Prediction of Proton Pressure in the Outer Part of the Inner Magnetosphere Using Machine Learning

IF 3.8 2区 地球科学 Q2 ASTRONOMY & ASTROPHYSICS Space Weather-The International Journal of Research and Applications Pub Date : 2023-09-01 DOI:10.1029/2022sw003387
S. Y. Li, E. A. Kronberg, C. G. Mouikis, H. Luo, Y. S. Ge, A. M. Du
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Abstract

Abstract The information on plasma pressure in the outer part of the inner magnetosphere is important for simulations of the inner magnetosphere and a better understanding of its dynamics. Based on 17‐year observations from both Cluster Ion Spectrometry and Research with Adaptive Particle Imaging Detector instruments onboard the Cluster mission, we used machine‐learning‐based models to predict proton plasma pressure at energies from ∼40 eV to 4 MeV in the outer part of the inner magnetosphere ( = 5–9). Proton pressure distributions are assumed to be isotropic. The location in the magnetosphere, the property of stably trapped particles, and parameters of solar, solar wind, and geomagnetic activity from the OMNI database are used as predictors. We trained several different machine‐learning‐based models and compared their performances with observations. The results demonstrate that the Extra‐Trees Regressor has the best predicting performance. The Spearman correlation between the observations and predictions by the model is about 70%. The most important parameter for predicting proton pressure in our model is the value, which relates to the property of stably trapped particles. The most important predictor of solar and geomagnetic activity is F 10.7 index. Based on the observations and predictions by our model, we find that no matter under quiet or disturbed geomagnetic conditions, both the dusk‐dawn asymmetry at the dayside with higher pressure at the duskside and the day‐night asymmetry with higher pressure at the nightside occur. Our results have direct practical applications, for instance, inputs for simulations of the inner magnetosphere or the reconstruction of the 3‐D magnetospheric electric current system based on the magnetostatic equilibrium.
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利用机器学习预测内磁层外层的质子压力
内磁层外层等离子体压力的信息对于内磁层的模拟和更好地理解其动力学是非常重要的。基于17年的集群离子光谱观测和集群任务上的自适应粒子成像探测器的研究,我们使用基于机器学习的模型来预测内磁层外层能量从~ 40 eV到4 MeV的质子等离子体压力(= 5-9)。假设质子压力分布是各向同性的。利用OMNI数据库中的磁层位置、稳定捕获粒子的性质以及太阳、太阳风和地磁活动参数作为预测因子。我们训练了几个不同的基于机器学习的模型,并将它们的表现与观察结果进行了比较。结果表明,Extra‐Trees回归器具有最佳的预测性能。观测和模型预测之间的斯皮尔曼相关性约为70%。在我们的模型中,预测质子压力最重要的参数是值,它关系到稳定捕获粒子的性质。太阳和地磁活动最重要的预测指标是f10.7指数。根据我们的模型的观测和预测,我们发现无论在安静的地磁条件下还是在扰动的地磁条件下,白天侧的黄昏-黎明不对称和夜晚侧的白天-黎明不对称都存在,黄昏侧的压力较高,夜晚侧的压力较高。我们的结果有直接的实际应用,例如,输入模拟内磁层或三维磁层电流系统的重建基于静磁平衡。
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来源期刊
CiteScore
5.90
自引率
29.70%
发文量
166
审稿时长
>12 weeks
期刊介绍: Space Weather: The International Journal of Research and Applications (SWE) is devoted to understanding and forecasting space weather. The scope of understanding and forecasting includes: origins, propagation and interactions of solar-produced processes within geospace; interactions in Earth’s space-atmosphere interface region produced by disturbances from above and below; influences of cosmic rays on humans, hardware, and signals; and comparisons of these types of interactions and influences with the atmospheres of neighboring planets and Earth’s moon. Manuscripts should emphasize impacts on technical systems including telecommunications, transportation, electric power, satellite navigation, avionics/spacecraft design and operations, human spaceflight, and other systems. Manuscripts that describe models or space environment climatology should clearly state how the results can be applied.
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