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Transformer-Based Approach to Enhance Positron Tracking Performance in MEG II
arXiv Physics
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이 매체는 공공·자유 라이선스로 본문을 직접 표시합니다.Abstract
We developed a Transformer-based pattern recognition method for positron track reconstruction in the MEG II experiment.
The model acts as a classifier to remove pileup hits in the MEG II drift chamber, which operates under a high pileup occupancy of 35 - 50 %.
The trained model significantly improved hit purity, leading to enhancements in tracking efficiency and resolution by 15 % and 5 %, respectively, at a muon stopping rate of $5\times 10^7 \mu$/sec.
This improvement translates into an approximately 10 % increase in the sensitivity of the $\mu\to e\gamma$ branching ratio measurement.
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