Geomagnetic activity recurrences for predicting the amplitude and shape of solar cycle n. 25

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2021-09-08 DOI:10.1051/swsc/2021036
P. Diego, M. Laurenza
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引用次数: 2

Abstract

Predicting solar activity is one of the most challenging topics among the various Space Weather and Space Climate issues. In the last decades, the constant enhancement of Space Climate data improved the comprehension of the related physical phenomena and the statistical bases for prediction algorithms. For this purpose, we used geomagnetic indices to provide a powerful algorithm (see Diego et al. [2010. J Geophys Res 115: A06103]) for the solar activity prediction, based on evaluating the recurrence rate in the geomagnetic activity. This paper aims to present the validation of our algorithm over solar cycle n. 24, for which a successful prediction was made, and upgrade it to forecast the shape and time as well as the amplitude of the upcoming cycle n. 25. Contrary to the consensus, we predict it to be quite high, with a maximum sunspot number of 205 ± 29, which should be reached in the first half of 2023. This prediction is consistent with the scenario in which the long-term Gleissberg cycle has reached its minimum in cycle n. 24, and the rising phase is beginning.
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预测太阳周期振幅和形状的地磁活动重现
在各种空间天气和空间气候问题中,预测太阳活动是最具挑战性的课题之一。近几十年来,空间气候数据的不断增强,提高了对相关物理现象的认识,并为预测算法提供了统计基础。为此,我们使用地磁指数提供了一个强大的算法(见Diego et al.[2010])。[J] .地球物理学报,2004,19(6):591 - 591。本文的目的是在第n. 24太阳周期上对我们的算法进行验证,并对其进行升级,以预测即将到来的第n. 25太阳周期的形状、时间和振幅。与一般的预测相反,我们预测太阳黑子的数量会非常高,最大黑子数为205±29,应该会在2023年上半年达到。这一预测与长期格莱斯伯格周期在第24周期达到最低点,上升阶段开始的情景相一致。
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CiteScore
7.20
自引率
4.30%
发文量
567
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