论文标题

无人机上的风和阵风估计的快速响应热流传感器

Fast-response hot-wire flow sensors for wind and gust estimation on UAVs

论文作者

Simon, Nathaniel, Piqué, Alexander, Snyder, David, Ikuma, Kyle, Majumdar, Anirudha, Hultmark, Marcus

论文摘要

由于可用的传感器技术的局限性,无人驾驶汽车(UAV)缺乏测量湍流,阵风或其他不稳定空气动力学现象的主动感应能力。由于表征,分辨率或鲁棒性要求,常规的原位风开启技术无法在刺激性和动态的多动能环境中传递。为了解决这一能力差距,引入并评估了一种新型的快速响应传感器系统,以在二维中测量风向量。该系统被称为“桅杆”(用于MEMS风向测量塔),利用微电机(MEMS)热线设备的进步来生产适用于在船上的实时风能估算的固态,轻巧且可靠的流动传感器。桅杆使用五个五角形的微微区热线来确定风矢量的方向和幅度。桅杆的性能以高达5〜m/s的速度和0-360度的方向评估。从风洞数据中训练了神经网络传感器模型,以从传感器信号估算风矢量。传感器的平均误差为0.14 m/s,方向为1.6度。此外,速度的95%的测量值在0.36 m/s误差范围内,方向误差为5.0度误差。通过根据方波测试确定的570 Hz的带宽,桅杆可极大地提高无人机风估计能力,并能够在流动条件下捕获相关的高频现象。

Due to limitations in available sensor technology, unmanned aerial vehicles (UAVs) lack an active sensing capability to measure turbulence, gusts, or other unsteady aerodynamic phenomena. Conventional in situ anemometry techniques fail to deliver in the harsh and dynamic multirotor environment due to form factor, resolution, or robustness requirements. To address this capability gap, a novel, fast-response sensor system to measure a wind vector in two dimensions is introduced and evaluated. This system, known as `MAST' (for MEMS Anemometry Sensing Tower), leverages advances in microelectromechanical (MEMS) hot-wire devices to produce a solid-state, lightweight, and robust flow sensor suitable for real-time wind estimation onboard a UAV. The MAST uses five pentagonally-arranged microscale hot-wires to determine the wind vector's direction and magnitude. The MAST's performance was evaluated in a wind tunnel at speeds up to 5~m/s and orientations of 0 - 360 degrees. A neural network sensor model was trained from the wind tunnel data to estimate the wind vector from sensor signals. The average error of the sensor is 0.14 m/s for speed and 1.6 degrees for direction. Furthermore, 95% of measurements are within 0.36 m/s error for speed and 5.0 degree error for direction. With a bandwidth of 570 Hz determined from square-wave testing, the MAST stands to greatly enhance UAV wind estimation capabilities and enable capturing relevant high-frequency phenomena in flow conditions.

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