无人机颤振抑制的模糊增益调度

Dr. Ellen Applebaum
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引用次数: 4

摘要

本文描述了一种鲁棒模糊增益调度器的创建,用于抑制非最小相位航空伺服弹性无人机(UAV)模型开环响应中的颤振。构造了两组用于增益调度的Takagi-Sugeno (TS)模糊规则:一组用于近似植物矩阵的系统辨识,另一组用于利用内插增益进行全状态反馈控制。插值沿一维缓慢变化的速度包络线进行。在20 ~ 95 m/s的速度范围内,选择23个工作点来构建标称工厂模型。采用LQR优化方法构建标称增益向量。为了实现整个速度包络的稳定性,使用极点放置技术将增益向量添加到调度表中。所得到的增益调度表和模糊增益调度可得到渐近稳定的调节输出响应,平均稳定时间为0.5秒。
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Fuzzy gain scheduling for flutter suppression in unmanned aerial vehicles
This article describes the creation of a robust fuzzy gain scheduler for flutter suppression in the open-loop response of a non-minimum phase aeroservoelastic UAV (unmanned aerial vehicle) model. Two sets of Takagi-Sugeno (TS) fuzzy rules were constructed for gain scheduling: one set for system identification of the approximate plant matrices and one for full state feedback control using interpolated gains. Interpolation takes place along the one-dimensional, slowly varying velocity envelope. Twenty-three working points, in a velocity range of 20 m/s through 95 m/s, were chosen for the construction of the nominal plant models. Nominal gain vectors were constructed using LQR optimization methods. To achieve stability over the entire velocity envelope, gain vectors were added to the scheduling table using pole placement techniques. The resultant gain scheduling table and fuzzy gain scheduling led to asymptotically stable regulated output responses with average settling times of 0.5 seconds.
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