期刊
PHYSICAL REVIEW D
卷 91, 期 5, 页码 -出版社
AMER PHYSICAL SOC
DOI: 10.1103/PhysRevD.91.054015
关键词
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资金
- IMPRS for Precision Tests of Fundamental Symmetries
- National Science Foundation [PHY-1417118]
- Notre Dame Center for Research Computing
- World Premier International Research Center Initiative (WPI), MEXT, Japan
- U.S. Department of Energy [DE-AC02-07CH11359]
- IMPRS for Precision Tests of Fundamental Symmetries
- National Science Foundation [PHY-1417118]
- Notre Dame Center for Research Computing
- World Premier International Research Center Initiative (WPI), MEXT, Japan
- U.S. Department of Energy [DE-AC02-07CH11359]
- Division Of Physics
- Direct For Mathematical & Physical Scien [1417118] Funding Source: National Science Foundation
We map the parameter space for minimal supersymmetric Standard Model neutralino dark matter which freezes out to the observed relic abundance, in the limit that all superpartners except the neutralinos and charginos are decoupled. In this space of relic neutralinos, we show the dominant dark matter annihilation modes, the mass splittings among the electroweakinos, direct detection rates, and collider cross sections. The mass difference between the dark matter and the next-to-lightest neutral and charged states is typically much less than electroweak gauge boson masses. With these small mass differences, the relic neutralino surface is accessible to a future 100 TeV hadron collider, which can discover interneutralino mass splittings down to 1 GeV and thermal relic dark matter neutralino masses up to 1.5 TeV with a few inverse attobarns of luminosity. This coverage is a direct consequence of the increased collider energy: in the Standard Model events with missing transverse momentum in the TeV range have mostly hard electroweak radiation, distinct from the soft radiation shed in compressed electroweakino decays. We exploit this kinematic feature in final states including photons and leptons, tailored to the 100 TeV collider environment.
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