Classifying Lensed Gravitational Waves in the Geometrical Optics Limit with Machine Learning

A. Singh, Ivan S.C. Li, O. Hannuksela, T. Li, Kyungmin Kim
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引用次数: 3

Abstract

Gravitational waves are theorized to be gravitationally lensed when they propagate near massive objects. Such lensing effects cause potentially detectable repeated gravitational wave patterns in ground- and space-based gravitational wave detectors. These effects are difficult to discriminate when the lens is small and the repeated patterns superpose. Traditionally, matched filtering techniques are used to identify gravitational-wave signals, but we instead aim to utilize machine learning techniques to achieve this. In this work, we implement supervised machine learning classifiers (support vector machine, random forest, multi-layer perceptron) to discriminate such lensing patterns in gravitational wave data. We train classifiers with spectrograms of both lensed and unlensed waves using both point-mass and singular isothermal sphere lens models. As the result, classifiers return F1 scores ranging from 0:852 to 0:996, with precisions from 0:917 to 0:992 and recalls ranging from 0:796 to 1:000 depending on the type of classifier and lensing model used. This supports the idea that machine learning classifiers are able to correctly determine lensed gravitational wave signals. This also suggests that in the future, machine learning classifiers may be used as a possible alternative to identify lensed gravitational wave events and to allow us to study gravitational wave sources and massive astronomical objects through further analysis. KEYWORDS: Gravitational Waves; Gravitational Lensing; Geometrical Optics; Machine Learning; Classification; Support Vector Machine; Random Tree Forest; Multi-layer Perceptron
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用机器学习对几何光学极限下的透镜引力波进行分类
引力波在大质量物体附近传播时,理论上是引力透镜的。这种透镜效应可能会在地面和天基引力波探测器中引起可探测的重复引力波模式。当透镜很小并且重复图案重叠时,这些效果很难区分。传统上,匹配滤波技术用于识别引力波信号,但我们的目标是利用机器学习技术来实现这一点。在这项工作中,我们实现了有监督的机器学习分类器(支持向量机、随机森林、多层感知器)来区分引力波数据中的这种透镜模式。我们使用点质量和奇异等温球透镜模型,用透镜波和非透镜波的光谱图来训练分类器。结果,分类器返回的F1分数范围从0:852到0:996,精度从0:917到0:992,召回范围从0:796到1:00,具体取决于所使用的分类器类型和透镜模型。这支持了机器学习分类器能够正确确定透镜引力波信号的观点。这也表明,在未来,机器学习分类器可能被用作识别透镜引力波事件的可能替代方案,并使我们能够通过进一步分析来研究引力波源和大质量天文物体。关键词:引力波;引力透镜;几何光学;机器学习;分类支持向量机;随机森林;多层感知器
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