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Multi-particle reconstruction in the High Granularity Calorimeter using object condensation and graph neural networks

机译:使用物体冷凝和图形神经网络在高粒度量热计中的多粒子重建

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The high-luminosity upgrade of the LHC will come with unprecedented physics and computing challenges. One of these challenges is the accurate reconstruction of particles in events with up to 200 simultaneous protonproton interactions. The planned CMS High Granularity Calorimeter offers fine spatial resolution for this purpose, with more than 6 million channels, but also poses unique challenges to reconstruction algorithms aiming to reconstruct individual particle showers. In this contribution, we propose an end-to-end machine-learning method that performs clustering, classification, and energy and position regression in one step while staying within memory and computational constraints. We employ GravNet, a graph neural network, and an object condensation loss function to achieve this task. Additionally, we propose a method to relate truth showers to reconstructed showers by maximising the energy weighted intersection over union using maximal weight matching. Our results show the efficiency of our method and highlight a promising research direction to be investigated further.
机译:LHC的高亮度升级将带来前所未有的物理和计算挑战。其中一个挑战是准确地重建粒子在最多200个同时的原型预补品相互作用。计划的CMS高粒度量热计为此目的提供了精细的空间分辨率,超过600万个频道,但也为重建算法构成了旨在重建各个粒子淋浴的独特挑战。在这一贡献中,我们提出了一种端到端的机器学习方法,在保持内存和计算约束中,在一步中执行群集,分类和能量和位置回归。我们使用Gravnet,一个图形神经网络和对象冷凝丢失功能来实现这项任务。此外,我们提出了一种方法来通过使用最大重量匹配最大化联盟的能量加权交叉口来提出涉及真实迹象来重建淋浴。我们的结果表明了我们的方法的效率,并突出了进一步调查的有希望的研究方向。

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