论文标题
多通用核心循环超新星检测的深度学习
Deep learning for multimessenger core-collapse supernova detection
论文作者
论文摘要
从核心偏离超新星(CCSN)爆炸中检测引力波是一项具有挑战性的任务,尚未实现,其中它是多个信使(包括中微子和电磁信号)之间的连接的关键。在这项工作中,我们提出了一种基于机器学习技术检测此类信号的方法。我们通过在第二次观察运行中的高级Ligo-Virgo网络中对实际噪声数据注入信号来测试其鲁棒性。我们使用对应于模拟现象学信号注射的时间频率图像训练了新开发的迷你重新连接神经网络,该图像模仿了CCSNE的3D数值模拟中获得的波形。使用该算法,我们能够从现象学模板库和CCSNE的实际数值3D模拟中识别信号。我们计算了检测效率与源距离,获得了高于15的信号与噪声比,检测效率为70%,以低于5%的误报率。我们还注意到,在O2运行的情况下,可以检测到距离1 kpc的信号,同时将效率降低到60%,事件距离达到了高达14 kpc的值。
The detection of gravitational waves from core-collapse supernova (CCSN) explosions is a challenging task, yet to be achieved, in which it is key the connection between multiple messengers, including neutrinos and electromagnetic signals. In this work, we present a method for detecting these kind of signals based on machine learning techniques. We tested its robustness by injecting signals in the real noise data taken by the Advanced LIGO-Virgo network during the second observation run, O2. We trained a newly developed Mini-Inception Resnet neural network using time-frequency images corresponding to injections of simulated phenomenological signals, which mimic the waveforms obtained in 3D numerical simulations of CCSNe. With this algorithm we were able to identify signals from both our phenomenological template bank and from actual numerical 3D simulations of CCSNe. We computed the detection efficiency versus the source distance, obtaining that, for signal to noise ratio higher than 15, the detection efficiency is 70 % at a false alarm rate lower than 5%. We notice also that, in the case of O2 run, it would have been possible to detect signals emitted at 1 kpc of distance, whilst lowering down the efficiency to 60%, the event distance reaches values up to 14 kpc.