Improved Prediction of Polar Motions by Piecewise Parameterization

IF 0.7 Q4 ASTRONOMY & ASTROPHYSICS Artificial Satellites-Journal of Planetary Geodesy Pub Date : 2022-12-01 DOI:10.2478/arsa-2022-0025
Yuanwei Wu, Xin Zhao, Xinyu Yang
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引用次数: 1

Abstract

Abstract On seanonal timescale, the variation of Earth rotation is mainly regulated by angular momentum exchanges between the solid Earth and the fluidal atmosphere, ocean and hydrosphere. In the 2nd EOP PCC, we developed Dill2019’s method for polar motion prediction, using piecewise autoagressive parameters. The maximum prediction errors within 90 days are 36 and 16 mas for polar motion x and y components, respectively. Compared with Bulletin A, the mean absolute error of polar motion y prediction is improved by 20% in all timescale, and with a maximum improvement of 49% on the 5th day. Whereas, for polar motion x, the performance is slightly better (2% - 8%) within 30 days but worse (−7%~ −19%) within 30~90 days. We found that the prediction accuracy is very sensitive to the quality of the angular momentum data. For example, on average, the prediction of polar motion y is around 2 times better than polar motion x. In addition, we found the accuracy of 30-90 days prediction is dramatically decreased in the year 2020. We suspect that such deterioration might be due to the pandemic of coronavirus COVID-19, which suppressed global airline activities by more than 60%, then result in a lose of air-borne meteorological data, which are important for weather forecast.
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改进的逐段参数化极地运动预测
摘要在海洋时间尺度上,地球自转的变化主要受固体地球与流体大气、海洋和水圈之间的角动量交换的调节。在第二次EOP PCC中,我们开发了Dill2019的极地运动预测方法,使用分段自适应参数。对于极运动x和y分量,90天内的最大预测误差分别为36和16mas。与公告A相比,极地运动y预测的平均绝对误差在所有时间尺度上都提高了20%,第5天最大提高了49%。而对于极性运动x,在30天内性能稍好(2%-8%),但在30~90天内性能较差(-7%--19%)。我们发现,预测精度对角动量数据的质量非常敏感。例如,平均而言,极地运动y的预测大约是极地运动x的2倍。此外,我们发现30-90天预测的准确性在2020年大幅下降。我们怀疑,这种恶化可能是由于冠状病毒新冠肺炎的大流行,这使全球航空公司的活动减少了60%以上,然后导致空中气象数据的丢失,而这些数据对天气预报很重要。
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1.00
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11.10%
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