Characterizing and improving the phonon collection efficiency of KID-based phonon-mediated (KIPM) dark matter detectors
POSTER
Abstract
Probing dark matter candidates with sub-GeV masses requires quantum sensors with sub-eV energy resolutions (σE). The kinetic-inductance-detector-based (KID-based) phonon-mediated (KIPM) detectors have the potential to deliver sub-eV energy resolutions. They also offer possible advantages in readout and sensitivity over the current leading phonon-sensing technology, which uses quasiparticle-trap-assisted transition-edge sensors (TESs). Three prototype KIPM devices have been fabricated and studied. The current detector energy resolution achieved is 318 eV, with the absorbed energy resolution (σEabs) at 2.1 eV. The resolution is limited by a sub-percent phonon collection efficiency (ηph), while TES-based detectors have shown ηph ~ 30%. Understanding the phonon losses in the KIPM detectors and increasing the phonon collection efficiency are critical to improving their energy resolution. This contribution presents an empirical model characterizing the phonon losses to different components in the KIPM detectors and a road map to enhance the KIPM phonon collection efficiency and improve the energy resolution down to sub-eV.
Publication: - https://journals.aps.org/prapplied/pdf/10.1103/PhysRevApplied.22.044045<br>- PhD thesis by Osmond Wen from Caltech in submission process
Presenters
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Junwen Xiong
California Institute of Technology
Authors
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Junwen Xiong
California Institute of Technology
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Osmond Wen
Caltech
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Taylor Aralis
SLAC National Accelerator Laboratory
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Bruce Bumble
JPL
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Yen-Yung Chang
UC Berkeley
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Noah A Kurinsky
SLAC National Accelerator Laboratory; Kavli Institute for Particle Astrophysics & Cosmology
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Karthik Ramanathan
Washington University in St. Louis
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Brandon J Sandoval
Caltech
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Zoe J Smith
Stanford University; SLAC National Accelerator Laboratory; Kavli Institute for Particle Astrophysics & Cosmology, Stanford University
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Dylan J Temples
Fermilab
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Sunil R Golwala
Caltech