利用时间序列离群点检测改进太阳耀斑预测

Junzhi Wen, Md Reazul Islam, Azim Ahmadzadeh, R. Angryk
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引用次数: 0

摘要

. 太阳耀斑不仅对外层空间技术和宇航员的健康构成威胁,还会对地球上我们生活高度依赖的高科技、互联基础设施造成破坏。虽然已经提出了许多机器学习方法来改进耀斑预测,但据我们所知,没有一种方法研究过异常值对这些模型性能的可靠性和鲁棒性的影响。在本研究中,我们研究了多变量时间序列基准数据集SWAN-SF中异常值对耀斑预测模型的影响,并验证了我们的假设。即,在SWAN-SF中存在异常值,去除异常值可以提高模型在未知数据集上的预测性能。我们使用隔离森林来检测弱耀斑实例中的异常值。使用大范围的污染率进行了几个实验,这些污染率决定了当前异常值的百分比。我们使用TimeSeriesSVC根据其实际污染来评估每个数据集的质量。在我们最好的发现中,我们实现了真实技能统计增加279%,海德克技能得分增加68%。结果表明,如果检测和去除异常值,总体上可以显著提高耀斑预测的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Solar Flare Prediction by Time Series Outlier Detection
. Solar flares not only pose risks to outer space technologies and astronauts’ well being, but also cause disruptions on earth to our high-tech, interconnected infrastructure our lives highly depend on. While a number of machine-learning methods have been proposed to improve flare prediction, none of them, to the best of our knowledge, have investigated the impact of outliers on the reliability and robustness of those models’ performance. In this study, we investigate the impact of outliers in a multivariate time series benchmark dataset, namely SWAN-SF, on flare prediction models, and test our hypothesis. That is, there exist outliers in SWAN-SF, removal of which enhances the performance of the prediction models on unseen datasets. We employ Isolation Forest to detect the outliers among the weaker flare instances. Several experiments are carried out using a large range of contamination rates which deter-mine the percentage of present outliers. We assess the quality of each dataset in terms of its actual contamination using TimeSeriesSVC. In our best findings, we achieve a 279% increase in True Skill Statistic and 68% increase in Heidke Skill Score. The results show that overall a significant improvement can be achieved for flare prediction if outliers are detected and removed properly.
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