The physics programs of current and future collider experiments necessitate the development of surrogate simulators for calorimeter showers. While much progress has been made in the development of generative models for this task, they have typically been evaluated in simplified scenarios and for single particles. This is particularly true for the challenging task of highly granular calorimeter simulation. For the first time, this work studies the use of highly granular generative calorimeter surrogates in a realistic simulation application. We introduce DDML, a generic library which enables the combination of generative calorimeter surrogates with realistic detectors implemented using the DD4hep toolkit. We compare two different generative models - one operating on a regular grid representation, and the other using a less common point cloud approach. In order to disentangle methodological details from model performance, we provide comparisons to idealized simulators which directly sample representations of different resolutions from the full simulation ground-truth. We then systematically evaluate model performance on post-reconstruction benchmarks for electromagnetic shower simulation. Beginning with a typical single particle study, we introduce a first multi-particle benchmark based on di-photon separations, before studying a first full-physics benchmark based on hadronic decays of the tau lepton. Our results indicate that models operating on a point cloud can achieve a favorable balance between speed and accuracy for highly granular calorimeter simulation compared to those which operate on a regular grid representation.
翻译:当前及未来对撞机实验的物理项目需要开发用于量能器簇射的替代模拟器。尽管在此任务的生成模型开发方面已取得显著进展,但这些模型通常仅在简化场景和单粒子条件下进行评估,对于高粒度量能器模拟这一挑战性任务尤为如此。本研究首次在高粒度生成式量能器替代模拟的实际应用场景中进行探索。我们引入了DDML——一个通用库,能够将生成式量能器替代模拟器与基于DD4hep工具包实现的真实探测器相结合。我们比较了两种不同的生成模型:一种基于规则网格表示,另一种采用较少见的点云方法。为区分方法细节与模型性能,我们提供了与理想化模拟器的对比,后者直接从完整模拟的基准真值中对不同分辨率的表示进行采样。随后,我们系统评估了模型在电磁簇射模拟的后重建基准测试中的表现。从典型的单粒子研究出发,我们首先引入了基于双光子分离的首个多粒子基准测试,进而研究了基于τ轻子强子衰变的首个完整物理基准测试。结果表明,与基于规则网格表示的模型相比,采用点云操作的模型在高粒度量能器模拟中能实现速度与精度的更优平衡。