Calorimeter shower simulations are often the bottleneck in simulation time for particle physics detectors. A lot of effort is currently spent on optimizing generative architectures for specific detector geometries, which generalize poorly. We develop a geometry-aware autoregressive model on a range of calorimeter geometries such that the model learns to adapt its energy deposition depending on the size and position of the cells. This is a key proof-of-concept step towards building a model that can generalize to new unseen calorimeter geometries with little to no additional training. Such a model can replace the hundreds of generative models used for calorimeter simulation in a Large Hadron Collider experiment. For the study of future detectors, such a model will dramatically reduce the large upfront investment usually needed to generate simulations.
翻译:热量阵列模拟往往是粒子物理探测器模拟时间的瓶颈。 目前,在优化特定探测器的基因结构方面付出了大量努力,这种结构的概括性很差。 我们开发了一组热量计的几何测量自动递减模型,使模型学会根据细胞大小和位置调整其能量沉积。 这是一个关键的概念证明步骤,有助于建立一个模型,可以概括为新的看不见热量阵列地形,而无需再加多少培训。 这样的模型可以取代大型哈德龙对流机实验中用于热量计模拟的数百个基因模型。 对于未来探测器的研究,这种模型将极大地减少生成模拟所需的大量前方投资。