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Implementation of VARMA Model for Ionospheric TEC Forecast over an Indian GNSS Station

机译:VARMA模型在印度GNSS站进行电离层TEC预报的实现

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Accuracy in positioning services of the Global Navigation Satellite System (GNSS) is majorly affected due to ionospheric signal delays. The forecasting of ionospheric delays is tough and challenging low-latitude regions due to rapid temporal variations in ionospheric electron density irregularities. Hence, in this paper a non-stationary signal decomposition technique based on Variational Mode Decomposition (VMD), combined with Auto Regressive Moving Average (ARMA) called VMD-ARMA (VARMA) model is presented to forecast the ionospheric delay values 1 hour ahead. The performance of the proposed VARMA ionospheric TEC forecasting algorithm is tested during geomagnetic storms that occurred in June 2013. Three months GNSS data i.e., from 1 April 2013- 30 June 2013 is logged using GNSS Ionospheric Scintillation and TEC Monitor (GISTM) receiver located at Koneru Lakshamaiah Education Fondation, (K L E F), Guntur station (geographic: 16.37°N, 80.44°E), India. It is found that the VARMA model is 2-3% more efficient than the ARMA model in providing good forecasting accuracy during storm conditions. The forecasting results demonstrate that the VARMA version can be useful to forecast the ionospheric TEC variations at low-latitude regions during disturbed ionospheric space weather conditions also.
机译:由于电离层信号延迟,全球导航卫星系统(GNSS)定位服务的准确性受到严重影响。由于电离层电子密度不规则性的快速时间变化,对电离层延迟的预测是艰巨而具有挑战性的低纬度地区。因此,本文提出了一种基于变分模式分解(VMD)的非平稳信号分解技术,并结合称为VMD-ARMA(VARMA)模型的自回归移动平均(ARMA)模型来预测电离层延迟值提前1小时。拟议的VARMA电离层TEC预测算法的性能在2013年6月发生的地磁风暴中进行了测试。三个月的GNSS数据(即2013年4月1日至2013年6月30日)使用位于以下位置的GNSS电离层闪烁和TEC Monitor(GISTM)接收器进行记录。印度贡图尔站(KLEF)的Koneru Lakshamaiah教育基金会(地理:16.37°N,80.44°E)。发现在风暴条件下,VARMA模型在提供良好的预测精度方面比ARMA模型高2-3%。预测结果表明,VARMA版本可用于在电离层空间天气状况受到干扰的情况下,预测低纬度地区电离层TEC的变化。

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