基于阈值小波滤波的复杂结构时间序列NARX神经网络模型构建过程优化

O. Mandrikova, Yuri A. Polozov
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引用次数: 0

摘要

提出了一种基于阈值小波滤波的NARX模型构建过程优化方法。NARX实现了自回归移动平均(ARIMA)模型类的范式。在用NARX模拟具有长时间延迟季节性模式的噪声非平稳时间序列时,存在一些困难和限制。以电离层参数的时间序列为例,说明了所开发的小波滤波方法可以得到一个合适的NARX模型。构造了一种小波滤波算法,提出了一种获取随机阈值的方法。结果表明,基于电离层F2临界频率数据的电离层非均匀性检测方法是有效的。这项工作是作为国家任务AAAA-A21-121011290003-0的一部分进行的。该工作通过“东北日地球物理中心”公用中心CKP_558279, USU 351757进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing the process of construction of NARX neural network model for time series of complicated structure based on threshold wavelet filtering
A method for optimization of the process of construction of a NARX model based on threshold wavelet filtering was proposed. NARX realizes the paradigm of the autoregressive moving average (ARIMA) model class. Some difficulties and restrictions are known when modeling noisy and nonstationary time series with seasonal patterns of long time delay by NARX. On the example of time series of ionospheric parameters, the paper shows that the developed procedure of wavelet filtering allows us to obtain an adequate NARX model. An algorithm for wavelet filtering was constructed and a method for obtaining stochastic thresholds was suggested. The efficiency of the method was shown for the problems of detection of ionospheric inhomogeneities based on the data of ionospheric layer F2 critical frequency. The work was carried out as part of the implementation of the state task AAAA-A21-121011290003-0. The work was carried out by the means of the Common Use Center "North-Eastern Heliogeophysical Center" CKP_558279, USU 351757.
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