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An aided Abel inversion technique assisted by artificial neural network-based background ionospheric model for near real-time correction of FORMOSAT-7/COSMIC-2 data

机译:一种辅助的abel反转技术,由人工神经网络的基于网络背景电离层模型辅助Formosat-7 / Cosmic-2数据的近实时校正

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The assumption of spherical uniformity while the retrieval of electron density profiles from the Global Navigation Satellite Systems-Radio Occultation (GNSS-RO) observations is often violated and introduces significant errors in the retrieved electron density profile data. This paper presents an improved Abel-inversion technique by incorporating the horizontal gradients in the ionosphere, which are routinely derived from the Artificial Neural Network (ANN) based background NmF2 (peak electron density of F2-layer) model (ANNC2) assimilated with near real-time Constellation Observing System for Meteorology, Ionosphere, and Climate-2 (FORMOSAT-7/COSMIC-2) NmF2 data. The ANNC2-aided Abel inversion is then implemented for more accurate retrieval of electron density profiles from COSMIC-2 in real-time. It is found that the ANNC2-aided inversion has improved the electron density values around the F2-region and below, which yields a clear separation between two anomaly crests. Further, the ANNC2-aided Abel inversion had significantly reduced the artificial plasma caves beneath the equatorial ionization anomaly crests. Furthermore, COSMIC-2 NmF2 observations obtained from both classical and the ANNC2-aided Abel inversion are compared with the ground-based Digisonde data and found that the ANNC2-aided inversion gives the better results. This study provides some new insights on the aided Abel inversion technique assisted by ANN models for the real-time correction of Abel retrieved electron density profiles.
机译:来自全局导航卫星系统 - 无线电掩星(GNSS-RO)观察的电子密度分布检索的同时呈现球形均匀性的假设通常违反并在检索到的电子密度分布数据中引入显着的错误。本文通过掺入电离层中的水平梯度来提高厌氧技术,这些方法是常规导出的基于人工神经网络(ANN)的背景NMF2(F2层的峰值电子密度)模型(AnnC2)与近真实相同 - 用于气象,电离层和气候-2(Formosat-7 / COSMIC-2)NMF2数据的时间星座观测系统。然后,实现AnnC2辅助ABEL反转,以便实时地从COSMIC-2从宇宙-2更准确地检索电子密度谱。发现AnnC2辅助反转在F2区域和下方的围绕的电子密度值改善,这在两个异常嵴之间产生了清晰的分离。此外,AnnC2辅助Abel反演显着降低了赤道电离异常嵴下方的人造等离子体洞穴。此外,与基于地面的二维数据进行比较了从经典和AnnC2辅助ABEL反转获得的宇宙-2 NMF2观察,并发现AnnC2辅助反转提供了更好的结果。本研究提供了对ANN模型辅助的辅助ABEL反演技术的一些新见解,用于ABEL检索的电子密度分布的实时校正。

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