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Empirical predictive models of daily relativistic electron flux at geostationary orbit: Multiple regression analysis

机译:地球静止轨道日相对论电子通量的经验预测模型:多元回归分析

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摘要

The daily maximum relativistic electron flux at geostationary orbit can be predicted well with a set of daily averaged predictor variables including previous day's flux, seed electron flux, solar wind velocity and number density, AE index, IMF Bz, Dst, and ULF and VLF wave power. As predictor variables are intercorrelated, we used multiple regression analyses to determine which are the most predictive of flux when other variables are controlled. Empirical models produced from regressions of flux on measured predictors from 1 day previous were reasonably effective at predicting novel observations. Adding previous flux to the parameter set improves the prediction of the peak of the increases but delays its anticipation of an event. Previous day's solar wind number density and velocity, AE index, and ULF wave activity are the most significant explanatory variables; however, the AE index, measuring substorm processes, shows a negative correlation with flux when other parameters are controlled. This may be due to the triggering of electromagnetic ion cyclotron waves by substorms that cause electron precipitation. VLF waves show lower, but significant, influence. The combined effect of ULF and VLF waves shows a synergistic interaction, where each increases the influence of the other on flux enhancement. Correlations between observations and predictions for this 1 day lag model ranged from 0.71 to 0.89 (average: 0.78). A path analysis of correlations between predictors suggests that solar wind and IMF parameters affect flux through intermediate processes such as ring current (Dst), AE, and wave activity.
机译:利用一组每日平均的预测变量,可以很好地预测地球静止轨道上的每日最大相对论电子通量,包括前一天的通量,种子电子通量,太阳风速和数密度,AE指数,IMF Bz,Dst,ULF和VLF波功率。由于预测变量是相互关联的,因此我们使用多重回归分析来确定在控制其他变量时哪个对流量的预测最准确。从1天前的已测预测变量上的通量回归得出的经验模型在预测新发现方面相当有效。将先前的通量添加到参数集中可以改善对增量峰值的预测,但会延迟其对事件的预期。前一天的太阳风数密度和速度,AE指数和ULF波活动是最重要的解释变量。然而,当控制其他参数时,测量亚暴过程的AE指数与通量呈负相关。这可能是由于引起电子沉淀的亚暴触发了电磁离子回旋波。 VLF波显示出较低但重要的影响。 ULF和VLF波的组合效果显示出协同作用,其中每个都增加了彼此对通量增强的影响。 1天滞后模型的观测值与预测值之间的相关性在0.71至0.89之间(平均:0.78)。对预测变量之间相关性的路径分析表明,太阳风和IMF参数会通过诸如环流(Dst),AE和波活动之类的中间过程影响通量。

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