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Neural network-based sliding mode variable structure control for Mars entry

机译:火星进入的基于神经网络的滑模变结构控制

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To deliver a Mars entry vehicle through the Martian atmosphere to the prescribed parachute deployment point, active Mars entry guidance and control is essential. This article addresses the problem of Mars atmospheric entry control by a neural network-based sliding mode variable structure control (NNSMVSC) to reduce the effect of the bounded uncertainties on the atmospheric density and aerodynamic coefficients. First, NNSMVSC is designed to robustly track the prescribed nominal trajectory under high uncertainties and to effectively reduce the downrange error. Then, the heading alignment logic is adopted in the lateral plane to reduce the cross-range error. Finally, the validity of the control algorithm proposed in this article is demonstrated by computer simulation analysis.
机译:为了通过火星大气层将火星进入运载工具运送到规定的降落伞部署点,积极的火星进入指导和控制至关重要。本文通过基于神经网络的滑模可变结构控制(NNSMVSC)解决了火星大气进入控制问题,以减少有限不确定性对大气密度和空气动力系数的影响。首先,NNSSVSC被设计为在高不确定性下稳健地跟踪规定的标称轨迹,并有效地降低了下距误差。然后,在侧面采用航向对准逻辑以减小跨范围误差。最后,通过计算机仿真分析证明了本文提出的控制算法的有效性。

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