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Systematic analysis of machine learning and feature selection techniques for prediction of the Kp index

机译:机器学习和特征选择技术的系统分析,用于预测Kp指数

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The Kp index is a measure of the midlatitude global geomagnetic activity and represents short-term magnetic variations driven by solar wind plasma and interplanetary magnetic field. The Kp index is one of the most widely used indicators for space weather alerts and serves as input to various models, such as for the thermosphere and the radiation belts. It is therefore crucial to predict the Kp index accurately. Previous work in this area has mostly employed artificial neural networks to nowcast Kp, based their inferences on the recent history of Kp and on solar wind measurements at L1. In this study, we systematically test how different machine learning techniques perform on the task of nowcasting and forecasting Kp for prediction horizons of up to 12 hr. Additionally, we investigate different methods of machine learning and information theory for selecting the optimal inputs to a predictive model. We illustrate how these methods can be applied to select the most important inputs to a predictive model of Kp and to significantly reduce input dimensionality. We compare our best performing models based on a reduced set of optimal inputs with the existing models of Kp, using different test intervals, and show how this selection can affect model performance.
机译:Kp指数是中纬度全球地磁活动的量度,代表由太阳风等离子体和行星际磁场驱动的短期磁变化。 Kp指数是用于空间天气警报的最广泛使用的指标之一,并用作各种模型的输入,例如热圈和辐射带。因此,准确预测Kp指数至关重要。该领域以前的工作主要是根据最近的Kp历史和L1的太阳风测量结果,采用人工神经网络来临近预报Kp。在这项研究中,我们系统地测试了不同的机器学习技术如何在临近12小时的预测范围内对Kp进行临近预报和预测的任务上执行。此外,我们研究了用于选择预测模型的最佳输入的机器学习和信息论的不同方法。我们说明了如何使用这些方法来选择Kp预测模型中最重要的输入并显着降低输入维数。我们使用不同的测试间隔将基于减少的最佳输入集的最佳性能模型与现有Kp模型进行比较,并显示此选择如何影响模型性能。

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