학술논문

Denoising diffusion models with geometry adaptation for high fidelity calorimeter simulation
Document Type
Working Paper
Source
Subject
Physics - Instrumentation and Detectors
High Energy Physics - Experiment
High Energy Physics - Phenomenology
Physics - Data Analysis, Statistics and Probability
Language
Abstract
Simulation is crucial for all aspects of collider data analysis, but the available computing budget in the High Luminosity LHC era will be severely constrained. Generative machine learning models may act as surrogates to replace physics-based full simulation of particle detectors, and diffusion models have recently emerged as the state of the art for other generative tasks. We introduce CaloDiffusion, a denoising diffusion model trained on the public CaloChallenge datasets to generate calorimeter showers. Our algorithm employs 3D cylindrical convolutions, which take advantage of symmetries of the underlying data representation. To handle irregular detector geometries, we augment the diffusion model with a new geometry latent mapping (GLaM) layer to learn forward and reverse transformations to a regular geometry that is suitable for cylindrical convolutions. The showers generated by our approach are nearly indistinguishable from the full simulation, as measured by several different metrics.
Comment: 21 pages, 9 figures. V3: Update to match journal version