Statistical Models of the Variability of Plasma in the Topside Ionosphere: 1. Development and Optimisation

IF 3.4 2区 物理与天体物理 Q2 ASTRONOMY & ASTROPHYSICS Journal of Space Weather and Space Climate Pub Date : 2024-01-15 DOI:10.1051/swsc/2024002
Alan Wood, Elizabeth E. Donegan-Lawley, Lasse B. N. Clausen, L. Spogli, Jaroslav Urbar, Yaqi Jin, Golnaz Shahtahmassebi, L. Alfonsi, James T. Rawlings, A. Cicone, Daria Kotova, C. Cesaroni, Per Hoeg, G. Dorrian, L. Nugent, S. Elvidge, D. Themens, María José Brazal Aragon, Pawel Wojtkiewicz, Wojciech J. Miloch
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Abstract

This work presents statistical models of the variability of plasma in the topside ionosphere based on observations made by the European Space Agency’s (ESA) Swarm satellites. The models were developed in the “Swarm Variability of Ionospheric Plasma” (Swarm-VIP) project within the European Space Agency's Swarm+4D-Ionosphere framework. The configuration of the Swarm satellites, their near-polar orbits and the data products developed, enable studies of the spatial variability of the ionosphere at multiple scale sizes. The statistical modelling technique of Generalised Linear Modelling was used to create models of both the electron density and measures of the variability of the plasma structures at horizontal spatial scales between 20 km and 100 km. Despite being developed using the Swarm data, the models provide predictions that are independent of these data. Separate models were created for low, middle, auroral and polar latitudes. The models make predictions based on heliogeophysical variables, which act as proxies for the solar and geomagnetic processes. The first and most significant term in the majority of the models was a proxy for solar activity. The most common second term varied with the latitudinal region. This was the Solar Zenith Angle (SZA) in the polar region, a measure of latitude in the auroral region, solar time in the mid-latitude region and a measure of latitude in the equatorial region. Other, less significant terms in the models covered a range of proxies for the solar wind, geomagnetic activity and location.  In this paper the formulation, optimisation and evaluation of these models is discussed. The models show very little bias, with a mean error of zero to two decimal places in 14 out of 20 cases. The models capture some, but not all, of the trends present in the data, with Pearson correlation coefficients of up to 0.75 between the observations and the model predictions. The models also capture some, but not all, of the variability of the ionospheric plasma, as indicated by the precision, which ranged between 0.20 and 0.83. The addition of the thermospheric density as an explanatory variable in the models improved the precision in the polar and auroral regions. It is suggested that, if the thermosphere could be observed at a higher spatial resolution, then even more of the variability of the plasma structures could be captured by statistical models. The formulation and optimisation of the models are presented in this paper. The capability of the model in reproducing the expected climatological features of the topside ionosphere, in supporting GNSS-based ionospheric observations and the performance of the model against TIE-GCM, are provided in a companion paper (Spogli et al., 2023).
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顶部电离层等离子体变异性统计模型:1.开发与优化
这项工作根据欧洲空间局(欧空局)Swarm 卫星的观测结果,介绍了电离层顶部等离子体变异性的统计模型。这些模型是在欧洲航天局 Swarm+4D-Ionosphere 框架内的 "电离层等离子体群变异性"(Swarm-VIP)项目中开发的。利用广义线性建模的统计建模技术建立了电子密度模型和 20 千米至 100 千米水平空间尺度的等离子体结构可变性测量模型。尽管这些模型是利用 "蜂群 "数据建立的,但其预测结果与这些数据无关。为低纬度、中纬度、极光纬度和极地纬度创建了单独的模型。模型根据太阳地球物理变量进行预测,这些变量是太阳和地磁过程的代用指标。在大多数模型中,第一项也是最重要的一项是太阳活动的代用指标。最常见的第二项随纬度区域而变化。这包括极地地区的太阳天顶角(SZA)、极光地区的纬度、中纬度地区的太阳时和赤道地区的纬度。模型中其他不太重要的项涵盖了太阳风、地磁活动和位置的一系列代用指标。 本文讨论了这些模型的制定、优化和评估。模型显示的偏差很小,20 个案例中有 14 个案例的平均误差为零至小数点后两位。模型捕捉到了数据中的部分趋势,但不是全部趋势,观测数据与模型预测之间的皮尔逊相关系数高达 0.75。模型还捕捉到了电离层等离子体的部分(但不是全部)变异性,精确度在 0.20 和 0.83 之间。在模型中增加热层密度作为解释变量提高了极区和极光区的精度。建议如果能以更高的空间分辨率观测热层,那么统计模型就能捕捉到等离子体结构的更多变化。本文介绍了模型的建立和优化。该模型在再现顶部电离层预期气候特征、支持基于全球导航卫星系统的电离层观测方面的能力,以及该模型与 TIE-GCM 相比的性能,将在另一篇论文(Spogli 等人,2023 年)中介绍。
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来源期刊
Journal of Space Weather and Space Climate
Journal of Space Weather and Space Climate ASTRONOMY & ASTROPHYSICS-GEOCHEMISTRY & GEOPHYSICS
CiteScore
6.90
自引率
6.10%
发文量
40
审稿时长
8 weeks
期刊介绍: The Journal of Space Weather and Space Climate (SWSC) is an international multi-disciplinary and interdisciplinary peer-reviewed open access journal which publishes papers on all aspects of space weather and space climate from a broad range of scientific and technical fields including solar physics, space plasma physics, aeronomy, planetology, radio science, geophysics, biology, medicine, astronautics, aeronautics, electrical engineering, meteorology, climatology, mathematics, economy, informatics.
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