Construction and characterization of a muon trigger detector for the PSI muEDM experiment
Guan Ming Wong, Tianqi Hu, Samip Basnet, Chavdar Dutsov, Siew Yan Hoh, David H\"ohl, Xingyun Huang, Timothy David Hume, Alexander Johannes J\"ager, Kim Siang Khaw, Meng Lyu, Ljiljana Morvaj, Jun Kai Ng, Angela Papa, Diego Alejandro Sanz Becerra, Philipp Schmidt-Wellenburg

TL;DR
This paper details the design, construction, and testing of a muon trigger detector for the PSI muEDM experiment, aiming to enhance muon EDM measurement sensitivity by over three orders of magnitude.
Contribution
The paper introduces an upgraded muon trigger detector with optimized geometry and integrated electronics, validated through beam tests and detailed simulations for the muEDM experiment.
Findings
The detector achieved ${ ext{~}97 ext{ extperthousand}}$ agreement with simulations.
The system successfully demonstrated selective triggering of storable muon events.
Beam tests confirmed the detector's response and trigger performance.
Abstract
We present the upgraded design, construction, and beam test results for the Muon Trigger Detector (MTD) developed for the muon Electric Dipole Moment (muEDM) experiment at the Paul Scherrer Institute (PSI) in Switzerland. This experiment aims to improve the sensitivity of the muon EDM measurement by more than three orders of magnitude beyond the current limit established by the BNL Muon experiment. Precise identification of storable incoming muons at the entrance of the storage solenoid is essential, as the MTD must rapidly trigger a pulsed magnetic kicker to confine muons in the central region of the solenoid, where a weakly focusing magnetic field is maintained. The MTD comprises two subsystems: a \SI{0.1}{mm}-thick plastic scintillator ``gate detector'' read out by four silicon photomultipliers (SiPMs), and a \SI{5}{mm}-thick CNC-machined plastic scintillator ``active aperture…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
