A semisupervised machine learning search for never-seen gravitational-wave sources

Tom Marianer, D. Poznanski, J. Prochaska
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引用次数: 9

Abstract

By now, tens of gravitational-wave (GW) events have been detected by the LIGO and Virgo detectors. These GWs have all been emitted by compact binary coalescence, for which we have excellent predictive models. However, there might be other sources for which we do not have reliable models. Some are expected to exist but to be very rare (e.g., supernovae), while others may be totally unanticipated. So far, no unmodeled sources have been discovered, but the lack of models makes the search for such sources much more difficult and less sensitive. We present here a search for unmodeled GW signals using semi-supervised machine learning. We apply deep learning and outlier detection algorithms to labeled spectrograms of GW strain data, and then search for spectrograms with anomalous patterns in public LIGO data. We searched $\sim 13\%$ of the coincident data from the first two observing runs. No candidates of GW signals were detected in the data analyzed. We evaluate the sensitivity of the search using simulated signals, we show that this search can detect spectrograms containing unusual or unexpected GW patterns, and we report the waveforms and amplitudes for which a $50\%$ detection rate is achieved.
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半监督机器学习搜索从未见过的引力波源
到目前为止,LIGO和Virgo探测器已经探测到数十次引力波事件。这些gw都是由紧致双星并结发出的,对此我们有很好的预测模型。然而,可能还有其他来源,我们没有可靠的模型。有些被认为是存在的,但非常罕见(例如,超新星),而另一些可能完全没有预料到。到目前为止,还没有发现未建模的源,但缺乏模型使得寻找这些源变得更加困难和不那么敏感。我们在这里提出了使用半监督机器学习搜索未建模的GW信号。我们将深度学习和离群检测算法应用于GW应变数据的标记谱图,然后在公开的LIGO数据中搜索具有异常模式的谱图。我们从前两次观测运行中搜索了13 %的一致数据。在分析的数据中没有检测到GW信号的候选信号。我们使用模拟信号评估了搜索的灵敏度,我们表明这种搜索可以检测到包含异常或意外GW模式的频谱图,并且我们报告了波形和幅度,其中达到了50%的检测率。
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