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Summary of Test Results of MQXFS1—The First Short Model 150 Mm Aperture Nb3Sn Quadrupole for the High-Luminosity LHC Upgrade

IEEE Transactions on Applied Superconductivity(2017)

Fermilab Natl Accelerator Lab

Cited 33|Views98
Abstract
The development of Nb3Sn quadrupole magnets for the High-Luminosity LHC upgrade is a joint venture between the US LHC Accelerator Research Program (LARP)* and CERN with the goal of fabricating large aperture quadrupoles for the LHC interaction regions (IR). The inner triplet (low-β) NbTi quadrupoles in the IR will be replaced by the stronger Nb3Sn magnets boosting the LHC program of having 10-fold increase in integrated luminosity after the foreseen upgrades. Previously, LARP conducted successful tests of short and long models with up to 120 mm aperture. The first short 150 mm aperture quadrupole model MQXFS1 was assembled with coils fabricated by both CERN and LARP. The magnet demonstrated a strong performance at Fermilab's vertical magnet test facility reaching the LHC operating limits. This paper reports the latest results from MQXFS1 tests with changed prestress levels. The overall magnet performance, including quench training and memory, ramp rate, and temperature dependence, is also summarized.
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High Luminosity Large Hadron Collider (LHC),interaction regions,low-beta quadrupoles,Nb3Sn magnets
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