论文标题

案例研究较小的活动区域中小规模流量模式的识别和分类

Case study on the identification and classification of small-scale flow patterns in flaring active region

论文作者

Philishvi, E., Shergelashvili, B. M., Buitendag, S., Raes, J., Poedts, S., Khodachenko, M. L.

论文摘要

我们提出了一种新颖的方法,以使其在太阳大气中流动,并将其速度分类为超音速,亚音速或声音。提出的方法包括三个部分。首先,将算法应用于太阳能动力学天文台(SDO)图像数据以定位和跟踪流动,从而导致每个流动的轨迹随时间而变化。此后,沿每个流量的轨迹沿六个AIA通道应用差分发射度量反演方法,以估算其背景温度和声速。最后,我们通过同时进行假设检验来将每个流量分类为超音速,亚音速或声音,以了解流量的速度界限是较大,较小还是等于背景音速。提出的方法将2012年3月6日的171Å光谱线的SDO图像数据应用于12:22:00至12:35:00,并在2012年3月9日的日期再次从03:00:00到03:24:00。检测到十八个血浆流,其中11个被归类为超音速,3归类为亚音速,3级为Sonic,其显着性水平为70美元。在所有这些情况下,当两个流量从亚音速状态变为超音速,反之亦然,不可严格地归因于各自的类别之一。我们将它们标记为跨气流的子类。提出的方法提供了一种自动且可扩展的解决方案,以识别小规模流并将其速度分类为超音速,亚音速或声音。我们确定并分类的小尺度流动模式。结果表明,流量可以分为四类:子,超级,跨性别和声音。可以与其他高分辨率观察数据(例如HI-C 2.1数据)结合分析来自AIA图像的检测到的流量,并用于开发流动模式形成的理论。

We propose a novel methodology to identity flows in the solar atmosphere and classify their velocities as either supersonic, subsonic, or sonic. The proposed methodology consists of three parts. First, an algorithm is applied to the Solar Dynamics Observatory (SDO) image data to locate and track flows, resulting in the trajectory of each flow over time. Thereafter, the differential emission measure inversion method is applied to six AIA channels along the trajectory of each flow in order to estimate its background temperature and sound speed. Finally, we classify each flow as supersonic, subsonic, or sonic by performing simultaneous hypothesis tests on whether the velocity bounds of the flow are larger, smaller, or equal to the background sound speed. The proposed methodology was applied to the SDO image data from the 171 Å spectral line for the date 6 March 2012 from 12:22:00 to 12:35:00 and again for the date 9 March 2012 from 03:00:00 to 03:24:00. Eighteen plasma flows were detected, 11 of which were classified as supersonic, 3 as subsonic, and 3 as sonic at a $70\%$ level of significance. Out of all these cases, 2 flows cannot be strictly ascribed to one of the respective categories as they change from the subsonic state to supersonic and vice versa. We labelled them as a subclass of transonic flows. The proposed methodology provides an automatic and scalable solution to identify small-scale flows and to classify their velocities as either supersonic, subsonic, or sonic. We identified and classified small-scale flow patterns in flaring loops. The results show that the flows can be classified into four classes: sub-, super-, trans-sonic, and sonic. The detected flows from AIA images can be analyzed in combination with the other high-resolution observational data, such as Hi-C 2.1 data, and be used for the development of theories of the formation of flow patterns.

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