimal supergravity (mSUGRA), and then examine its various one-parameter extensions where we relax the assumed universality of the soft supersymmetry breaking parameters. Our goal is to correlate relic-density-allowed parameter choices with expected phenomena in direct, indirect and collider dark matter search experiments. For every non-universal model, we first provide plots to facilitate the selection of ``dark-matter allowed'' parameter space points, and then present salient features of each model with respect to searches at Tevatron, LHC and ILC and also direct and indirect dark matter searches. We present benchmark scenarios that…
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