Deep learning reduces sensor requirements for gust rejection on a small uncrewed aerial vehicle morphing wing

Kevin P. T. Haughn, Christina Harvey, Daniel J. Inman
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Abstract

Uncrewed aerial vehicles are integral to a smart city framework, but the dynamic environments above and within urban settings are dangerous for autonomous flight. Wind gusts caused by the uneven landscape jeopardize safe and effective aircraft operation. Birds rapidly reject gusts by changing their wing shape, but current gust alleviation methods for aircraft still use discrete control surfaces. Additionally, modern gust alleviation controllers challenge small uncrewed aerial vehicle power constraints by relying on extensive sensing networks and computationally expensive modeling. Here we show end-to-end deep reinforcement learning forgoing state inference to efficiently alleviate gusts on a smart material camber-morphing wing. In a series of wind tunnel gust experiments at the University of Michigan, trained controllers reduced gust impact by 84% from on-board pressure signals. Notably, gust alleviation using signals from only three pressure taps was statistically indistinguishable from using six pressure tap signals. By efficiently rejecting environmental perturbations, reduced-sensor fly-by-feel controllers open the door to small uncrewed aerial vehicle missions in cities. Haughn and colleagues develop gust rejection controllers and overcome challenges of computationally expensive modeling and expansive distributed sensing networks. With only three pressure tap sensors, small fixed wing uncrewed aerial vehicles could extend into more complex urban environments.

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深度学习降低了小型无人驾驶飞行器变形翼上阵风抑制传感器的要求
无螺旋桨飞行器是智慧城市框架不可或缺的一部分,但城市上空和内部的动态环境对自主飞行来说非常危险。不平整的地形造成的阵风会危及飞行器的安全和有效运行。鸟类通过改变翅膀形状来迅速抵御阵风,但目前飞机的阵风缓解方法仍然使用离散控制面。此外,现代阵风减弱控制器依赖于广泛的传感网络和计算成本高昂的建模,这对小型无人驾驶飞行器的动力限制提出了挑战。在这里,我们展示了放弃状态推理的端到端深度强化学习,以有效缓解智能材料外倾变形机翼上的阵风。在密歇根大学进行的一系列风洞阵风实验中,训练有素的控制器通过机载压力信号将阵风影响降低了 84%。值得注意的是,仅使用三个压力抽头的信号与使用六个压力抽头信号的阵风减轻效果在统计学上没有区别。通过有效地拒绝环境扰动,减少传感器的 "逐感飞行 "控制器为小型无人驾驶飞行器在城市中执行任务打开了大门。Haughn 及其同事开发了阵风抑制控制器,克服了计算昂贵的建模和庞大的分布式传感网络带来的挑战。小型固定翼无人驾驶飞行器只需三个压力水龙头传感器,就能进入更复杂的城市环境。
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