Real-time Satellite Anomaly Data Tagging Based on DAE-LSTM

Spacecraft is the main carrier of human exploration of outer space, exploration and understanding of the Earth and the universe, and the development of spaceflight can promote human civilization andsocial development, and can meet the nee-ds of economic construction, scientific and technological dev...

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Veröffentlicht in:International journal of advanced network, monitoring, and controls monitoring, and controls, 2023-01, Vol.8 (1), p.40-49
Hauptverfasser: Xia, Caiyuan, Yan, Qianshi
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container_title International journal of advanced network, monitoring, and controls
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creator Xia, Caiyuan
Yan, Qianshi
description Spacecraft is the main carrier of human exploration of outer space, exploration and understanding of the Earth and the universe, and the development of spaceflight can promote human civilization andsocial development, and can meet the nee-ds of economic construction, scientific and technological development, security construction, social progress and other aspects. The current global number of satellites in orbit reaches 5,465, of which China has 541. The vigorous development of the space industry symbolizes the steady improvement of the country’s comprehensive national power and overall technology. During the operation, the satellite in orbit needs to transmit data to the ground, these data may be subject to interference from various aspects, or even equipment failure, we find these data in real time is very important to reduce losses. The data transmitted by satellite has obvious temporal characteristics, and Long Short-Term Memory (LSTM) network has obvious advantages for processing temporal data, so this paper proposes a BER marking model based on the combination of LSTM network and self-coding technology. By comparing the data before and after noise reduction, a threshold value can be determined, and the BERs can be accurately distinguished by this method. After testing with real satellite temperature data, the accuracy of the model detection reaches a high level.
doi_str_mv 10.2478/ijanmc-2023-0044
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source De Gruyter Open Access Journals; Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals
subjects Deep Learning
LSTM Network
Satellite Data
Self Coding Technology
title Real-time Satellite Anomaly Data Tagging Based on DAE-LSTM
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