太阳黑子估计与预报的局部加权回归

I. Fadel, M. Al-Hashimi
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摘要

局部加权回归(local weighted regression,黄土)是一种现代的非参数回归方法,用于处理经典方法效率不高或不能有效应用的情况。太阳黑子是太阳球表面相对于其他区域较暗的区域,是太阳活动的重要指标。本文的目的是模拟和预测太阳黑子的数量,因为它们对了解太阳活动对地球的影响及其对地球上的天气和通信系统的直接影响非常重要,这可能导致对卫星的破坏。本文从全球数据中心(太阳黑子指数和长期太阳观测)(SILSO)获得1900 - 2021年(122年)的年度数据和1900年1月至2022年1月(1465个月)的月度数据所代表的太阳黑子数量。黄土回归用于估算和预测月黑子数和年黑子数。平滑参数,以及多项式满足Akaike校正信息准则的最低程度。分析表明,黄土对太阳黑子数据的表征能力较好,并通过了诊断试验,具有较高的预测能力。从月度数据的预测值来看,2022年7月太阳黑子的平均数量最多为123.7个,2月平均数量最少,为61.3个。对于年度数据,从预测值中发现,2023年太阳黑子的平均数量最多,平均为161.7个,2029年平均最少,平均为16.1个。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Locally weighted regression for sunspots estimation and prediction
Locally weighted regression (LOESS) is a modern non-parametric regression method designed for treating cases where classical procedures are not highly efficient or cannot applied efficiently. Sunspots are the darker areas of the solar sphere's surface relative to other regions and are an important indicator of solar activity .The aim of this paper is to model and predict the number of sunspots because of their very importance to understanding the terrestrial consequences of solar activity and its direct impact on weather and communication systems on Earth, which may lead to damage to satellites. In this paper, the number of sunspots represented by annual data for the period from 1900 to 2021 (122 years) as well as monthly data for the period from January 1900 to January 2022 (1465 months) was obtained from the global data center (Sunspot Index and Long-term Solar Observations) (SILSO). The LOESS regression used for estimating and predicting the number of monthly and annual sunspots. The smoothing parameter, as well as the degree of the polynomial that fulfills the lowest for Akaike corrected information criterion. The analysis showed the ability of the LOESS to represent sunspot data by passing diagnostic tests as well as its high predictive ability. From the predictive values for the monthly data, it found that the maximum average number of sunspots will be 123.7 in July 2022, and the lowest average will be in February with 61.3 sunspots. Regarding the annual data, it found from the predictive values that the maximum average number of sunspots will be in the year 2023 with an average of 161.7 sunspots, and the lowest average will be in the year 2029 with an average of 16.1.
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