基于大数据平台的航天器试验数据集成管理技术

Pub Date : 2023-09-10 DOI:10.12694/scpe.v24i3.2416
Nanqi Gong
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引用次数: 0

摘要

本文设计并构建了航天器数据管理通用测试平台。介绍了一种基于LUA的可移植软件开发环境。实现了空间环境数据管理、综合分析、参数校正和航天器可视化显示技术。研究了遥感数据的连续性、混合离散性、变异性和指示性之间的关系。本项目采用综合长短期记忆网络(LSTM)技术对卫星遥感观测数据进行异常检测。充分发挥激光扫描隧道显微镜在非线性领域的优势。该方法与矩阵法相结合,可以提高航天器在运行状态下的自适应能力,更好地识别遥感数据中的异常信息。实验表明,该算法能显著提高系统的异常检测率。该系统可以对前端测试设备进行监控并记录数据。该方法可与空间飞行器的中央控制和自动测试系统相连接。实现了航天飞行器综合测试系统的综合管理。
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Spacecraft Test Data Integration Management Technology based on Big Data Platform
In this paper, a general test platform for spacecraft data management is designed and constructed. This paper introduces a portable software development environment based on LUA. The technology of space environment data management, comprehensive analysis, parameter correction and visual display of spacecraft is realized. The relationship between continuity, mixed dispersion, variation and indication of remote sensing data is studied. This project uses the integrated Long Short Term Memory network (LSTM) technology to detect anomalies in satellite remote sensing observation data. Give full play to the advantages of laser scanning tunneling microscope in the nonlinear field. The combination of this method and the matrix method can improve the adaptive ability of spacecraft in an operation state to better identify abnormal information in remote sensing data. Experiments show that the algorithm can significantly improve the anomaly detection rate of the system. The system can monitor the front test device and record the data. The method can be connected with the space vehicle’s central control and automatic test system. The comprehensive management of the integrated test system of space vehicles is realized.
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