论文标题

CMS ECAL中的能量聚类的深度学习技术

Deep learning techniques for energy clustering in the CMS ECAL

论文作者

Valsecchi, Davide

论文摘要

电子和光子在CMS中的重建取决于在电磁热量表(ECAL)的不同晶体中沉积的能量的拓扑聚类。这些簇是通过根据ECAL中电磁淋浴的预期拓扑来聚集相邻晶体来形成的。上游材料的存在(梁管,跟踪器和支撑结构)会导致电子和光子在达到量热计之前开始淋浴。这种效果与3.8T CMS磁场结合在一起,导致能量在主磁场周围的几个群集中传播。为了实现最佳的物理分析能量分辨率,要恢复这些卫星簇中包含的能量至关重要。从历史上看,卫星簇已经使用纯粹的拓扑算法与主要簇相关联,该算法不会试图从其他堆积相互作用(PU)中去除虚假的能量沉积物(PU)。该算法的性能预计在LHC运行3(2022+)期间将降解,因为较大的PU水平和由于ECAL检测器的老化而导致的噪声水平增加。正在研究新方法,这些方法利用了最先进的深度学习体系结构,例如图形神经网络(GNN)和自我发项式算法。这些更复杂的模型改善了能源收集,并且对PU和噪声更具弹性,有助于保留LHC运行1和2期间获得的电子和光子能量分辨率。这项工作将涵盖训练模型的挑战,以及这种新方法提供的机会,可以将ECAL能量测量的粒子识别步骤与全球CMM Photon和Electron的粒子识别统一统一。

The reconstruction of electrons and photons in CMS depends on topological clustering of the energy deposited by an incident particle in different crystals of the electromagnetic calorimeter (ECAL). These clusters are formed by aggregating neighbouring crystals according to the expected topology of an electromagnetic shower in the ECAL. The presence of upstream material (beampipe, tracker and support structures) causes electrons and photons to start showering before reaching the calorimeter. This effect, combined with the 3.8T CMS magnetic field, leads to energy being spread in several clusters around the primary one. It is essential to recover the energy contained in these satellite clusters in order to achieve the best possible energy resolution for physics analyses. Historically satellite clusters have been associated to the primary cluster using a purely topological algorithm which does not attempt to remove spurious energy deposits from additional pileup interactions (PU). The performance of this algorithm is expected to degrade during LHC Run 3 (2022+) because of the larger average PU levels and the increasing levels of noise due to the ageing of the ECAL detector. New methods are being investigated that exploit state-of-the-art deep learning architectures like Graph Neural Networks (GNN) and self-attention algorithms. These more sophisticated models improve the energy collection and are more resilient to PU and noise, helping to preserve the electron and photon energy resolution achieved during LHC Runs 1 and 2. This work will cover the challenges of training the models as well the opportunity that this new approach offers to unify the ECAL energy measurement with the particle identification steps used in the global CMS photon and electron reconstruction.

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