有限时间尺度天体物理瞬变的搜索及其基于积分数据的分类

IF 0.8 4区 物理与天体物理 Q3 ASTRONOMY & ASTROPHYSICS
G. Yu. Mozgunov, A. S. Pozanenko, P. Yu. Minaev, I. V. Chelovekov, S. A. Grebenev, A. G. Demin, A. V. Ridnaya, D. S. Svinkin, Yu. R. Temiraev, D. D. Frederiks
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引用次数: 0

摘要

我们在INTEGRAL轨道天文台上的SPI伽马射线光谱仪的反符合屏蔽(ACS)数据中搜索了超长(\({\gtrsim}100\) s)伽马射线瞬变,并用机器学习方法对它们进行了分类。通过“盲”阈值搜索方法,我们在SPI-ACS数据中发现了4364个候选事件。我们已经开发了一种自动处理它们的光曲线的算法,该算法可以区分不同时间尺度上的瞬态候选物,并允许确定其持续时间和影响。该算法已被应用于计算(和比较)各种积分探测器记录的光曲线中的通量:IREM, SPI- acs, SPI, ISGRI和PICsIT。这些通量被用来训练基于梯度增强的分类器。随后,我们对通过降维和聚类方法找到的候选数据进行了聚类分析。最后,我们将剩余的候选数据与Konus-WIND伽玛射线探测器的数据进行了比较。因此,我们已经确认了16个天体物理瞬态候选者,其中包括四个由SPI-ACS探测器探测到的超长伽马射线暴候选者。在这些可能发生但未被其他实验证实的事件中,多达270个事件可以被归类为真正的伽马射线暴。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Search for Astrophysical Transients on Limiting Time Scales and Their Classification Based on INTEGRAL Data

Search for Astrophysical Transients on Limiting Time Scales and Their Classification Based on INTEGRAL Data

We have searched for ultra-long (\({\gtrsim}100\) s) gamma-ray transients in the data from the anticoincidence shield (ACS) of the SPI gamma-ray spectrometer onboard the INTEGRAL orbital observatory and classified them by machine learning methods. We have found about 4364 candidates for such events in the SPI-ACS data by the ‘‘blind’’ threshold search method. We have developed an algorithm for automatic processing of their light curves that distinguishes a candidate for transients on various time scales and allows its duration and fluence to be determined. The algorithm has been applied to calculate (and compare) the fluxes in the light curves recorded by various INTEGRAL detectors: IREM, SPI-ACS, SPI, ISGRI, and PICsIT. These fluxes have been used to train the classifier based on gradient boosting. Subsequently, we have performed a cluster analysis of the candidates found by the dimensionality reduction and clustering methods. In conclusion we have compared the remaining candidates with the data from the Konus-WIND gamma-ray detectors. Thus, we have confirmed 16 candidates for astrophysical transients, including four candidates for ultra-long gamma-ray bursts from the events detected by the SPI-ACS detector. Out of the probable events, but unconfirmed by other experiments, up to 270 events can be classified as real gamma-ray bursts.

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来源期刊
CiteScore
1.70
自引率
22.20%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Astronomy Letters is an international peer reviewed journal that publishes the results of original research on all aspects of modern astronomy and astrophysics including high energy astrophysics, cosmology, space astronomy, theoretical astrophysics, radio astronomy, extragalactic astronomy, stellar astronomy, and investigation of the Solar system.
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