Broad searches for continuous gravitational wave signals rely on hierarchies of follow-up stages for candidates above a given significance threshold. An important step to simplify these follow-ups and reduce the computational cost is to bundle together in a single follow-up nearby candidates. This step is called clustering and we investigate carrying it out with a deep learning network. In our first paper [1], we implemented a deep learning clustering network capable of correctly identifying clusters due to large signals. In this paper, a network is implemented that can detect clusters due to much fainter signals. These two networks are complementary and we show that a cascade of the two networks achieves an excellent detection efficiency across a wide range of signal strengths, with a false alarm rate comparable/lower than that of methods currently in use.
翻译:对连续重力波信号的广泛搜索取决于对超过某一重要临界值的候选人的后续阶段的等级结构。 简化这些后续跟踪和降低计算成本的一个重要步骤是将附近的候选人集中在一起进行单一的后续跟踪。 这个步骤被称为集群,我们用一个深层学习网络来调查。 在我们的第一份文件[1]中,我们实施了一个深层次的学习集群网络,能够正确识别因大信号而形成的群集。在这份文件中,我们实施了一个能够检测由于更微弱信号而导致的群集的网络。这两个网络是互补的,并且我们表明,两个网络的联队在广泛的信号强项中取得了极佳的探测效率,其假警报率与目前使用的方法相似/低。