Rocket Powered Landing Guidance Using Proximal Policy Optimization

Yifan Chen, Lin Ma
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引用次数: 3

Abstract

Rocket recovery requires advanced guidance algorithms to achieve pinpoint landing while satisfying multiple stringent constraints. In this paper, we design a guidance law based on reinforcement learning for the powered landing phase of vertical take-off and vertical landing reusable rocket. To this end, we apply the proximal policy optimization algorithm to develop a control policy that drives the rocket to land at a specified location. The policy parameterized using a neural network is updated by performing gradient ascent algorithm. After abundant amount of training, the learned policy is evaluated in a simulation of the rocket powered landing scenario considering aerodynamic drag, and the result demonstrates the ability of the proposed guidance method to successfully land the rocket from a random initial state.
基于近端策略优化的火箭动力着陆制导
火箭回收需要先进的制导算法来实现精确着陆,同时满足多个严格的约束条件。针对可重复使用火箭垂直起降动力着陆阶段,设计了一种基于强化学习的制导律。为此,我们应用近端策略优化算法制定控制策略,驱动火箭在指定位置着陆。采用神经网络参数化策略,通过梯度上升算法对策略进行更新。经过大量的训练,在考虑气动阻力的火箭动力着陆场景的仿真中对学习策略进行了评估,结果证明了所提出的制导方法能够从随机初始状态成功着陆火箭。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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