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Empirically modeled global distribution of magnetospheric chorus amplitude using an artificial neural network

机译:利用人工神经网络对磁层合唱振幅的全球分布进行经验建模

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[1] Accurate knowledge of the global distribution of magnetospheric chorus waves is essential for radiation belt modeling because it provides a direct link to understanding radiation belt losses and acceleration processes. In this paper, we report on newly developed models of the global distribution of chorus amplitudes based on in situ measurements of interplanetary magnetic field (IMF) and solar wind parameters as well as geomagnetic indices using an artificial neural network technique. We find that solar wind speed and IMF B_Z are the most influential parameters that affect the evolution of the magnetospheric chorus. The variations of chorus amplitudes in the outer (L ≥ 7) and in the inner (5 ≤ L < 7) regions, respectively, are well correlated with the variations of solar wind speed and IMF BZ. In addition, the solar wind parameter-based chorus model generally results in a slightly higher correlation between measured and modeled chorus amplitudes than any other models including geomagnetic indices AE, K_p, and Dst. The developed model shows that the chorus is amplified near the prenoon sector during the geomagnetically disturbed conditions. With increasing southward IMF B_Z the location of peak chorus amplitude moves from the prenoon sector to the midnight sector, which is due to the enhanced electron injection near midnight. We also present a comparison of diffusive transport simulations for radiation belt electrons interacting with two newly developed chorus models, solar wind parameter-based and geomagnetic index-based chorus models. The comparison between two models shows that the modeling outside the plasmapause can affect the dynamic even inside the plasmasphere because the populations outside the plasmapause can act as seed population to radiation belt particles inside the plasmapause. One weakness of our chorus modeling is that it is trained during the early phase of solar cycle 24 where very few strong storms occurred. Therefore, our model might not be valid in reproducing the chorus activity under extremely disturbed conditions, which should be updated in the future once chorus measurements for such conditions become available.
机译:[1]准确了解磁层合唱波的全球分布对于辐射带建模至关重要,因为它为了解辐射带损耗和加速过程提供了直接链接。在本文中,我们使用人工神经网络技术报告了基于行星际磁场(IMF)和太阳风参数以及地磁指数的原位测量而建立的合唱振幅全球分布的新模型。我们发现太阳风速和IMF B_Z是影响磁层合唱演变的最有影响的参数。外部(L≥7)和内部(5≤L <7)区域的合唱振幅变化分别与太阳风速和IMF BZ的变化相关。另外,与包括地磁指数AE,K_p和Dst的任何其他模型相比,基于太阳风参数的合唱模型通常会导致实测和建模的合唱振幅之间的相关性稍高。所开发的模型表明,在地磁扰动条件下,合唱会在午前区域附近放大。随着IMF B_Z向南的增加,峰值合唱振幅的位置从午前区移至午夜区,这是由于午夜附近电子注入增强。我们还介绍了与两个新开发的合唱模型,基于太阳风参数的合唱模型和基于地磁指数的合唱模型相互作用的辐射带电子的扩散传输模拟的比较。两种模型之间的比较表明,等离子暂停之外的建模甚至可以影响等离子层内部的动力学,因为等离子暂停之外的种群可以充当等离子暂停内部辐射带粒子的种子种群。我们的合唱模型的一个弱点是,它是在太阳周期24的早期进行训练的,那里很少发生强风暴。因此,我们的模型可能不适用于在极度混乱的条件下再现合唱活动,一旦此类条件下的合唱测量可用,就应该在以后进行更新。

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