中山大学人工智能学院, 广东 珠海 519082
廖嘉豪(2000年生),男;研究方向:空天智能;E-mail:liaojh28@mail2.sysu.edu.cn
孟云鹤(1978年生)),男;研究方向:空天智能;E-mail:mengyh7@mail.sysu.edu.cn
收稿:2026-01-02,
录用:2026-01-26,
网络首发:2026-04-07,
纸质出版:2026-05-25
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廖嘉豪,孟云鹤.面向大型变型航天器的智能轨道预报方法[J].中山大学学报(自然科学版)(中英文),2026,65(03):128-134.
LIAO Jiahao,MENG Yunhe.Intelligent orbit prediction for large morphing spacecraft[J].Acta Scientiarum Naturalium Universitatis Sunyatseni,2026,65(03):128-134.
廖嘉豪,孟云鹤.面向大型变型航天器的智能轨道预报方法[J].中山大学学报(自然科学版)(中英文),2026,65(03):128-134. DOI: 10.11714/acta.snus.ZR20260013.
LIAO Jiahao,MENG Yunhe.Intelligent orbit prediction for large morphing spacecraft[J].Acta Scientiarum Naturalium Universitatis Sunyatseni,2026,65(03):128-134. DOI: 10.11714/acta.snus.ZR20260013.
低轨大型航天器的中长期轨道预报精度主要受空间环境不确定性及在轨构型变化的影响。传统预报方法受限于大气密度模型误差及阻力系数的适用性,且对迎风面积随构型变化缺乏精细建模。本文提出了一种面向大型变型航天器的中长期智能轨道预报方法。该方法引入伪阻力系数概念,将大气密度和阻力系数的不确定性统一建模为可学习的时变参数,构建了融合高精度动力学模型与数据驱动的预报框架;进一步给出了伪阻力系数修正模型,显式刻画迎风面积变化与伪阻力系数之间的定量关系。以某在轨大型变型航天器为研究对象的仿真实验表明:在多次变型场景下,所提方法的轨道预报误差显著低于传统方法,可有效提升中长期预报的精度与适应性。
The accuracy of medium and long-term orbit predictions for LEO spacecraft is susceptible to uncertainties in the space environment and on-orbit configuration changes.The traditional prediction methods are limited by errors in atmospheric density models,the inadequate applicability of drag coefficients,and the lack of detailed modeling of the variation in effective windward area due to configuration changes.This paper proposes a medium and long-term orbit prediction method for large morphing spacecraft.This method introduces pseudo-drag coefficient to uniformly model the multiple uncertainties related to atmospheric drag as a learnable time-varying parameter.It constructs a prediction framework that integrates high-precision dynamic orbit model with data-driven techniques.Furthermore,a correction model for the pseudo-drag coefficient is established to explicitly characterize the quantitative relationship between changes in the windward area and the pseudo-drag coefficient. Simulation experiments conducted on a large morphing spacecraft demonstrate that, under multiple morphing scenarios,the proposed method achieves significantly lower orbit prediction errors than traditional method,effectively enhancing the accuracy and adaptability of medium and long-term prediction.
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