2017
DOI: 10.1002/2017ja023912
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A new solar wind‐driven global dynamic plasmapause model: 1. Database and statistics

Abstract: A large database, possibly the largest plasmapause location database, with 49,119 plasmapause crossing events from the in situ observations and 3957 plasmapause profiles (corresponding to 48,899 plasmapause locations in 1 h magnetic local time (MLT) intervals) from optical remote sensing from 1977 to 2015 by 18 satellites is compiled. The responses of the global plasmapause to solar wind and geomagnetic changes and the diurnal, seasonal, solar cycle variations of the plasmapause are investigated based on this … Show more

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Cited by 22 publications
(35 citation statements)
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References 118 publications
(206 reference statements)
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“…The plasma flow that generates the electric field in the magnetosphere (Vasyliūnas, ) is mainly controlled by solar wind and the IMF ( Darrouzet et al, ; Goldstein et al, ; Goldstein et al, ; Goldstein et al, ; Goldstein et al, ; Katus et al, ; Sandel et al, ; and references therein). At the same time, the geomagnetic effects (storms and substorms) may be different events under the same solar wind and IMF conditions, and variations in the plasmapause shape are also different (Goldstein et al, ; Goldstein et al, ; Liemohn et al, ; Liemohn et al, ; He et al, ; Zhang et al, ; and references therein). Adding the proxies of SYM‐H for storms and AE for substorms may improve the accuracy of the model, and these two indices are also widely used in previous empirical models (e.g.,Moldwin et al, ;Ober et al, ;Liu et al, ).…”
Section: Database and Methodologymentioning
confidence: 99%
See 1 more Smart Citation
“…The plasma flow that generates the electric field in the magnetosphere (Vasyliūnas, ) is mainly controlled by solar wind and the IMF ( Darrouzet et al, ; Goldstein et al, ; Goldstein et al, ; Goldstein et al, ; Goldstein et al, ; Katus et al, ; Sandel et al, ; and references therein). At the same time, the geomagnetic effects (storms and substorms) may be different events under the same solar wind and IMF conditions, and variations in the plasmapause shape are also different (Goldstein et al, ; Goldstein et al, ; Liemohn et al, ; Liemohn et al, ; He et al, ; Zhang et al, ; and references therein). Adding the proxies of SYM‐H for storms and AE for substorms may improve the accuracy of the model, and these two indices are also widely used in previous empirical models (e.g.,Moldwin et al, ;Ober et al, ;Liu et al, ).…”
Section: Database and Methodologymentioning
confidence: 99%
“…Constructing a three‐dimensional (3‐D) plasmapause model is important to the space community. In this study, based on the database compiled by Zhang et al (), a three‐dimensional solar wind‐driven global dynamic plasmapause model (3‐D‐SWGDP) is developed with a back‐propagation neural network (BPNN) method. The data set and methodology will be described in sections and , respectively.…”
Section: Introductionmentioning
confidence: 99%
“…The in situ electron density data used in this study are inferred from the upper hybrid resonance frequency f uh observations by the plasma wave High Frequency Receiver (Waves HFR) instrument of the Electric and Magnetic Field Instrument Suite and Integrated Science (EMFISIS) suite. We used the electron number densities N e observed between 1 January 2014 and 1 July 2016 by VAP A as derived by Zhelavskaya et al (2016) through the Neural-network-based Upper hybrid Resonance Determination (NURD) algorithm. These in situ electron density data are openly available at the ftp://rbm.epss.ucla.edu/ftpdisk1/ NURD/ ftp site.…”
Section: Data and Analysismentioning
confidence: 99%
“…The first is external convective driving from the solar wind and IMF [Goldstein et al, 2003a[Goldstein et al, , 2003b[Goldstein et al, , 2005a[Goldstein et al, , 2005bSandel et al, 2003;Darrouzet et al, 2009;Katus et al, 2015, and references therein], which modifies large-scale convection in the inner magnetosphere that drives the dynamic distribution of plasmaspheric plasma through E × B drifts. The second is internal driving due to the dynamics of magnetospheric energetic particles and the ionosphere [Goldstein et al, 2003c[Goldstein et al, , 2007Liemohn et al, 2004Liemohn et al, , 2006He et al, 2016;Zhang et al, 2017], especially by auroral substorms that produce strong ion and electron precipitation in the ionosphere [Akasofu, 1964;McPherron et al, 1973] and dipolarization in the magnetosphere [Runov et al, 2009;Ge et al, 2012]. In the following sections, we will investigate the correlations of the plasmapause location with geomagnetic indices and solar wind parameters to optimize the parameters that drive the NSW-GDP model.…”
Section: Parameters Selectionmentioning
confidence: 99%