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Method of Detection Abnormal Features in Ionosphere Critical Frequency Data on the Basis of Wavelet Transformation and Neural Networks Combination

机译:基于小波变换和神经网络相结合的电离层临界频率数据异常特征检测方法

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The research is focused on the development of automatic detection method of abnormal features, that occur in recorded time series of ionosphere critical frequency fOF2 during periods of high solar or seismic activity. The method is based on joint application of wavelet-transformation and neural networks. On the basis of wavelet transformation algorithms for the detection of features and estimation of their parameters were developed. Detection and analysis of characteristic components of time series are performed on the basis of joint application of wavelet transformation and neural networks. Method's approbation is performed on fOF2 data obtained at the observatory “Paratunka” (Paratunka settlement, Kamchatskiy Kray).
机译:这项研究集中于异常特征自动检测方法的开发,这些异常特征在太阳或地震活动频繁的时期以电离层临界频率fOF2的记录时间序列发生。该方法基于小波变换和神经网络的联合应用。在小波变换算法的基础上,开发了特征检测和参数估计算法。时间序列特征分量的检测和分析是在小波变换和神经网络联合应用的基础上进行的。方法的认可度是根据在天文台“ Paratunka”(Paratunka定居点,Kamchatskiy Kray)获得的fOF2数据进行的。

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