Meteorological Satellite Operation Prediction Using a BiLSTM Deep Learning Model
The current satellite management system mainly relies on manual work. If small faults cannot be found in time, it may cause systematic fault problems and then affect the accuracy of satellite data and the service quality of meteorological satellite. If the operation trend of satellite will be predic...
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Series: | Security and Communication Networks |
Online Access: | http://dx.doi.org/10.1155/2021/9916461 |
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doaj-41d244a52b2a46bebc1a2a641115e8d92021-07-05T00:02:52ZengHindawi-WileySecurity and Communication Networks1939-01222021-01-01202110.1155/2021/9916461Meteorological Satellite Operation Prediction Using a BiLSTM Deep Learning ModelYi Peng0Qi Han1Fei Su2Xingwei He3Xiaohu Feng4National Satellite Meteorological CenterNational Satellite Meteorological CenterChina Unicom Smart Connection Technology Co.National Satellite Meteorological CenterNational Satellite Meteorological CenterThe current satellite management system mainly relies on manual work. If small faults cannot be found in time, it may cause systematic fault problems and then affect the accuracy of satellite data and the service quality of meteorological satellite. If the operation trend of satellite will be predicted, the fault can be avoided. However, the satellite system is complex, and the telemetry signal is unstable, nonlinear, and time-related. It is difficult to predict through a certain model. Based on these, this paper proposes a bidirectional long short-term memory (BiLSTM) deep leaning model to predict the operation trend of meteorological satellite. In the method, the layer number of the model is designed to be two, and the prediction results, which are forecasted by LSTM network as the future trend data and historical data, are both taken as the input of BiLSTM model. The dataset for the research is generated and transmitted from Advanced Geostationary Radiation Imager (AGRI), which is the load of FY4A meteorological satellite. In order to demonstrate the superiority of the BiLSTM prediction model, it is compared with LSTM based on the same dataset in the experiment. The result shows that the BiLSTM method reports a state-of-the-art performance on satellite telemetry data.http://dx.doi.org/10.1155/2021/9916461 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yi Peng Qi Han Fei Su Xingwei He Xiaohu Feng |
spellingShingle |
Yi Peng Qi Han Fei Su Xingwei He Xiaohu Feng Meteorological Satellite Operation Prediction Using a BiLSTM Deep Learning Model Security and Communication Networks |
author_facet |
Yi Peng Qi Han Fei Su Xingwei He Xiaohu Feng |
author_sort |
Yi Peng |
title |
Meteorological Satellite Operation Prediction Using a BiLSTM Deep Learning Model |
title_short |
Meteorological Satellite Operation Prediction Using a BiLSTM Deep Learning Model |
title_full |
Meteorological Satellite Operation Prediction Using a BiLSTM Deep Learning Model |
title_fullStr |
Meteorological Satellite Operation Prediction Using a BiLSTM Deep Learning Model |
title_full_unstemmed |
Meteorological Satellite Operation Prediction Using a BiLSTM Deep Learning Model |
title_sort |
meteorological satellite operation prediction using a bilstm deep learning model |
publisher |
Hindawi-Wiley |
series |
Security and Communication Networks |
issn |
1939-0122 |
publishDate |
2021-01-01 |
description |
The current satellite management system mainly relies on manual work. If small faults cannot be found in time, it may cause systematic fault problems and then affect the accuracy of satellite data and the service quality of meteorological satellite. If the operation trend of satellite will be predicted, the fault can be avoided. However, the satellite system is complex, and the telemetry signal is unstable, nonlinear, and time-related. It is difficult to predict through a certain model. Based on these, this paper proposes a bidirectional long short-term memory (BiLSTM) deep leaning model to predict the operation trend of meteorological satellite. In the method, the layer number of the model is designed to be two, and the prediction results, which are forecasted by LSTM network as the future trend data and historical data, are both taken as the input of BiLSTM model. The dataset for the research is generated and transmitted from Advanced Geostationary Radiation Imager (AGRI), which is the load of FY4A meteorological satellite. In order to demonstrate the superiority of the BiLSTM prediction model, it is compared with LSTM based on the same dataset in the experiment. The result shows that the BiLSTM method reports a state-of-the-art performance on satellite telemetry data. |
url |
http://dx.doi.org/10.1155/2021/9916461 |
work_keys_str_mv |
AT yipeng meteorologicalsatelliteoperationpredictionusingabilstmdeeplearningmodel AT qihan meteorologicalsatelliteoperationpredictionusingabilstmdeeplearningmodel AT feisu meteorologicalsatelliteoperationpredictionusingabilstmdeeplearningmodel AT xingweihe meteorologicalsatelliteoperationpredictionusingabilstmdeeplearningmodel AT xiaohufeng meteorologicalsatelliteoperationpredictionusingabilstmdeeplearningmodel |
_version_ |
1721319349604581376 |