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Automatic Detection and Tracking of Coronal Mass Ejections in Coronagraph Time Series

机译:日冕仪时间序列中冠状物质喷射的自动检测和跟踪

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摘要

We present the current capabilities of a software tool to automatically detect coronal mass ejections (CMEs) based on time series of coronagraph images: the solar eruptive event detection system (SEEDS). The software developed consists of several modules: preprocessing, detection, tracking, and event cataloging. The detection algorithm is based on a 2D to 1D projection method, where CMEs are assumed to be bright regions moving radially outward as observed in a running-difference time series. The height, velocity, and acceleration of the CME are automatically determined. A threshold-segmentation technique is applied to the individual detections to automatically extract an approximate shape of the CME leading edge. We have applied this method to a 12-month period of continuous coronagraph images sequence taken at a 20-minute cadence by the Large Angle and Spectrometric Coronagraph (LASCO) instrument (using the C2 instrument only) onboard the Solar and Heliospheric Observatory (SOHO) spacecraft. Our automated method, with a high computational efficiency, successfully detected about 75% of the CMEs listed in the CDAW CME catalog, which was created by using human visual inspection. Furthermore, the tool picked up about 100% more small-size or anomalous transient coronagraph events that were ignored by human visual inspection. The output of the software is made available online at http://spaceweather.gmu.edu/seeds/. The parameters of scientific importance extracted by the software package are the position angle, angular width, velocity, peak, and average brightness. Other parameters could easily be added if needed. The identification of CMEs is known to be somewhat subjective. As our system is further developed, we expect to make the process significantly more objective.
机译:我们介绍了基于日冕仪图像时间序列自动检测冠状物质抛射(CME)的软件工具的当前功能:太阳爆发事件检测系统(SEEDS)。开发的软件包含几个模块:预处理,检测,跟踪和事件分类。该检测算法基于2D到1D投影方法,其中CME被假定为明亮的区域,如在运行差异时间序列中观察到的那样,它们径向向外移动。 CME的高度,速度和加速度是自动确定的。将阈值分割技术应用于各个检测,以自动提取CME前缘的近似形状。我们已将该方法应用于由太阳和日球天文台(SOHO)上的大角度和光谱日冕仪(LASCO)仪器(仅使用C2仪器)以20分钟的节奏拍摄的连续12个月的连续日冕仪图像序列飞船。我们的自动化方法具有很高的计算效率,已成功检测出CDAW CME目录中列出的CME的约75%,这些CME是通过人工目测创建的。此外,该工具还发现了人类目视检查忽略的小尺寸或异常瞬变日冕仪事件约100%。该软件的输出可从http://spaceweather.gmu.edu/seeds/在线获得。软件包提取的具有科学重要性的参数是位置角度,角宽度,速度,峰值和平均亮度。如果需要,可以轻松添加其他参数。已知CME的识别有些主观。随着我们系统的进一步发展,我们希望使该过程更加客观。

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