基于经验模态分解和LSTM的10.7 cm太阳射电通量预报新方法

Junqi Luo, Liucun Zhu, Hongbing Zhu, W. Chien, Jiahai Liang
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引用次数: 4

摘要

每日10.7 cm太阳射电通量(F10.7)数据是一个高度不稳定的时间序列。准确预报F10.7在航空航天和气象领域具有重要意义。目前对F10.7的预测主要采用线性模型、非线性模型或两者的结合。合并模式是一种很有前途的策略,它试图从两者的优势中获益。本文提出了一种经验模态分解(EMD)长短期记忆神经网络(LSTMNN)混合方法,该方法由特定框架组合而成,即EMD - lstm。首先对F10.7原始数据集进行EMD处理,将其分解为一系列具有不同频率特征的分量。然后将EMD的输出值分别输入到开发的LSTM模型中,获得各分量的预测值。最后的预测值是经过信息重构后得到的。采用提前1 ~ 27天及不同年份的统计评价指标进行评价。实验结果表明,与基准模型(包括其他孤立算法和混合方法)相比,该方法具有更高的精度。
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A New Approach for the 10.7-cm Solar Radio Flux Forecasting: Based on Empirical Mode Decomposition and LSTM
The daily 10.7-cm Solar Radio Flux (F10.7) data is a time series with highly volatile. The accurate prediction of F10.7 has a great significance in the fields of aerospace and meteorology. At present, the prediction of F10.7 is mainly carried out by linear models, nonlinearmodels, or a combination of the two. The combinationmodel is a promising strategy, which attempts to benefit from the strength of both. This paper proposes an Empirical Mode Decomposition (EMD) -Long Short-Term Memory Neural Network (LSTMNN) hybrid method, which is assembled by a particular frame, namely EMD–LSTM. The original dataset of F10.7 is firstly processed by EMD and decomposed into a series of components with different frequency characteristics. Then the output values of EMD are respectively fed to a developed LSTM model to acquire the predicted values of each component. The final forecasting values are obtained after a procedure of information reconstruction. The evaluation is undertaken by some statistical evaluation indexes in the cases of 1-27 days ahead and different years. Experimental results show that the proposed method gives superior accuracy as compared with benchmarkmodels, including other isolated algorithms and hybrid methods.
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