通用神经网络与量化全连接神经网络及卷积神经网络在实时信号/背景分类中的性能比较

Arijana Burazin Mišura, J. Musić, J. Ožegović, D. Lelas
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引用次数: 1

摘要

自大型强子对撞机(LHC)项目开始以来,科学家面临的最大问题之一是处理探测器产生的大量数据。针对高亮度LHC相位,研制了一种新的量热计端盖——高粒度量热计(High Granularity calorimeter, HGCAL),用于紧凑介子螺杆管(Compact Muon螺杆管,CMS)探测器的升级。高粒度加上增加的堆积将导致数据速率的巨大增加。因此,需要有效的实时分析方法来从大量后台生产的感兴趣的事件中选择数据。像QKeras这样的专门库的开发,使得目前主要用于离线分析的神经网络(nn)的量化成为可能,因为它们的处理要求很高。神经网络尺寸的减小和输入量化使得它们在有限的资源中作为一种粒子分类策略成为可能。我们提出了用于潜在实时信号/背景分类方法的全连接和卷积神经网络的比较。结果表明,卷积模型在通用和量化情况下都略优于全连接架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Comparison of Generic and Quantized Fully Connected and Convolutional Neural Networks for Real- Time Signal/Background Classification
Since the beginning of the Large Hadron Collider (LHC) project, one of the biggest problems faced by scientists is dealing with the enormous amount of data produced by detectors. For the High Luminosity LHC phase, a new calorimeter endcap named High Granularity Calorimeter (HGCAL) has been developed for the upgrade of the Compact Muon Solenoid (CMS) detector. High granularity together with increased pile-up will result in a huge increase in data rate. Therefore, efficient real-time analysis methods are required to select data coming from events of interest from tremendous background production. The development of specialized libraries, like QKeras, enables the quantization of neural networks (NNs) so far used mostly in the offline analysis due to their high processing requirements. The reduction of NN size together with input quantization makes possible their usage in limited resources as a particle classification strategy. We present a comparison of fully connected and convolutional NNs used for the potential real-time signal/background classification method. Results show that convolutional models slightly outperform fully connected architectures in both generic and quantized cases.
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