论文标题
通过图像到图像翻译探索综合创建太阳能图像的限制
Exploring the Limits of Synthetic Creation of Solar EUV Images via Image-to-Image Translation
论文作者
论文摘要
太阳动力学天文台(SDO)是NASA多光谱十年的任务,每天都在每天生产来自太阳的观测数据的trabytes,它已被用作用例证明机器学习方法的潜力,并为未来的深空任务计划铺平了道路。特别是,在最近的几项研究中,已经提出了使用图像到图像翻译实际上产生极端超紫罗兰频道的想法,这是一种增强任务较少通道的任务的一种方式,并由于深空的下降速率较低而减轻了挑战。本文通过关注四个通道和基于编码器的结构的排列来研究这种深度学习方法的潜力和局限性,并特别注意太阳表面的形态特征和亮度如何影响神经网络的预测。在这项工作中,我们想回答以下问题:可以将通过图像到图像翻译产生的太阳电晕的合成图像用于太阳的科学研究吗?分析强调,神经网络在计数率(像素强度)上产生高质量的图像,通常可以在1%误差范围内跨通道跨通道重现协方差。但是,模型性能在极高的能量事件(如耀斑)的对应关系中大大降低,我们认为原因与此类事件的稀有性有关,这对模型训练构成了挑战。
The Solar Dynamics Observatory (SDO), a NASA multi-spectral decade-long mission that has been daily producing terabytes of observational data from the Sun, has been recently used as a use-case to demonstrate the potential of machine learning methodologies and to pave the way for future deep-space mission planning. In particular, the idea of using image-to-image translation to virtually produce extreme ultra-violet channels has been proposed in several recent studies, as a way to both enhance missions with less available channels and to alleviate the challenges due to the low downlink rate in deep space. This paper investigates the potential and the limitations of such a deep learning approach by focusing on the permutation of four channels and an encoder--decoder based architecture, with particular attention to how morphological traits and brightness of the solar surface affect the neural network predictions. In this work we want to answer the question: can synthetic images of the solar corona produced via image-to-image translation be used for scientific studies of the Sun? The analysis highlights that the neural network produces high-quality images over three orders of magnitude in count rate (pixel intensity) and can generally reproduce the covariance across channels within a 1% error. However the model performance drastically diminishes in correspondence of extremely high energetic events like flares, and we argue that the reason is related to the rareness of such events posing a challenge to model training.