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Research on Short-term Ionospheric Prediction Combining with EOF and ARIMA Model Over Guangxi Area

机译:广西地区EOF和ARIMA模型结合短期电离层预测研究

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According to the empirical orthogonal function (EOF), the non-stationary time series data are decomposed into time function and space function, so this mathematical method can simplify the non-stationary time series and eliminate redundant information, thus it performs well in non-stationary time series analysis. The ionospheric Vertical Total Electron Content (VTEC) is a non-stationary time series, which has non-stationary and seasonal variation and the activity of VTEC is more active in low latitudes. Guangxi is located in the middle and low latitudes of the Northern Hemisphere with abundant sunshine in summer and autumn. The energy released by solar radiation makes the ionospheric activity in this region more complex than that in the high latitudes. However, no expert or scholar has used EOF analysis method to conduct a comprehensive study of the low latitudes. The International GNSS Service (IGS) provided by high precision Global Ionospheric Maps (GIM) center in Guangxi are used in the modeling data, the GIM data of the first 10 days of different seasons are decomposed by EOF, and then the time function is predicted by ARIMA model. VTEC values for the next five days are obtained through reconstruction, and relative accuracy and standard deviation are used as accuracy evaluation criteria. The results of EOF-ARIMA model are compared with those of ARIMA model, and the prediction accuracy of EOF-ARIMA model at the equatorial anomaly is analyzed in order to explore the reliability of the model in the more complex region of ionospheric activity. The results show that the average relative precision of EOF-ARIMA model is 84.0, the average standard deviation is 7.45TECu, the average relative precision of ARIMA model is 81.5, the average standard deviation is 8.29TECu, and the precision of EOF-ARIMA model is higher than that of ARIMA model.; There is no significant seasonal difference in the prediction accuracy of EOF-ARIMA model, and the prediction accuracy of ARIMA model in autumn is lower than that of other seasons, which indicates that the prediction results of EOF-ARIMA model are more reliable; The prediction accuracy of the EOF-ARIMA model at the equatorial anomaly is not affected, and it is consistent with the accuracy of the high latitude area in Guangxi. It is shown that the EOF-ARIMA model has high accuracy and stability in the short-term ionospheric prediction in Guangxi at low latitudes of China, and provides a new and reliable method for ionospheric prediction at low latitudes.
机译:根据经验正交函数(EOF),非静止时间序列数据被分解为时间函数和空间功能,因此该数学方法可以简化非静止时间序列并消除冗余信息,因此在非 - 静止时间序列分析。电离层垂直总电子含量(VTEC)是一种非静止时间序列,其具有非静止和季节性变化,并且VTEC的活性在低纬度中更活跃。广西位于北半球的中低纬度,夏季和秋季丰富的阳光。太阳辐射释放的能量使得该区域的电离层活性比高纬度更复杂。但是,没有专家或学者使用了EOF分析方法来对低纬度进行全面研究。广西高精度全局电离层地图(GIM)中心提供的国际GNSS服务(GNSS)在建模数据中使用,不同季节的前10天的GIM数据由EOF分解,然后预测时间函数由Arima模型。通过重建获得未来五天的VTEC值,并且相对精度和标准偏差用作精度评估标准。与Arima模型的结果进行比较EOF-ARIMA模型的结果,分析了赤道异常的EOF-ARIMA模型的预测准确性,以探讨模型在更复杂的电离子活性区域中的可靠性。结果表明,EOF-ARIMA模型的平均相对精度为84.0,平均标准偏差为7.45秒,ARIMA模型的平均相对精度为81.5,平均标准偏差为8.29秒,以及EOF-ARIMA模型的精度。高于Arima模型的模型; Eof-Arima模型的预测准确性没有显着的季节性差异,秋季Arima模型的预测精度低于其他季节,这表明EOF-Arima模型的预测结果更可靠;赤道异常的EOF-Arima模型的预测精度不受影响,并且它与广西高纬度地区的准确性一致。结果表明,EOF-ARIMA模型在中国低纬度地区的广西短期电离层预测中具有高精度和稳定性,为低纬度的电离层预测提供了一种新的可靠方法。

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