Wen Debao, Mei Dengkui, Du Yanan
School of Geographical Sciences, Guangzhou University, Guangzhou 510006, China.
School of Traffic and Transportation Engineering, Changsha University of Science & Technology, Changsha 410004, China.
Sensors (Basel). 2020 Apr 23;20(8):2404. doi: 10.3390/s20082404.
Ionospheric tomography reconstruction based on global navigation satellite system observations is usually an ill-posed problem. To resolve it, an adaptive smoothness constraint ionospheric tomography algorithm is proposed in this work. The new algorithm performs an adaptive adjustment for the constrained weight coefficients of the tomography system. The computational efficiency and the reconstructed quality of ionospheric imaging are improved by using the new algorithm. A numerical simulation experiment was conducted in order to validate the feasibility and superiority of the algorithm. The statistical results of the reconstructed errors and the comparisons of ionospheric profiles confirmed the superiority of the new algorithm. Finally, the new algorithm was successfully applied to reconstruct three-dimensional ionospheric images under geomagnetic quiet and geomagnetic disturbance conditions over Hunan province. The tomographic results are reasonable and consistent with the general behavior of the ionosphere. The positive and negative phase storm effects are found during geomagnetic storm occurrence.
基于全球导航卫星系统观测的电离层层析成像重建通常是一个不适定问题。为解决该问题,本文提出一种自适应平滑约束电离层层析成像算法。新算法对层析成像系统的约束权重系数进行自适应调整。使用新算法提高了电离层成像的计算效率和重建质量。进行了数值模拟实验以验证该算法的可行性和优越性。重建误差的统计结果和电离层剖面的比较证实了新算法的优越性。最后,新算法成功应用于重建湖南省在地磁平静和地磁扰动条件下的三维电离层图像。层析成像结果合理,与电离层的一般行为一致。在地磁暴发生期间发现了正负相位暴效应。