首页> 外文期刊>The Astrophysical journal >AUTOMATICALLY DETECTING AND TRACKING CORONAL MASS EJECTIONS. I. SEPARATION OF DYNAMIC AND QUIESCENT COMPONENTS IN CORONAGRAPH IMAGES
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AUTOMATICALLY DETECTING AND TRACKING CORONAL MASS EJECTIONS. I. SEPARATION OF DYNAMIC AND QUIESCENT COMPONENTS IN CORONAGRAPH IMAGES

机译:自动检测和跟踪冠状动脉大量排出物。 I.冠状图图像中动态和静态成分的分离

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Automated techniques for detecting and tracking coronal mass ejections (CMEs) in coronagraph data are of ever increasing importance for space weather monitoring and forecasting. They serve to remove the biases and tedium of human interpretation, and provide the robust analysis necessary for statistical studies across large numbers of observations. An important requirement in their operation is that they satisfactorily distinguish the CME structure from the background quiescent coronal structure (streamers, coronal holes). Many studies resort to some form of time differencing to achieve this, despite the errors inherent in such an approach—notably spatiotemporal crosstalk. This article describes a new deconvolution technique that separates coronagraph images into quiescent and dynamic components. A set of synthetic observations made from a sophisticated model corona and CME demonstrates the validity and effectiveness of the technique in isolating the CME signal. Applied to observations by the LASCO C2 and C3 coronagraphs, the structure of a faint CME is revealed in detail despite the presence of background streamers that are several times brighter than the CME. The technique is also demonstrated to work on SECCHI/COR2 data, and new possibilities for estimating the three-dimensional structure of CMEs using the multiple viewing angles are discussed. Although quiescent coronal structures and CMEs are intrinsically linked, and although their interaction is an unavoidable source of error in any separation process, we show in a companion paper that the deconvolution approach outlined here is a robust and accurate method for rigorous CME analysis. Such an approach is a prerequisite to the higher-level detection and classification of CME structure and kinematics.
机译:用于检测和跟踪日冕仪数据中的日冕物质抛射(CME)的自动化技术对于空间天气监测和预报越来越重要。它们有助于消除人类解释的偏见和乏味,并为大量观察的统计研究提供必要的可靠分析。操作上的重要要求是,它们可以令人满意地将CME结构与背景静态冠状结构(彩带,冠状孔)区分开。尽管这种方法存在固有的错误,尤其是时空串扰,但许多研究还是采用某种形式的时差来实现这一目标。本文介绍了一种新的反卷积技术,该技术可以将日冕仪图像分离为静态和动态分量。由复杂的模型电晕和CME得出的一组综合观察结果证明了该技术在隔离CME信号方面的有效性和有效性。应用于LASCO C2和C3日冕仪的观测结果,尽管存在比CME明亮几倍的背景光,但仍能详细显示微弱CME的结构。还证明了该技术可用于SECCHI / COR2数据,并讨论了使用多个视角估算CME三维结构的新可能性。尽管静态冠状结构和CME之间存在内在联系,尽管它们的相互作用是任何分离过程中不可避免的错误源,但我们在随附的论文中表明,此处概述的反卷积方法是一种用于进行严格CME分析的可靠而准确的方法。这种方法是对CME结构和运动学进行更高级别检测和分类的先决条件。

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