首页> 外文期刊>Solar Physics >Prediction of Extreme Ultraviolet Variability Experiment (EVE)/Extreme Ultraviolet Spectro-Photometer (ESP) Irradiance from Solar Dynamics Observatory (SDO)/Atmospheric Imaging Assembly (AIA) Images Using Fuzzy Image Processing and Machine Learning
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Prediction of Extreme Ultraviolet Variability Experiment (EVE)/Extreme Ultraviolet Spectro-Photometer (ESP) Irradiance from Solar Dynamics Observatory (SDO)/Atmospheric Imaging Assembly (AIA) Images Using Fuzzy Image Processing and Machine Learning

机译:利用模糊图像处理和机器学习预测太阳动力学天文台(SDO)/大气成像组件(AIA)图像中的极端紫外变异性实验(EVE)/极端紫外分光光度计(ESP)辐照度

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摘要

The cadence and resolution of solar images have been increasing dramatically with the launch of new spacecraft such as STEREO and SDO. This increase in data volume provides new opportunities for solar researchers, but the efficient processing and analysis of these data create new challenges. We introduce a fuzzy-based solar feature-detection system in this article. The proposed system processes SDO/AIA images using fuzzy rules to detect coronal holes and active regions. This system is fast and it can handle different size images. It is tested on six months of solar data (1 October 2010 to 31 March 2011) to generate filling factors (ratio of area of solar feature to area of rest of the solar disc) for active regions and coronal holes. These filling factors are then compared to SDO/EVE/ESP irradiance measurements. The correlation between active-region filling factors and irradiance measurements is found to be very high, which has encouraged us to design a time-series prediction system using Radial Basis Function Networks to predict ESP irradiance measurements from our generated filling factors.
机译:随着诸如STEREO和SDO等新型航天器的发射,太阳影像的节奏和分辨率得到了极大的提高。数据量的增加为太阳能研究人员提供了新的机遇,但是对这些数据的有效处理和分析带来了新的挑战。本文介绍了一种基于模糊的太阳特征检测系统。所提出的系统使用模糊规则处理SDO / AIA图像以检测冠状孔和活动区域。该系统速度快,可以处理不同尺寸的图像。对六个月的太阳数据(2010年10月1日至2011年3月31日)进行了测试,以生成活动区域和日冕孔的填充因子(太阳特征的面积与太阳盘其余部分的面积之比)。然后将这些填充因子与SDO / EVE / ESP辐照度测量结果进行比较。发现活动区域填充因子与辐照度测量值之间的相关性非常高,这鼓励了我们设计一个使用径向基函数网络的时序预测系统,以便根据生成的填充因子预测ESP辐照度测量值。

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