论文标题
降级卷积网络以加速检测器模拟
Denoising Convolutional Networks to Accelerate Detector Simulation
论文作者
论文摘要
检测器模拟的高精度对于现代粒子物理实验至关重要。但是,这种准确性具有较高的计算成本,这将通过与下一代设施(例如高光度LHC)相关的大型数据集和复杂的检测器升级加剧。我们使用卷积神经网络(CNN)探讨了基于回归的机器学习(ML)方法的生存能力,以更快,质量较低的探测器模拟“ DENOISE”,从而增加了它们以减少计算负担而产生更高质量的最终结果。 Denoising CNN与经典检测器仿真软件共同起作用,而不是完全替换它,与其他ML模拟方法相比,其可靠性提高了。我们从基于CMS电磁骑热量表中的光子阵雨的原型中获得了有希望的结果。还讨论了未来的方向。
The high accuracy of detector simulation is crucial for modern particle physics experiments. However, this accuracy comes with a high computational cost, which will be exacerbated by the large datasets and complex detector upgrades associated with next-generation facilities such as the High Luminosity LHC. We explore the viability of regression-based machine learning (ML) approaches using convolutional neural networks (CNNs) to "denoise" faster, lower-quality detector simulations, augmenting them to produce a higher-quality final result with a reduced computational burden. The denoising CNN works in concert with classical detector simulation software rather than replacing it entirely, increasing its reliability compared to other ML approaches to simulation. We obtain promising results from a prototype based on photon showers in the CMS electromagnetic calorimeter. Future directions are also discussed.