论文标题
HAWC天文台的γ/强子分离
Gamma/Hadron Separation with the HAWC Observatory
论文作者
论文摘要
高海拔水Cherenkov(HAWC)伽马射线天文台观察到伽玛射线和宇宙射线产生的大气阵雨,其能量从300 GEV到100 TEV超过100。使用基于地面的伽马射线探测器(如HAWC)分析伽马射线源的关键阶段是识别伽马射线或哈德子产生的阵雨。 HAWC天文台每秒记录了大约25,000个事件,Hadron代表了这些事件的绝大多数($> 99.9 \%$)。 HAWC中的标准伽马/强体分离技术使用一个简单的矩形切割,仅涉及两个参数。这项工作描述了通过机器学习方法(增强决策树和神经网络)实施更复杂的伽马/强体分离技术,并总结了HAWC中获得的伽马/强子分离的改善。
The High Altitude Water Cherenkov (HAWC) gamma-ray observatory observes atmospheric showers produced by incident gamma rays and cosmic rays with energy from 300 GeV to more than 100 TeV. A crucial phase in analyzing gamma-ray sources using ground-based gamma-ray detectors like HAWC is to identify the showers produced by gamma rays or hadrons. The HAWC observatory records roughly 25,000 events per second, with hadrons representing the vast majority ($>99.9\%$) of these events. The standard gamma/hadron separation technique in HAWC uses a simple rectangular cut involving only two parameters. This work describes the implementation of more sophisticated gamma/hadron separation techniques, via machine learning methods (boosted decision trees and neural networks), and summarizes the resulting improvements in gamma/hadron separation obtained in HAWC.