Improving the spatial resolution of SDO/HMI transverse and line-of-sight magnetograms using GST/NIRIS data with machine learning

IF 5.4 2区 物理与天体物理 Q1 ASTRONOMY & ASTROPHYSICS
Chunhui Xu, Yan Xu, Jason T. L. Wang, Qin Li, Haimin Wang
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Abstract

Context. High-resolution magnetograms are crucial for studying solar flare dynamics because they enable the precise tracking of magnetic structures and rapid field changes. The Helioseismic and Magnetic Imager on board the Solar Dynamics Observatory (SDO/HMI) has been an essential provider of vector magnetograms. However, the spatial resolution of the HMI magnetograms is limited and hence is not able to capture the fine structures that are essential for understanding flare precursors. The Near InfraRed Imaging Spectropolarimeter on the 1.6 m Goode Solar Telescope (GST/NIRIS) at Big Bear Solar Observatory (BBSO) provides a better spatial resolution and is therefore more suitable to track the fine magnetic features and their connection to flare precursors.Aims. We propose DeepHMI, a machine-learning method for solar image super-resolution, to enhance the transverse and line-of-sight magnetograms of solar active regions (ARs) collected by SDO/HMI to better capture the fine-scale magnetic structures that are crucial for understanding solar flare dynamics. The enhanced HMI magnetograms can also be used to study spicules, sunspot light bridges and magnetic outbreaks, for which high-resolution data are essential.Methods. DeepHMI employs a conditional diffusion model that is trained using ground-truth images obtained by an inversion analysis of Stokes measurements collected by GST/NIRIS.Results. Our experiments show that DeepHMI performs better than the commonly used bicubic interpolation method in terms of four evaluation metrics. In addition, we demonstrate the ability of DeepHMI through a case study of the enhancement of SDO/HMI transverse and line-of-sight magnetograms of AR 12371 to GST/NIRIS data.
利用GST/NIRIS数据和机器学习提高SDO/HMI横向和视距磁图的空间分辨率
上下文。高分辨率磁图对于研究太阳耀斑动力学至关重要,因为它们可以精确跟踪磁结构和快速磁场变化。太阳动力学观测站(SDO/HMI)上的日震和磁成像仪一直是矢量磁图的重要提供者。然而,HMI磁图的空间分辨率是有限的,因此无法捕捉到对理解耀斑前体至关重要的精细结构。大熊太阳天文台(BBSO)的1.6米古德太阳望远镜(GST/NIRIS)上的近红外成像光谱仪提供了更好的空间分辨率,因此更适合跟踪精细的磁特征及其与耀斑前兆的联系。我们提出了一种用于太阳图像超分辨率的机器学习方法DeepHMI,以增强SDO/HMI收集的太阳活动区域(ARs)的横向和视线磁图,以更好地捕获对理解太阳耀斑动力学至关重要的精细尺度磁结构。增强的HMI磁图还可用于研究针状体、太阳黑子光桥和磁爆发,这些都是高分辨率数据所必需的。DeepHMI采用条件扩散模型,该模型使用GST/ niris收集的Stokes测量数据的反演分析获得的真地图像进行训练。我们的实验表明,DeepHMI在四个评价指标方面优于常用的双三次插值方法。此外,我们通过对AR 12371的SDO/HMI横向磁图和视距磁图增强到GST/NIRIS数据的案例研究证明了DeepHMI的能力。
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来源期刊
Astronomy & Astrophysics
Astronomy & Astrophysics 地学天文-天文与天体物理
CiteScore
10.20
自引率
27.70%
发文量
2105
审稿时长
1-2 weeks
期刊介绍: Astronomy & Astrophysics is an international Journal that publishes papers on all aspects of astronomy and astrophysics (theoretical, observational, and instrumental) independently of the techniques used to obtain the results.
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