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Research Article

Learning-based multi-level impact point prediction method for long-range vehicles under the influence of a disturbing gravity field

Leliang Ren1Yong Xian1Shaopeng Li1,2Daqiao Zhang1( )Bing Li1Weilin Guo3
Xi’an Research Institute of High Technology, Xi’an 710025, China
Department of Automation, Tsinghua University, Beijing 100084, China
China Xi’an Satellite Control Center, Xi’an 710043, China
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Abstract

The influence of a disturbing gravity field on the impact points of long-range vehicles (LRVs) has become increasingly prominent, which is an important factor affecting the accuracy of impact point prediction (IPP). To achieve high-accuracy and fast IPP for LRVs under the influence of a disturbing gravity field, a data-driven multi-level IPP method is proposed to balance the prediction accuracy and real-time performance. At the first level, the impact point of the current flight state is predicted based on elliptical trajectory theory, and the impact deviation of the elliptical trajectory (ID-ET) is calculated. At the second and third levels, a neural network (NN) model is established to learn the ID-ET caused by the J2 term and re-entry aerodynamic drag as well as that caused by the disturbing gravity field. To improve the NN prediction performance, an auxiliary circle is applied to decouple the ID-ET. To reduce the difficulty of NN learning, a training strategy is designed based on the idea of curriculum learning, which improves training accuracy. At the same time, a hybrid sample generation strategy is proposed to improve the NN generalization ability. A detailed simulation experiment is designed to analyze the advantages and computational complexity of the proposed method. The simulation results showed that the proposed model has a high prediction accuracy, strong generalization ability, and good real-time performance under the influence of the disturbing gravity field and re-entry aerodynamic drag. Among the 317,360 samples contained in the training and test sets, the 3σ prediction error was 6.21 m. On an STM32F407 single-chip microcomputer, the IPP required 3.415 ms. The proposed method can provide support for the design of guidance algorithms and is applicable to engineering practice.

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Astrodynamics
Pages 321-342

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Cite this article:
Ren L, Xian Y, Li S, et al. Learning-based multi-level impact point prediction method for long-range vehicles under the influence of a disturbing gravity field. Astrodynamics, 2025, 9(3): 321-342. https://doi.org/10.1007/s42064-023-0184-2

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Received: 30 May 2023
Accepted: 14 September 2023
Published: 16 July 2025
© Tsinghua University Press 2025