基于混沌时间序列的极点运动预测Volterra自适应滤波方法

Q4 Physics and Astronomy
Lei Yu , Zhao Dan-ning , Qiao Hai-hua , Xu Jin-song , Cai Hong-bing
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引用次数: 0

摘要

考虑到极运动的复杂时变特性,本文将极运动作为混沌时间序列。基于动态系统延迟坐标嵌入的状态空间重构,采用Volterra自适应滤波器进行PM预测。该方法首先利用最小二乘(LS)技术对PM的线性趋势、年度摆动和钱德勒摆动(AW和CW)的调和模型进行估计。选择的LS确定性模型随后用于外推线性趋势、AW和CW,并获得LS残差(LS模型与PM数据本身的差值)。其次,重构LS残数的相空间和最大Lyapunov指数,分别采用C-C算法和小数据集算法进行计算;此外,设计了一个Volterra自适应滤波器来产生LS残数的外推。然后将外推的LS残数添加到LS确定性模型中,以获得预测的PM值。选择国际地球自转和参考系统服务(IERS)发布的EOP C04时间序列作为数据库,生成未来60天的PM预测。对预报结果进行了分析,并与地球方向参数预报比较活动(EOP PCC)和IERS公报a的预报结果进行了比较。结果表明,30天以内的PM预报精度与EOP PCC中最精确的预报技术相当,但未来30天以上的PM预报精度低于最精确的预报技术。结果还表明,短期预测结果优于IERS公报a的预测结果,但随着预测天数的增加,预测误差迅速增加。因此,该方法是一种有潜力的短期PM预测技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Volterra Adaptive Filtering Method for Polar Motion Prediction Based on Chaotic Time Series

In consideration of the complex time-varying characteristics of polar motion (PM), this paper takes PM as chaotic time series. A Volterra adaptive filter is employed for predicting PM based on the state space reconstruction of delay-coordinate embedding of dynamic system. This method first uses the Least Squares (LS) technology to estimate the harmonic models for the linear trend, Annual and Chandler Wobbles (AW and CW) in PM. The selected LS deterministic models are subsequently used to extrapolate the linear trend, AW, and CW, and obtain the LS residues (the difference between the LS model and PM data themselves). Secondly, the phase space and largest Lyapunov exponent of the LS residues are reconstructed, and calculated by means of the C-C and small data-set algorithm, respectively. Further, a Volterra adaptive filter is designed for generating the extrapolations of the LS residues. The extrapolated LS residues are then added to the LS deterministic models in order to obtain the predicted PM values. The EOP C04 time series released by the International Earth Rotation and Reference Systems Service (IERS) are selected as data base to generate the PM predictions up to 60 days in the future. The results of the predictions are analyzed and compared with those obtained by the Earth Orientation Parameters Prediction Comparison Campaign (EOP PCC) and IERS Bulletin A. The results show that the accuracy of the predictions up to 30 days is comparable with that by the most accurate prediction techniques participating in the EOP PCC for PM, but worse than that by those most accurate techniques beyond 30 days in the future. The results also illustrate that the short-term predictions are better than those published by the IERS Bulletin A. However, the errors of the predictions rapidly increase with the prediction days. It is therefore concluded that the proposed method is a potential technology for short-term PM prediction.

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来源期刊
Chinese Astronomy and Astrophysics
Chinese Astronomy and Astrophysics Physics and Astronomy-Astronomy and Astrophysics
CiteScore
0.70
自引率
0.00%
发文量
20
期刊介绍: The vigorous growth of astronomical and astrophysical science in China led to an increase in papers on astrophysics which Acta Astronomica Sinica could no longer absorb. Translations of papers from two new journals the Chinese Journal of Space Science and Acta Astrophysica Sinica are added to the translation of Acta Astronomica Sinica to form the new journal Chinese Astronomy and Astrophysics. Chinese Astronomy and Astrophysics brings English translations of notable articles to astronomers and astrophysicists outside China.
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