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Nowcasting and predicting the K

机译:临近预报和预测K

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Current algorithms for the real-time prediction of the Kp index use a combination of models empirically driven by solar wind measurements at the L1 Lagrange point and historical values of the index. In this study, we explore the limitations of this approach, examining the forecast for short and long lead times using measurements at L1 and Kp time series as input to artificial neural networks. We explore the relative efficiency of the solar wind-based predictions, predictions based on recurrence, and predictions based on persistence. Our modeling results show that for short-term forecasts of approximately half a day, the addition of the historical values of Kp to the measured solar wind values provides a barely noticeable improvement. For a longer-term forecast of more than 2 days, predictions can be made using recurrence only, while solar wind measurements provide very little improvement for a forecast with long horizon times. We also examine predictions for disturbed and quiet geomagnetic activity conditions. Our results show that the paucity of historical measurements of the solar wind for high Kp results in a lower accuracy of predictions during disturbed conditions. Rebalancing of input data can help tailor the predictions for more disturbed conditions.
机译:用于实时预测Kp指数的当前算法使用由L1 Lagrange点的太阳风测量和该指数的历史值经验驱动的模型的组合。在这项研究中,我们探索了这种方法的局限性,使用L1和Kp时间序列的测量值作为人工神经网络的输入,检查了短和长提前期的预测。我们探索基于太阳风的预测,基于递归的预测和基于持久性的预测的相对效率。我们的建模结果表明,对于大约半天的短期预报,将Kp的历史值添加到测量的太阳风值中几乎不会带来明显的改善。对于超过2天的长期预测,只能使用递归进行预测,而对于较长的地平线时间,太阳风的测量结果几乎没有改善。我们还将检查扰动和安静的地磁活动条件的预测。我们的结果表明,对于高Kp而言,太阳风的历史测量值很少,导致在干扰条件下的预测准确性较低。输入数据的重新平衡可以帮助调整针对更多干扰情况的预测。

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