通过深度神经网络设计月球 DRO 的全飞行精确定位返回轨迹

Xuxing Huang, Baihui Ding, Bin Yang, Renyuan Xie, Zhengyong Guo, Jin Sha, Shuanglin Li
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引用次数: 0

摘要

月球 DRO 精确定点返回是通过月球 DRO 站进行载人深空探测的最后阶段。返回舱在整个飞行过程中会受到复杂的动态和热效应影响。月球 DRO 返回轨迹的优化表现出很强的非线性。为了获得全局最优返回轨迹,构建了一个包括月地转移级和地球大气层再入级在内的全飞行月球 DRO 精确定点返回模型。在大气层边界上引入了一个重返点来连接这两个阶段。然后,建立了月球 DRO 定点返回的全飞行全局优化框架。整个飞行返回轨道的设计简化为重返点的优化。此外,为了进一步提高设计效率,还开发了一种基于深度神经网络的地球重返着陆点快速预测方法。该预测网络将大气层中的重返点和地球上的着陆点与最优控制重返轨迹进行映射。数值模拟验证了所提方法的优化精度和效率。整个飞行返回轨迹实现了着陆点的高精度和低油耗。
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Design of Entire-Flight Pinpoint Return Trajectory for Lunar DRO via Deep Neural Network
Lunar DRO pinpoint return is the final stage of manned deep space exploration via a lunar DRO station. A re-entry capsule suffers from complicated dynamic and thermal effects during an entire flight. The optimization of the lunar DRO return trajectory exhibits strong non-linearity. To obtain a global optimal return trajectory, an entire-flight lunar DRO pinpoint return model including a Moon–Earth transfer stage and an Earth atmosphere re-entry stage is constructed. A re-entry point on the atmosphere boundary is introduced to connect these two stages. Then, an entire-flight global optimization framework for lunar DRO pinpoint return is developed. The design of the entire-flight return trajectory is simplified as the optimization of the re-entry point. Moreover, to further improve the design efficiency, a rapid landing point prediction method for the Earth re-entry is developed based on a deep neural network. This predicting network maps the re-entry point in the atmosphere and the landing point on Earth with respect to optimal control re-entry trajectories. Numerical simulations validate the optimization accuracy and efficiency of the proposed methods. The entire-flight return trajectory achieves a high accuracy of the landing point and low fuel consumption.
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