高级检索

基于机器学习的低轨卫星光度模型研究

Research on Machine Learning-Based Photometric Model for Low Earth Orbit Satellites

  • 摘要: 卫星的光度特性在其物理特征分析方面具有重要价值. 构建精准的光度模型能够有效支持观测规划与策略制定, 同时为卫星姿态及外形结构变化的分析与解释提供有力支撑. 低轨卫星过境期间受姿态及观测条件快速复杂变化的影响, 现有的光度模型难以准确估计其亮度. 针对该问题, 在姿态和轨道稳定且观测数据覆盖观测条件充足的低轨卫星上, 提出了一种基于等效截面积的修正球模型光度计算方法. 该方法通过产生与卫星相同亮度的球体截面积来等效表征卫星的观测截面积, 以卫星、太阳、测站及轨道平面之间的相对位置关系作为参量, 引入机器学习算法对等效截面积进行有效拟合和估计, 进而实现低轨卫星过境期间光度的有效预测. 为验证该方法的有效性, 基于兴隆观测基地50 cm望远镜观测的7颗低轨卫星V波段的实测光度数据进行了验证, 并与传统球模型进行了对比分析. 结果表明, 在观测数据充足的情况下, 该方法能够实现更高精度且更稳定的光度预测, 展现出良好的可靠性和广泛的适用性.

     

    Abstract: The photometric characteristics of satellites play an important role in analyzing their physical properties. An accurate photometric model can effectively support observation planning and strategy formulation, while also facilitating the analysis and interpretation of satellite attitude and structural characteristic changes. However, due to the rapid and complex variations in attitude and observation conditions during Low Earth Orbit (LEO) satellite transits, existing photometric models fail to accurately estimate the brightness of these satellites. To address this issue, we propose a modified spherical photometric model based on equivalent cross-sectional area, specifically designed for LEO satellites with stable attitude and orbit, and with observational data that sufficiently covers various viewing conditions. This method equates the satellite's cross-sectional area to that of a sphere with equal brightness. By incorporating the relative positional relationships among the satellite, the Sun, the observation station, and the orbital plane as key parameters, it employs machine learning algorithms to effectively fit and estimate the equivalent cross-sectional area, thereby enabling accurate photometric predictions during LEO satellite transits. To validate the effectiveness of the proposed method, we conducted performance evaluations using V-band photometric data from 7 LEO satellites observed by the 50 cm telescope at Xinglong Observatory, with comparisons made against the traditional spherical model. The results show that when sufficient observational data is available, the proposed method achieves higher accuracy and greater stability in photometric prediction, demonstrating strong reliability and broad applicability.

     

/

返回文章
返回