End-to-End Pipeline for Trigger Detection on Hit and Track Graphs

Tingting Xuan, Yimin Zhu, Giorgian Borca-Tasciuc, Ming Liu, Yu Sun, Cameron Dean, Y. C. Morales, Z. Shi, Dantong Yu
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Abstract

There has been a surge of interest in applying deep learning in particle and nuclear physics to replace labor-intensive offline data analysis with automated online machine learning tasks. This paper details a novel AI-enabled triggering solution for physics experiments in Relativistic Heavy Ion Collider and future Electron-Ion Collider. The triggering system consists of a comprehensive end-to-end pipeline based on Graph Neural Networks that classifies trigger events versus background events, makes online decisions to retain signal data, and enables efficient data acquisition. The triggering system first starts with the coordinates of pixel hits lit up by passing particles in the detector, applies three stages of event processing (hits clustering, track reconstruction, and trigger detection), and labels all processed events with the binary tag of trigger versus background events. By switching among different objective functions, we train the Graph Neural Networks in the pipeline to solve multiple tasks: the edge-level track reconstruction problem, the edge-level track adjacency matrix prediction, and the graph-level trigger detection problem. We propose a novel method to treat the events as track-graphs instead of hit-graphs. This method focuses on intertrack relations and is driven by underlying physics processing. As a result, it attains a solid performance (around 72% accuracy) for trigger detection and outperforms the baseline method using hit-graphs by 2% higher accuracy.
端到端管道触发检测命中和轨迹图
人们对将深度学习应用于粒子和核物理学,用自动化的在线机器学习任务取代劳动密集型的离线数据分析产生了浓厚的兴趣。本文详细介绍了一种新的人工智能触发方案,用于相对论重离子对撞机和未来的电子-离子对撞机的物理实验。触发系统由一个全面的端到端管道组成,该管道基于图神经网络,可对触发事件与背景事件进行分类,做出在线决策以保留信号数据,并实现高效的数据采集。触发系统首先从检测器中经过的粒子点亮的像素命中坐标开始,应用三个阶段的事件处理(命中聚类、轨迹重建、触发检测),用触发与背景事件的二元标记标记所有处理过的事件。通过在不同目标函数之间切换,我们训练流水线中的图神经网络来解决多个任务:边缘级轨道重建问题、边缘级轨道邻接矩阵预测问题和图级触发检测问题。我们提出了一种新的方法来处理事件的轨迹图,而不是命中图。该方法侧重于轨间关系,并由底层物理处理驱动。因此,它在触发检测方面获得了可靠的性能(大约72%的准确率),并且比使用命中图的基准方法的准确率高出2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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