首页> 外文期刊>Journal of Geophysical Research. Biogeosciences >An Artificial Neural Network-Based Ionospheric Model to Predict NmF2 and h(m)F(2) Using Long-Term Data Set of FORMOSAT-3/COSMIC Radio Occultation Observations: Preliminary Results
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An Artificial Neural Network-Based Ionospheric Model to Predict NmF2 and h(m)F(2) Using Long-Term Data Set of FORMOSAT-3/COSMIC Radio Occultation Observations: Preliminary Results

机译:基于人工神经网络的电离层模型,用于预测NMF2和H(M)F(2)使用Gromoosat-3 / Cosmic无线电掩星观测的长期数据集:初步结果

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Artificial Neural Networks (ANNs) are known to be capable of solving linear as well as highly nonlinear problems. Using the long-term and high-quality data set of Formosa Satellite-3/Constellation Observing System for Meteorology, Ionosphere, and Climate (FORMOSAT-3/COSMIC, in short F3/C) from 2006 to 2015, an ANN-based two-dimensional (2-D) Ionospheric Model (ANNIM) is developed to predict the ionospheric peak parameters, such as NmF2 and h(m)F(2). In this pilot study, the ANNIM results are compared with the original F3/C data, GRACE (Gravity Recovery and Climate Experiment) observations as well as International Reference Ionosphere (IRI)-2016 model to assess the learning efficiency of the neural networks used in the model. The ANNIM could well predict the NmF2 (h(m)F(2)) values with RMS errors of 1.87 x 10(5) el/cm(3) (27.9 km) with respect to actual F3/C; and 2.98 x 10(5) el/cm(3) (40.18 km) with respect to independent GRACE data. Further, the ANNIM predictions found to be as good as IRI-2016 model with a slightly smaller RMS error when compared to independent GRACE data. The ANNIM has successfully reproduced the local time, latitude, longitude, and seasonal variations with errors ranging similar to 15-25% for NmF2 and 10-15% for h(m)F(2) compared to actual F3/C data, except the postsunset enhancement in hmF2. Further, the ANNIM has also captured the global-scale ionospheric phenomena such as ionospheric annual anomaly, Weddell Sea Anomaly, and the midlatitude summer nighttime anomaly. Compared to IRI-2016 model, the ANNIM is found to have better represented the fine longitudinal structures and the midlatitude summer nighttime enhancements in both the hemispheres.
机译:已知人工神经网络(ANNS)能够求解线性以及高度非线性问题。使用2006年至2015年的气象,电离层和气象层和气候观测系统的长期和高质量数据集,用于气象,电离层和气候(Formosat-3 / Cosmic),是一个基于Ann的Ann-2015显着的(2-D)电离层模型(Annim)是开发的,以预测电离层峰值参数,例如NMF2和H(M)F(2)。在该试点研究中,附带的内部结果与原始F3 / C数据,Grace(重力恢复和气候实验)观察以及国际参考电离层(IRI)-2016模型进行比较,以评估所用神经网络的学习效率该模型。周边可以很好地预测NMF2(H(M)F(2))值,RMS误差为1.87×10(5)el / cm(3)(27.9km),相对于实际F3 / c;和2.98 x 10(5)El / cm(3)(40.18km)相对于独立的恩典数据。此外,与独立恩典数据相比,发现附加处的预测与IRI-2016模型具有略微较小的RMS误差。周年内部成功地复制了当地时间,纬度,经度和季节性变化,误差与NMF2的误差相似,与实际的F3 / C数据相比,H(m)f(2)的10-15%,除外HMF2中的PostSunset增强。此外,周边还捕获了全球范围的电离层现象,如电离层年度异常,婚礼海洋异常和中美夏季夜间异常。与IRI-2016型号相比,内部内处能够更好地代表精细的纵向结构和半球中的中间夏季夜间增强。

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