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PREDICTION OF SOLAR FLARE SIZE AND TIME-TO-FLARE USING SUPPORT VECTOR MACHINE REGRESSION

机译:使用支持向量机回归预测太阳耀斑的大小和耀斑的时间

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We study the prediction of solar flare size and time-to-flare using 38 features describing magnetic complexity of the photospheric magnetic field. This work uses support vector regression to formulate a mapping from the 38-dimensional feature space to a continuous-valued label vector representing flare size or time-to-flare. When we consider flaring regions only, we find an average error in estimating flare size of approximately half a geostationary operational environmental satellite (GOES) class. When we additionally consider non-flaring regions, we find an increased average error of approximately three-fourths a GOES class. We also consider thresholding the regressed flare size for the experiment containing both flaring and non-flaring regions and find a true positive rate of 0.69 and a true negative rate of 0.86 for flare prediction. The results for both of these size regression experiments are consistent across a wide range of predictive time windows, indicating that the magnetic complexity features may be persistent in appearance long before flare activity. This is supported by our larger error rates of some 40 hr in the time-to-flare regression problem. The 38 magnetic complexity features considered here appear to have discriminative potential for flare size, but their persistence in time makes them less discriminative for the time-to-flare problem.
机译:我们使用描述光球磁场的磁场复杂性的38个特征研究了太阳耀斑大小和耀斑时间的预测。这项工作使用支持向量回归来制定从38维特征空间到代表耀斑大小或耀斑时间的连续值标签向量的映射。当仅考虑扩口区域时,我们发现估计扩口大小的平均误差约为地球静止运行环境卫星(GOES)类的一半。当我们另外考虑非扩口区域时,我们发现GOES类的平均误差增加了大约四分之三。我们还考虑了对包含耀斑区域和非耀斑区域的实验的回归耀斑大小设定阈值,并为耀斑预测找到了0.69的真实阳性率和0.86的真实阴性率。这两个尺寸回归实验的结果在很宽的预测时间范围内都是一致的,表明磁复杂性特征可能在火炬活动之前很久就保持了外观。这是我们在耀斑时间回归问题中更大的错误率(大约40小时)所支持的。这里考虑的38个磁性复杂度特征似乎具有判别耀斑大小的潜力,但是它们在时间上的持久性使它们对于耀斑时间问题的判别能力降低。

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