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Multi-step prediction of Dst index using singular spectrum analysis and locally linear neurofuzzy modeling

机译:基于奇异谱分析和局部线性神经模糊建模的Dst指数多步预测

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摘要

Even one-step prediction of natural time series without delay especially in main phase of storm is difficult for many complicated time series such as Dst index. In this study, with a new method based on singular spectrum analysis, we extract the main components of the time series, model each component with a locally linear neurofuzzy network, and utilize the trained networks for multi-step ahead prediction of a validation set of data, and finally combine the predicted patterns for construction of general prediction. Our methods are compared with several previous studies for Dst index prediction. Several solar geomagnetic extreme events are predicted well with our state-of-the-art method; such as extreme events in 14 March 1989 that led to power black-out in Quebec, as well as other extreme storms.
机译:对于许多复杂的时间序列(例如Dst索引),即使是自然时间序列的一步式预测(尤其是在暴风雨的主要阶段)也很难实现,这是困难的。在这项研究中,采用基于奇异频谱分析的新方法,我们提取了时间序列的主要成分,使用局部线性神经模糊网络对每个成分进行了建模,并利用训练有素的网络对验证组的多步提前进行了预测。数据,最后结合预测模式进行总体预测。我们的方法与Dst指数预测的先前研究进行了比较。我们最先进的方法可以很好地预测几个太阳地磁极端事件。例如1989年3月14日导致魁北克停电的极端事件,以及其他极端风暴。

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