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Ensemble forecasting of major solar flares: First results

机译:主要太阳耀斑综合预报:初步结果

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We present the results from the first ensemble prediction model for major solar flares (M and X classes). The primary aim of this investigation is to explore the construction of an ensemble for an initial prototyping of this new concept. Using the probabilistic forecasts from three models hosted at the Community Coordinated Modeling Center (NASA-GSFC) and the NOAA forecasts, we developed an ensemble forecast by linearly combining the flaring probabilities from all four methods. Performance-based combination weights were calculated using a Monte Carlo-type algorithm that applies a decision threshold Pth to the combined probabilities and maximizing the Heidke Skill Score (HSS). Using the data for 13 recent solar active regions between years 2012 and 2014, we found that linear combination methods can improve the overall probabilistic prediction and improve the categorical prediction for certain values of decision thresholds. Combination weights vary with the applied threshold and none of the tested individual forecasting models seem to provide more accurate predictions than the others for all values of Pth. According to the maximum values of HSS, a performance-based weights calculated by averaging over the sample, performed similarly to a equally weighted model. The values Pth for which the ensemble forecast performs the best are 25% for M-class flares and 15% for X-class flares. When the human-adjusted probabilities from NOAA are excluded from the ensemble, the ensemble performance in terms of the Heidke score is reduced.
机译:我们介绍了主要太阳耀斑(M和X类)的第一个集合预测模型的结果。这项研究的主要目的是探索该新概念的初始原型的整体构建。利用社区协调模型中心(NASA-GSFC)托管的三个模型的概率预测和NOAA预测,我们通过线性组合所有四种方法的爆发概率来开发整体预测。基于性能的组合权重是使用Monte Carlo型算法计算的,该算法将决策阈值Pth应用于组合概率并最大化Heidke技能得分(HSS)。使用2012年至2014年之间最近的13个太阳活动区域的数据,我们发现线性组合方法可以改善总体概率预测,并可以改善某些决策阈值的分类预测。组合权重随所应用的阈值而变化,对于所有Pth值,测试的单个预测模型似乎都不比其他预测模型提供更准确的预测。根据HSS的最大值,通过对样本取平均值计算得出的基于性能的权重与均等加权模型相似。整体预报效果最好的Pth值,M级耀斑为25%,X级耀斑为15%。当将来自NOAA的人为调整的概率排除在集合之外时,以Heidke分数表示的集合性能会降低。

著录项

  • 来源
    《Space Weather》 |2015年第10期|626-642|共17页
  • 作者单位

    Physics Department, The Catholic University of America, Washington, District of Columbia, USA, Heliophysics Science Division, NASA GSFC, Greenbelt, Maryland, USA;

    Space Weather Laboratory, Heliophysics Science Division, NASA GSFC, Greenbelt, Maryland, USA;

    Physics Department, The Catholic University of America, Washington, District of Columbia, USA, Heliophysics Science Division, NASA GSFC, Greenbelt, Maryland, USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Forecasting; Predictive models; Weather forecasting; US Government agencies; Probabilistic logic;

    机译:预报;预报模型;天气预报;美国政府机构;概率逻辑;

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