首页> 外文期刊>Journal of Geophysical Research, A. Space Physics: JGR >Response of data-driven artificial neural network-based TEC models to neutral wind for different locations, seasons, and solar activity levels from the Indian longitude sector
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Response of data-driven artificial neural network-based TEC models to neutral wind for different locations, seasons, and solar activity levels from the Indian longitude sector

机译:基于数据驱动的人工神经网络的TEC模型对来自印度经度部门的不同地点,季节和太阳能水平的中性风的响应

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摘要

The perturbations imposed on transionospheric signals by the ionosphere are a major concern for navigation. The dynamic nature of the ionosphere in the low-latitude equatorial region and the Indian longitude sector has some specific characteristics such as sharp temporal and latitudinal variation of total electron content (TEC). TEC in the Indian longitude sector also undergoes seasonal variations. The large magnitude and sharp variation of TEC cause large and variable range errors for satellite-based navigation system such as Global Positioning System (GPS) throughout the day. For accurate navigation using satellite-based augmentation systems, proper prediction of TEC under certain geophysical conditions is necessary in the equatorial region. It has been reported in the literature that prediction accuracy of TEC has been improved using measured data-driven artificial neural network (ANN)-based vertical TEC (VTEC) models, compared to standard ionospheric models. A set of observations carried out in the Indian longitude sector have been reported in this paper in order to find the amount of improvement in performance accuracy of an ANN-based VTEC model after incorporation of neutral wind as model input. The variations of this improvement in prediction accuracy with respect to latitude, longitude, season, and solar activity have also been reported in this paper.
机译:电离层对转向器信号施加的扰动是导航的主要关注点。低纬度赤道区域和印度经度扇区中电离层的动态性质具有一些特定的特征,例如总电子含量的尖锐时间和纬度变化(TEC)。印度经度部门的TEC也经历了季节性变化。 TEC的较大幅度和急剧变化导致全天卫星导航系统的大而可变的范围误差,例如全天的全球定位系统(GPS)。对于使用基于卫星的增强系统的准确导航,在赤道区域需要在某些地球物理条件下对TEC进行正确预测。据报道,与标准电离层模型相比,使用测量的数据驱动的人工神经网络(ANN)的垂直TEC(VTEC)模型来改善TEC的预测精度。本文报道了在印度经度部门进行的一套观察结果,以便在将中性风作为模型输入结合后找到基于ANN的VTEC模型的性能准确性的改善量。本文还报道了关于纬度,经度,季节和太阳能活性的预测精度的改善的变化。

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