数值天气预报与人工神经网络混合方法在气溶胶效应下估计通信卫星遥测信号衰落的初步结果

IF 0.9 4区 计算机科学 Q3 ENGINEERING, AEROSPACE
Arif Armagan Gozutok, Umit Cezmi Yilmaz PhD, Selman Demirel PhD
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引用次数: 0

摘要

在本研究中,人工深度神经网络(ANN)在两个高分辨率模拟域上对24小时多域高分辨率嵌套天气研究与预报(WRF)模型运行的输出进行了实现,并对降雨产生进行了测试和比较,以评估在轨道上地球静止通信航天器观测到的真实多尺度风暴情况下的信号衰落事件。我们的人工神经网络方法由WRF模型输出参数驱动,重点预测在2020年9月12日发生的沙尘暴造成的显著气溶胶存在下,在通信卫星遥测(TM)下行信号水平上观测到的雨衰减信号损伤。然后将该建模方法与在TM信号上观测到的降雨衰减进行比较,并与通信卫星地面站TM信号测量结果进行相关。对多输入单输出前馈神经网络(MISO FFNN)预测模型输出进行误差分析(RMSE)的初步结果与地面站TM基带解调器观测到的TM下行信号衰减具有良好的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Preliminary results on estimation of signal fading on telecommunication satellite telemetry signals with hybrid numerical weather prediction and artificial neural network approach under presence of aerosol effect

Preliminary results on estimation of signal fading on telecommunication satellite telemetry signals with hybrid numerical weather prediction and artificial neural network approach under presence of aerosol effect

In this research, an implementation of artificial deep neural networks (ANN) over outputs of 24-h multi-domain high-resolution nested real case Weather Research and Forecasting (WRF) model runs was carried out over two high-resolution simulation domains, which are tested and compared for rainfall generation in order to assess the signal fading event observed on geostationary telecommunication spacecraft in orbit for a real multiscale storm case. Our methodology of ANN, which is driven by WRF model output parameters, focuses on prediction of the rain attenuation signal impairment which is observed on the communication satellite telemetry (TM) downlink signal levels under significant aerosol presence due to dust storm which occurred on 12 September 2020. This modelling approach is then compared to rain attenuation observed on TM signal and correlated with communication satellite ground station TM signal measurements. Preliminary results from conducted error analysis (RMSE) on multiple input single output feed-forward neural network (MISO FFNN) prediction model outputs tested with several neural algorithms indicate good correlation with the TM downlink signal attenuation observations taken from the ground station TM baseband demodulator.

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来源期刊
CiteScore
4.10
自引率
5.90%
发文量
31
审稿时长
>12 weeks
期刊介绍: The journal covers all aspects of the theory, practice and operation of satellite systems and networks. Papers must address some aspect of satellite systems or their applications. Topics covered include: -Satellite communication and broadcast systems- Satellite navigation and positioning systems- Satellite networks and networking- Hybrid systems- Equipment-earth stations/terminals, payloads, launchers and components- Description of new systems, operations and trials- Planning and operations- Performance analysis- Interoperability- Propagation and interference- Enabling technologies-coding/modulation/signal processing, etc.- Mobile/Broadcast/Navigation/fixed services- Service provision, marketing, economics and business aspects- Standards and regulation- Network protocols
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