论文标题
研究基于新的神经网络(潜在学习)的地磁活动与太阳风参数之间的关系的研究
Investigation of the Relationship between Geomagnetic Activity and Solar Wind Parameters Based on A Novel Neural Network (Potential Learning)
论文作者
论文摘要
根据原位太阳风观测来预测地磁条件,使我们能够逃避由源自太阳的大型电磁干扰造成的灾难,以挽救生命并保护经济活动。在这项研究中,我们旨在检查KP指数之间的关系,代表全球磁层活性水平和太阳风条件,使用可解释的神经网络(PL)。基于神经网络的数据分析很难解释;但是,PL通过关注“输入神经元的潜力”来学习,并可以确定网络可显着利用哪些输入。利用PL的全部优势,我们提取了有影响力的太阳风参数,这些参数干扰了南向星际磁场(IMF)条件下的磁层。 PL的输入参数是IMF(BX,By,-bz(BS)),太阳风流速(VX)和质子数密度(NP)的三个组成部分,地中心太阳持续(GSE)坐标从1998年和2019年之间的OMNI Solar Database中获得的两组(我们分类为furthermore,我们分类为furthermore,我们分类)(我们分类为furthermore,我们分类)(我们分类)。 KP水平:KP = 6至9(正目标)和KP = 0至1+(负目标)。随机选择负靶样品,以确保正和负靶标相等。 PL结果表明,太阳风流速是在IMF向南条件下增加KP的影响参数,这与先前关于KP指数和太阳风速之间的统计关系的报告非常一致,以及基于IMF和太阳能风质Plasma参数的KP公式。基于这个新的神经网络,我们旨在构建一个更正确和参数的空间天气预测模型。
Predicting geomagnetic conditions based on in-situ solar wind observations allows us to evade disasters caused by large electromagnetic disturbances originating from the Sun to save lives and protect economic activity. In this study, we aimed to examine the relationship between the Kp index, representing global magnetospheric activity level, and solar wind conditions using an interpretable neural network known as potential learning (PL). Data analyses based on neural networks are difficult to interpret; however, PL learns by focusing on the "potentiality of input neurons" and can identify which inputs are significantly utilized by the network. Using the full advantage of PL, we extracted the influential solar wind parameters that disturb the magnetosphere under southward Interplanetary magnetic field (IMF) conditions. The input parameters of PL were the three components of the IMF (Bx, By, -Bz(Bs)), solar wind flow speed (Vx), and proton number density (Np) in geocentric solar ecliptic (GSE) coordinates obtained from the OMNI solar wind database between 1998 and 2019. Furthermore, we classified these input parameters into two groups (targets), depending on the Kp level: Kp = 6- to 9 (positive target) and Kp = 0 to 1+ (negative target). Negative target samples were randomly selected to ensure that numbers of positive and negative targets were equal. The PL results revealed that solar wind flow speed is an influential parameter for increasing Kp under southward IMF conditions, which was in good agreement with previous reports on the statistical relationship between the Kp index and solar wind velocity, and the Kp formulation based on the IMF and solar wind plasma parameters. Based on this new neural network, we aim to construct a more correct and parameter-dependent space weather forecasting model.