论文标题

轨道估算中的机器学习:调查

Machine Learning in Orbit Estimation: a Survey

论文作者

Caldas, Francisco, Soares, Cláudia

论文摘要

自1950年代后期发射第一个人造卫星时,居民太空物品的数量稳步增加。据估计,目前约有一百万个大于1 cm的物体正在绕地球绕,只有三万cm超过10 cm。为了避免碰撞的链反应,称为凯斯勒综合征,必须准确跟踪和预测碎屑和卫星轨道。当前基于物理的方法在七天预测中以公里数的顺序存在错误,这在考虑空间碎屑时不足,通常不到一米。这种故障通常是由于轨迹开头的空间对象状态周围的不确定性,在环境条件(例如大气阻力)中的预测错误以及空间对象的质量或几何形状等未知特征。操作员可以通过利用数据驱动的技术(例如机器学习)来得出未衡量的对象的特征并改善非保守力的效果来提高轨道预测准确性。在这项调查中,我们概述了将机器学习应用于轨道确定,轨道预测和大气密度建模的工作。

Since the late 1950s, when the first artificial satellite was launched, the number of Resident Space Objects has steadily increased. It is estimated that around one million objects larger than one cm are currently orbiting the Earth, with only thirty thousand larger than ten cm being tracked. To avert a chain reaction of collisions, known as Kessler Syndrome, it is essential to accurately track and predict debris and satellites' orbits. Current approximate physics-based methods have errors in the order of kilometers for seven-day predictions, which is insufficient when considering space debris, typically with less than one meter. This failure is usually due to uncertainty around the state of the space object at the beginning of the trajectory, forecasting errors in environmental conditions such as atmospheric drag, and unknown characteristics such as the mass or geometry of the space object. Operators can enhance Orbit Prediction accuracy by deriving unmeasured objects' characteristics and improving non-conservative forces' effects by leveraging data-driven techniques, such as Machine Learning. In this survey, we provide an overview of the work in applying Machine Learning for Orbit Determination, Orbit Prediction, and atmospheric density modeling.

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