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Prediction and variation of the auroral oval boundary based on a deep learning model and space physical parameters

机译:基于深度学习模型和空间物理参数的极光椭圆形边界的预测与变化

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The auroral oval boundary represents an important physical process with implications for the ionosphere and magnetosphere. An automatic auroral oval boundary prediction method based on deep learning in this paper is applied to study the variation of the auroral oval boundary associated with different space physical parameters. We construct an auroral oval boundary dataset to train our proposed model, which consists of 184416?auroral oval boundary points extracted from 3842 images captured by the Ultraviolet Imager (UVI) of the Polar satellite and its corresponding 18 space physical parameters selected from the OMNI dataset from December?1996 to March?1997. Furthermore, several statistical experiments and correlation analysis experiments are performed based on our dataset to explore the relationship between space physical parameters and the location of the auroral oval boundary. The experiment results show that the prediction model based on the deep learning method can estimate the auroral oval boundary efficiently, and different space physical parameters have different effects on the auroral oval boundary, especially the interplanetary magnetic field (IMF), geomagnetic indexes, and solar wind parameters.
机译:极光椭圆形边界表示具有对电离层和磁层的影响的重要物理过程。基于本文深度学习的自动极光椭圆形边界预测方法应用于研究与不同空间物理参数相关的极光椭圆形边界的变化。我们构建一个极光椭圆形边界数据集以培训我们所提出的模型,该模型由184416件组成的型号,由极性卫星的紫外成像器(UVI)捕获的3842个图像中提取的极光椭圆形边界点,其相应的18个空间物理参数从OMNI数据集中选择从12月到1996年到3月?1997年。此外,基于我们的数据集进行了几个统计实验和相关分析实验,以探索空间物理参数与极光椭圆形边界的位置之间的关系。实验结果表明,基于深度学习方法的预测模型可以有效地估计极光椭圆形边界,不同的空间物理参数对极光椭圆形边界具有不同的影响,尤其是行星际磁场(IMF),地磁索引和太阳能风参数。

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