基于深度学习的太阳活动区域探测与跟踪

IF 2.7 3区 物理与天体物理 Q2 ASTRONOMY & ASTROPHYSICS Solar Physics Pub Date : 2024-08-30 DOI:10.1007/s11207-024-02362-3
Long Gong, Yunfei Yang, Song Feng, Wei Dai, Bo Liang, Jianping Xiong
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引用次数: 0

摘要

太阳活动区是各种太阳活动的主要能量来源,直接影响着地球环境。因此,精确探测和跟踪活跃区对于空间天气监测和预报至关重要。本研究共选取了 4577 幅 HMI 和 MDI 纵向磁图来建立数据集,包括训练集、验证集和十个测试集。它们代表了不同的观测仪器、不同数量的活动区域和不同的时间间隔。本文提出了一种新的深度学习方法 ReDetGraphTracker,用于检测和跟踪全磁盘磁图中的活动区域。合作模块,尤其是重新检测模块、NSA卡尔曼滤波器和分割器模块,较好地解决了检测缺失、轨迹不连续、跟踪边界框漂移和ID变化等问题。平均间隔为 24 小时的测试集的评价指标 IDF1、MOTA、MOTP、IDs 和 FPS 分别为 74.0%、74.7%、0.130、13.6 和 13.6。随着时间间隔的缩短,各项指标越来越好。实验结果表明,ReDetGraphTracker 在检测和跟踪活动区域方面具有良好的性能,尤其是能尽早捕捉到活动区域,并在接近实时的情况下终止跟踪。它能以近实时模式很好地处理剧烈变化或磁场强度较弱的活动区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Solar Active Regions Detection and Tracking Based on Deep Learning

Solar active regions serve as the primary energy sources of various solar activities, directly impacting the terrestrial environment. Therefore precise detection and tracking of active regions are crucial for space weather monitoring and forecasting. In this study, a total of 4577 HMI and MDI longitudinal magnetograms are selected for building the dataset, including the training set, validating set, and ten testing sets. They represent different observation instruments, different numbers of activity regions, and different time intervals. A new deep learning method, ReDetGraphTracker, is proposed for detecting and tracking the active regions in full-disk magnetograms. The cooperative modules, especially the redetection module, NSA Kalman filter, and the splitter module, better solve the problems of missing detection, discontinuous trajectory, drifting tracking bounding box, and ID change. The evaluation metrics IDF1, MOTA, MOTP, IDs, and FPS for the testing sets with 24-h interval on average are 74.0%, 74.7%, 0.130, 13.6, and 13.6, respectively. With the decreasing intervals, the metrics become better and better. The experimental results show that ReDetGraphTracker has a good performance in detecting and tracking active regions, especially capturing an active region as early as possible and terminating tracking in near-real time. It can well deal with the active regions whatever evolve drastically or with weak magnetic field strengths, in a near-real-time mode.

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来源期刊
Solar Physics
Solar Physics 地学天文-天文与天体物理
CiteScore
5.10
自引率
17.90%
发文量
146
审稿时长
1 months
期刊介绍: Solar Physics was founded in 1967 and is the principal journal for the publication of the results of fundamental research on the Sun. The journal treats all aspects of solar physics, ranging from the internal structure of the Sun and its evolution to the outer corona and solar wind in interplanetary space. Papers on solar-terrestrial physics and on stellar research are also published when their results have a direct bearing on our understanding of the Sun.
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