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Air-Breathing Hypersonic Vehicle Tracking Control Based on Adaptive Dynamic Programming

机译:基于自适应动态规划的喘气高超音速车辆跟踪控制

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摘要

In this paper, we propose a data-driven supplementary control approach with adaptive learning capability for air-breathing hypersonic vehicle tracking control based on action-dependent heuristic dynamic programming (ADHDP). The control action is generated by the combination of sliding mode control (SMC) and the ADHDP controller to track the desired velocity and the desired altitude. In particular, the ADHDP controller observes the differences between the actual velocity/altitude and the desired velocity/altitude, and then provides a supplementary control action accordingly. The ADHDP controller does not rely on the accurate mathematical model function and is data driven. Meanwhile, it is capable to adjust its parameters online over time under various working conditions, which is very suitable for hypersonic vehicle system with parameter uncertainties and disturbances. We verify the adaptive supplementary control approach versus the traditional SMC in the cruising flight, and provide three simulation studies to illustrate the improved performance with the proposed approach.
机译:在本文中,我们提出了一种基于数据的具有自适应学习能力的辅助驱动方法,用于基于动作依赖启发式动态规划(ADHDP)的呼吸式高超音速车辆跟踪控制。滑模控制(SMC)和ADHDP控制器的组合产生了控制动作,以跟踪所需的速度和所需的高度。特别地,ADHDP控制器观察实际速度/高度与期望速度/高度之间的差异,然后相应地提供补充控制动作。 ADHDP控制器不依赖精确的数学模型功能,而是由数据驱动的。同时,它能够在各种工况下随时间在线调整其参数,非常适合参数不确定和干扰的高超音速车辆系统。我们在巡航飞行中验证了自适应辅助控制方法与传统SMC的对比,并提供了三个仿真研究来说明所提出方法的改进性能。

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