An Adaptation of Deep Learning Technique In Orbit Propagation Model Using Long Short-Term Memory

Nor'asnilawati Salleh, Nurulhuda Firdaus Mohd Azmi, S. Yuhaniz
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引用次数: 2

Abstract

The orbit propagation model is used to predict the position and velocity of the satellites. It is crucial to obtain accurate predictions to ensure that satellite operation planning is in place and detects any possible disasters. However, the model's accuracy decreases as the propagation span increases if the input data are not updated. Therefore, to minimize these errors while still maintaining the model accuracy, a study is conducted. The Simplified General Perturbations-4 (SGP4) model and two-line elements (TLE) data are selected to perform this study. The problem is analyzed, and the deep learning technique is the proposed method to solve the issue. Next, the enhanced model is validated. The study aims to produce a reliable orbit propagation model and assist the satellite's operational planning. Also, the improved model can provide vital information for space-based organizations and anyone who may be affected.
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基于长短期记忆的深度学习技术在轨道传播模型中的应用
利用轨道传播模型预测卫星的位置和速度。获得准确的预测以确保卫星运行规划到位并发现任何可能的灾难是至关重要的。但是,如果不更新输入数据,则模型的准确性会随着传播范围的增加而降低。因此,为了在保持模型精度的同时最小化这些误差,我们进行了研究。本文选择简化一般摄动-4 (SGP4)模型和双线元(TLE)数据进行研究。对该问题进行了分析,提出了深度学习技术解决该问题的方法。接下来,验证增强模型。该研究旨在建立可靠的轨道传播模型,辅助卫星的运行规划。此外,改进后的模型可以为天基组织和任何可能受影响的人提供重要信息。
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