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A solar wind-based model of geomagnetic field fluctuations at a mid-latitude station

机译:中纬度站基于太阳风的地磁场波动模型

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摘要

Anomalous quasi-DC currents known as geomagnetically induced currents (GIC), produced in electric power network infrastructure during geomagnetic storms, pose a risk to reliable power transmission and network integrity. The prediction of a geomagnetic field-derived proxy to GIC provides an attractive mitigation technique that does not require changes to network hardware. In this paper we present the development of two artificial neural network based models tasked with predicting variations in the X (northward) and Y (eastward) components of the geomagnetic field at Hermanus, South Africa, with only solar wind plasma and interplanetary magnetic field (IMF) parameters as input. The models are developed by iteratively selecting the best set of solar wind parameters to predict the fluctuations in X and Y. To predict the variation in X, IMF magnitude, solar wind speed, fluctuation in solar wind proton density and a IMF-B_Z derived parameter are selected. To predict the variation in Y, IMF-B_Z, solar wind speed, and fluctuation in IMF magnitude are selected. The difference between the sets of selected input parameters are explained by the dependence of eastward perturbations in geomagnetic field at middle latitudes on field aligned currents. Model performance is evaluated during three storms in 2012. The onset and main phases of storms are fairly accurately predicted, but in cases where prolonged southward IMF coincides with solar wind parameters that are slowly varying the model fails to predict the observed fluctuations.
机译:在地磁风暴期间,电力网络基础设施中产生的称为地磁感应电流(GIC)的异常准DC电流会对可靠的电力传输和网络完整性造成威胁。对地磁场的GIC代理的预测提供了一种有吸引力的缓解技术,该技术不需要更改网络硬件。在本文中,我们介绍了两个基于人工神经网络的模型的开发,这些模型的任务是预测仅南非太阳风等离子体和行星际磁场的南非赫曼努斯地磁场X向(北)和Y向东(向东)的变化( IMF)参数作为输入。通过迭代选择最佳的太阳风参数集来预测X和Y的波动来开发模型。要预测X的变化,IMF大小,太阳风速,太阳风质子密度的波动以及IMF-B_Z得出的参数被选中。为了预测Y的变化,选择了IMF-B_Z,太阳风速和IMF大小的波动。所选输入参数集之间的差异是通过中纬度地磁场中的东向扰动对磁场对准电流的依赖性来解释的。在2012年的三场暴风雨中对模型的性能进行了评估。相当准确地预测了暴风雨的开始和主要阶段,但是在IMF向南延长的时间与太阳风参数一致且缓慢变化的情况下,该模型无法预测观测到的波动。

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