利用递归神经网络预测 LSST 时代微凝聚类星体中的高放大事件

Joshua Fagin, Eric Paic, Favio Neira, Henry Best, Timo Anguita, Martin Millon, Matthew O'Dowd, Dominique Sluse, Georgios Vernardos
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引用次数: 0

摘要

鲁宾天文台的时空遗留巡天(LSST)等即将开展的宽视场巡天将在10年时间里对数千颗强透镜类星体进行监测。在这些被监测的类星体中,很多都会在吸积盘穿过一个无限放大的苛性点时,通过微透镜发生高倍率事件(HMEs)。微透镜使我们能够绘制出吸积盘穿过苛刻点时的内部区域图,即使是在很大的宇宙学距离上。LSST的观测频率并不适合探测吸积盘的内部区域,因此需要尽早预测HMEs,以触发高频率的多波段或光谱后续观测。在这里,我们模拟了一个10年类星体微透镜光曲线的多样化现实样本,训练出一个递归神经网络(RNN),通过对每个时间步的峰值位置进行分类,在HME发生之前预测HME。这是第一种预测HMEs的深度学习方法。我们估算了在 LSST 期间预测 HME 峰值的预期效果,并对我们的指标在不同节奏策略下的变化情况进行了基准测试。通过类似LSST的观测,我们可以预测大约55%的HME峰值,相当于每年数十到数百个,与HME的数量相比,误报率大约为20%。我们的网络可以在整个LSST巡天中持续应用,为优化后续资源提供重要的警报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting High Magnification Events in Microlensed Quasars in the Era of LSST using Recurrent Neural Networks
Upcoming wide field surveys such as the Rubin Observatory's Legacy Survey of Space and Time (LSST) will monitor thousands of strongly lensed quasars over a 10-year period. Many of these monitored quasars will undergo high magnification events (HMEs) through microlensing as the accretion disk crosses a caustic, places of infinite magnification. Microlensing allows us to map the inner regions of the accretion disk as it crosses a caustic, even at large cosmological distances. The observational cadences of LSST are not ideal for probing the inner regions of the accretion disk, so there is a need to predict HMEs as early as possible to trigger high-cadence multi-band or spectroscopic follow-up observations. Here we simulate a diverse and realistic sample of 10-year quasar microlensing light curves to train a recurrent neural network (RNN) to predict HMEs before they occur by classifying the location of the peaks at each time step. This is the first deep learning approach to predict HMEs. We give estimates at how well we expect to predict HME peaks during LSST and benchmark how our metrics change with different cadence strategies. With LSST-like observations, we can predict approximately 55% of HME peaks corresponding to tens to hundreds per year and a false positive rate of around 20% compared to the number of HMEs. Our network can be continuously applied throughout the LSST survey, providing crucial alerts to optimize follow-up resources.
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