Reinforcement learning-based adaptive spiral-diving Manoeuver guidance method for reentry vehicles subject to unknown disturbances

T. Wu, Z. Wang
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Abstract

This paper proposed a reinforcement learning-based adaptive guidance method for a class of spiral-diving manoeuver guidance problems of reentry vehicles subject to unknown disturbances. First, the desired proportional navigation guidance law is designed for the vehicle based on the initial conditions, terminal constraints and the curve involute principle. Then, the first-order multivariable nonlinear guidance command tracking model considering unknown disturbances is established. And the controller design problem caused by the coupling of control variables is overcome by introducing the coordinate transformation technique. Moreover, the actor-critic networks and corresponding adaptive weight update laws are designed to cope with unknown disturbances. With the help of Lyapunov direct method, the stability of the system is proved. Subsequently, the range values of the guidance parameters are analysed. Finally, the validity as well as superiority of the proposed method are verified by numerical simulations.
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基于强化学习的受未知干扰再入飞行器自适应螺旋下潜机动制导方法
本文提出了一种基于强化学习的自适应制导方法,用于解决受未知扰动影响的再入飞行器螺旋下潜机动制导问题。首先,根据初始条件、终端约束和曲线渐开线原理,为飞行器设计了所需的比例导航制导法则。然后,建立考虑未知扰动的一阶多变量非线性制导指令跟踪模型。通过引入坐标变换技术,克服了由控制变量耦合引起的控制器设计问题。此外,还设计了行为批判网络和相应的自适应权值更新规律,以应对未知干扰。借助 Lyapunov 直接法,证明了系统的稳定性。随后,分析了制导参数的范围值。最后,通过数值模拟验证了所提方法的有效性和优越性。
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