基于点云模型的高颗粒度 TPC dN/dx 重建方法研究

16 Jul 2026, 17:00
10m
湛江厅 (2号楼三楼)

湛江厅

2号楼三楼

Speaker

Guang ZHAO (高能所)

Description

Particle identification (PID) is essential for future particle physics experiments such as the Circular Electron-Positron Collider (CEPC) and the Future Circular Collider. A high-granularity Time Projection Chamber (TPC) not only provides precise tracking but also enables dN/dx measurements for PID. The dN/dx method estimates the number of primary ionization electrons, offering significant improvements in PID performance. However, accurate reconstruction remains a major challenge for this approach. In this presentation, we introduce a deep learning model, the Graph Point Transformer (GraphPT), for dN/dx reconstruction. In our approach, TPC data are represented as point clouds. The network backbone adopts a U-Net architecture built upon graph neural networks, incorporating an attention mechanism for node aggregation specifically optimized for point cloud processing. The proposed GraphPT model surpasses the traditional truncated mean method in PID performance. In particular, for the CEPC baseline TPC, the K/pi separation power improves by approximately 10% to 20% in the momentum interval from 5 to 20 GeV/c.

pubilished in JHEP: https://doi.org/10.1007/JHEP04(2026)021

请选择分会 粒子物理实验技术

Primary authors

Guang ZHAO (高能所) Huirong Qi (Institute of High Energy Physics, CAS) Jinxian Zhang Linghui Wu (IHEP) Mingyi Dong (IHEP) Sheng-Sen Sun (Institute of High Energy Physics) Yue Chang (Central China Normal University (CCNU))

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