论文标题
使用机器学习技术提高对Dama/天秤座信号的敏感性
Improving ANAIS-112 sensitivity to DAMA/LIBRA signal with machine learning techniques
论文作者
论文摘要
Dama/Libra观察年度调制的检测率与银河系光环中的暗物质颗粒的预期兼容,已经积累了二十多年的证据。它是直接检测难以捉摸的暗物质的唯一暗示,但与其他非常敏感的实验的负面结果处于强烈的张力,需要临时场景来调和所有当前的实验结果。使用相同的目标材料NAI(TL)测试Dama/libra结果,它消除了对粒子和光晕模型的依赖性,并且是ANAIS-112实验的目标,自2017年8月以来,西班牙的Canfranc Underground Laboratory的数据以112.5 kg的NAI(TL)获取。在非常低的能量下,检测率由非泡沫闪烁事件主导,并且必须进行仔细的事件选择。本文总结了致力于更好地表征和过滤ANAIS-112数据中使用增强决策树(BDT)在ANAIS-112数据中进行贡献的努力,并以高效率培训了这一目标。我们报告了训练群体的选择,确定BDT参数最佳削减的程序,估计了关注区域(ROI)中选择散装闪烁的效率的估计以及对先前过滤的该分析的性能的评估。在ROI的背景拒绝方面取得的改善,但此外,检测效率的提高,推动了Anais-112的敏感性,以测试Dama/Libra年度调制结果,大约3美元$σ$,三年曝光量可能达到5 $σ$,通过将数据延长到8月2022年8月20222年8月的预定5年。
The DAMA/LIBRA observation of an annual modulation in the detection rate compatible with that expected for dark matter particles from the galactic halo has accumulated evidence for more than twenty years. It is the only hint of a direct detection of the elusive dark matter, but it is in strong tension with the negative results of other very sensitive experiments, requiring ad-hoc scenarios to reconcile all the present experimental results. Testing the DAMA/LIBRA result using the same target material, NaI(Tl), removes the dependence on the particle and halo models and is the goal of the ANAIS-112 experiment, taking data at the Canfranc Underground Laboratory in Spain since August 2017 with 112.5 kg of NaI(Tl). At very low energies, the detection rate is dominated by non-bulk scintillation events and careful event selection is mandatory. This article summarizes the efforts devoted to better characterize and filter this contribution in ANAIS-112 data using a boosted decision tree (BDT), trained for this goal with high efficiency. We report on the selection of the training populations, the procedure to determine the optimal cut on the BDT parameter, the estimate of the efficiencies for the selection of bulk scintillation in the region of interest (ROI), and the evaluation of the performance of this analysis with respect to the previous filtering. The improvement achieved in background rejection in the ROI, but moreover, the increase in detection efficiency, push the ANAIS-112 sensitivity to test the DAMA/LIBRA annual modulation result around 3$σ$ with three-year exposure, being possible to reach 5$σ$ by extending the data taking for a few more years than the scheduled 5 years which were due in August 2022.