Dynamic mode decomposition and bivariate autoregressive short-term prediction of Earth rotation parameters

IF 1.2 Q4 REMOTE SENSING Journal of Applied Geodesy Pub Date : 2023-09-05 DOI:10.1515/jag-2023-0030
M. Ligas, Maciej Michalczak
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Abstract

Abstract In this contribution two new approaches are applied to predict polar motion and length-of-day. The first one is based on Dynamic Mode Decomposition (DMD), that is purely data-driven and is capable of reconstructing and forecasting time series in one numerical procedure. The other one is based on a vector autoregression of order p – VAR(p), which is a vector counterpart of AR(p) that accounts for an evolution of variables in time and a coevolution with other variables. DMD was applied to polar motion and length-of-day whilst VAR(p) to a joint prediction of polar motion. A prediction experiment concerned 30-day forecast horizon with a 7-day shift. It was performed separately for years 2017–2022 giving 48 predictions within each year. This study uses IERS EOP 14 C04 (IAU2000) as a reference for all computations and a mean absolute prediction error (MAPE) as a measure of prediction quality. For DMD, MAPEs for x coordinate of the pole vary from 0.22–0.30 mas for the 1st day and 6.64–8.56 mas for the 30th day of prediction depending on the year whilst those values vary from 0.20–0.27 mas and 5.27–7.66 mas for VAR(p) based prediction. Corresponding values for y coordinate of the pole vary from 0.15–0.23 mas and 4.27–5.93 mas for DMD, whilst 0.13–0.21 mas and 3.46–3.82 mas for VAR(p). In case of LOD forecast, MAPEs vary from 0.023–0.031 ms for the 1st day and 0.142–0.205 ms for the 30th day depending on the year.
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地球自转参数的动态模式分解和二元自回归短期预测
摘要在这篇文章中,应用了两种新的方法来预测极地运动和一天的长度。第一种是基于动态模式分解(DMD),它是纯数据驱动的,能够在一个数值过程中重建和预测时间序列。另一种是基于p–VAR(p)阶的向量自回归,它是AR(p)的向量对应物,说明了变量在时间上的进化以及与其他变量的共同进化。DMD应用于极地运动和一天的长度,而VAR(p)应用于极地活动的联合预测。一个预测实验涉及30天的预测范围和7天的变化。它在2017年至2022年分别进行,每年给出48个预测。本研究使用IERS EOP 14 C04(IAU2000)作为所有计算的参考,并使用平均绝对预测误差(MAPE)作为预测质量的度量。对于DMD,极点x坐标的MAPE在0.22–0.30之间变化 第一天的圣诞节和6.64–8.56 预测第30天的mas取决于年份,而这些值在0.20–0.27之间变化 mas和5.27–7.66 基于VAR(p)的预测的mas。极点y坐标的相应值在0.15–0.23之间变化 mas和4.27–5.93 DMD的mas,而0.13–0.21 mas和3.46–3.82 VAR(p)的mas。在LOD预测的情况下,MAPE在0.023–0.031之间变化 第一天为ms,0.142–0.205 ms表示第30天,具体取决于年份。
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来源期刊
Journal of Applied Geodesy
Journal of Applied Geodesy REMOTE SENSING-
CiteScore
2.30
自引率
7.10%
发文量
30
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