Pontryagin神经网络在光学观测轨道相关中的应用

IF 3.4 2区 物理与天体物理 Q1 ENGINEERING, AEROSPACE
Luca Ramponi , Andrea D’Ambrosio , Riccardo Cipollone , Alessia De Riz , Roberto Furfaro , Vishnu Reddy , Pierluigi Di Lizia
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引用次数: 0

摘要

随着地球静止带以外区域的活动继续增加,预计该区域的卫星和空间碎片数量将大幅增加。其直接后果是,需要可靠的方法来识别、关联和编目该区域的物体,这将在确保空间业务安全方面发挥关键作用。本文提出了一种基于庞特里亚金神经网络(Pontryagin Neural Networks, PoNNs)的方法,它是一种特殊类型的物理信息神经网络(PINNs),用于解决最优控制问题。通过应用功能连接的极值理论,结合了pinn和功能连接理论的优点,PoNN框架通过单层前馈神经网络近似问题的未知数。在假设目标是非机动的情况下,通过构造一个连接两个轨道的能量最优控制问题来解决相关问题。当一个成功的关联被实现时,得到的解决方案对应于最小化控制努力的弹道轨迹。然后使用马氏距离来评估相关性,其中包括数据残差、与最佳轨迹相关的计算燃料成本以及物理残差。作为次要目标,还研究了该方法的初始轨道确定能力。该算法通过两体动力学模型控制下的对象的模拟和真实角度观测进行了验证。真正的光学测量,包括赤经和赤纬数据,是由亚利桑那大学航天中心的望远镜提供的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Pontryagin Neural Network application to tracklets correlation of optical observations
As activity occurring in the region beyond the geostationary belt continues to grow, the number of satellites and space debris in this area is expected to rise significantly. As a direct consequence, the need of reliable methods to identify, correlate and catalog objects in this region will play a pivotal role to ensure the safety of space operations. This paper proposes a method based on Pontryagin Neural Networks (PoNNs), a specialized type of Physics-Informed Neural Networks (PINNs) designed to solve optimal control problems. By applying the Extreme Theory of Functional Connections, which combines the advantages of PINNs with the Theory of Functional Connections, the PoNN framework approximates the problem’s unknowns through a single-layer feed-forward neural network. The correlation problem is addressed by formulating an energy-optimal control problem that links two tracklets, under the assumption that the objects are non-maneuvering. When a successful correlation is achieved, the resulting solution corresponds to a ballistic trajectory that minimizes control effort. The Mahalanobis distance is then used to evaluate the correlation, which includes residuals on the data, the computed fuel cost associated to the optimal trajectory and the residuals on the physics. As a secondary goal, Initial Orbit Determination capabilities of the method are also investigated. The developed algorithm is validated using both simulated and real angles-only observations of objects governed by a two-body dynamical model. The real optical measurements, consisting of right ascension and declination data, were supplied by the telescopes operated by the Space4 Center at The University of Arizona.
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来源期刊
Acta Astronautica
Acta Astronautica 工程技术-工程:宇航
CiteScore
7.20
自引率
22.90%
发文量
599
审稿时长
53 days
期刊介绍: Acta Astronautica is sponsored by the International Academy of Astronautics. Content is based on original contributions in all fields of basic, engineering, life and social space sciences and of space technology related to: The peaceful scientific exploration of space, Its exploitation for human welfare and progress, Conception, design, development and operation of space-borne and Earth-based systems, In addition to regular issues, the journal publishes selected proceedings of the annual International Astronautical Congress (IAC), transactions of the IAA and special issues on topics of current interest, such as microgravity, space station technology, geostationary orbits, and space economics. Other subject areas include satellite technology, space transportation and communications, space energy, power and propulsion, astrodynamics, extraterrestrial intelligence and Earth observations.
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