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Adaptive Data-based Predictive Control for Short Take-off and Landing (STOL) Aircraft

机译:基于自适应数据的短程起降(STOL)飞机预测控制

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摘要

Data-based Predictive Control is an emerging control method that stems from Model Predictive Control (MPC). MPC computes current control action based on a prediction of the system output a number of time steps into the future and is generally derived from a known model of the system. Data-based predictive control has the advantage of deriving predictive models and controller gains from input-output data. Thus, a controller can be designed from the outputs of complex simulation code or a physical system where no explicit model exists. If the output data happens to be corrupted by periodic disturbances, the designed controller will also have the built-in ability to reject these disturbances without the need to know them. When data-based predictive control is implemented online, it becomes a version of adaptive control. The characteristics of adaptive data-based predictive control are particularly appropriate for the control of nonlinear and time-varying systems, such as Short Take-off and Landing (STOL) aircraft. STOL is a capability of interest to NASA because conceptual Cruise Efficient Short Take-off and Landing (CESTOL) transport aircraft offer the ability to reduce congestion in the terminal area by utilizing existing shorter runways at airports, as well as to lower community noise by flying steep approach and climb-out patterns that reduce the noise footprint of the aircraft. In this study, adaptive data-based predictive control is implemented as an integrated flight-propulsion controller for the outer-loop control of a CESTOL-type aircraft. Results show that the controller successfully tracks velocity while attempting to maintain a constant flight path angle, using longitudinal command, thrust and flap setting as the control inputs.
机译:基于数据的预测控制是一种源于模型预测控制(MPC)的新兴控制方法。 MPC基于对系统的预测来计算当前的控制动作,该预测输出了将来的许多时间步长,并且通常从系统的已知模型中得出。基于数据的预测控制的优势在于可以从输入输出数据中得出预测模型和控制器增益。因此,可以从复杂的仿真代码或不存在显式模型的物理系统的输出中设计控制器。如果输出数据碰巧受到周期性干扰的破坏,则设计的控制器还将具有内置的能力来拒绝这些干扰而无需知道它们。当在线实施基于数据的预测控制时,它将成为自适应控制的一种形式。基于自适应数据的预测控制的特性特别适用于控制非线性和时变系统,例如短距起降(STOL)飞机。 STOL是NASA感兴趣的一种功能,因为概念性巡航高​​效短距起降(CESTOL)运输飞机可利用机场现有的较短跑道减少终端区的拥挤,并通过飞行降低社区噪音陡峭的进场和爬升模式可减少飞机的噪音足迹。在这项研究中,基于自适应数据的预测控制被实现为CESTOL型飞机的外环控制的集成飞行推进控制器。结果表明,该控制器使用纵向指令,推力和襟翼设置作为控制输入,试图保持恒定的飞行角度成功地跟踪了速度。

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