论文标题
LHCB快速模拟的生成对抗网络
Generative Adversarial Networks for LHCb Fast Simulation
论文作者
论文摘要
LHCB是在CERN大型强子对撞机上运行的主要实验之一。物理计划的丰富性和LHCB测量值的提高导致需要更大的模拟样本。当升级的LHCB检测器将开始在LHC运行中收集数据3时,这种需求将进一步增加。鉴于未来几年承诺为生产Monte Carlo模拟事件的计算资源,将强制使用快速模拟技术来应对预期的数据集大小。如今,正在研究广泛用于计算机视觉和图像处理的LHCB生成模型中,以加速Cherenkov检测器的量热计和高级响应中的阵雨。我们证明,这种方法提供了高保真的结果以及显着的速度增加,并讨论了这些结果的可能含义。我们还向LHCB仿真软件和验证测试提供了该算法的实现。
LHCb is one of the major experiments operating at the Large Hadron Collider at CERN. The richness of the physics program and the increasing precision of the measurements in LHCb lead to the need of ever larger simulated samples. This need will increase further when the upgraded LHCb detector will start collecting data in the LHC Run 3. Given the computing resources pledged for the production of Monte Carlo simulated events in the next years, the use of fast simulation techniques will be mandatory to cope with the expected dataset size. In LHCb generative models, which are nowadays widely used for computer vision and image processing are being investigated in order to accelerate the generation of showers in the calorimeter and high-level responses of Cherenkov detector. We demonstrate that this approach provides high-fidelity results along with a significant speed increase and discuss possible implication of these results. We also present an implementation of this algorithm into LHCb simulation software and validation tests.