Characterizing Quantum-Dot-Doped Liquid Scintillator for Applications to Neutrino Detectors
Journal of Instrumentation(2012)SCI 4区
Abstract
Liquid scintillator detectors are widely used in modern neutrino studies. The unique optical properties of semiconducting nanocrystals, known as quantum dots, offer intriguing possibilities for improving standard liquid scintillator, especially when combined with new photodetection technology. Quantum dots also provide a means to dope scintillator with candidate isotopes for neutrinoless double beta decay searches. In this work, the first studies of the scintillation properties of quantum-dot-doped liquid scintillator using both UV light and radioactive sources are presented.
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Scintillators, scintillation and light emission processes (solid, gas and liquid scintillators),Particle identification methods,Large detector systems for particle and astroparticle physics
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