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A Method for Detecting Atmospheric Lagrangian Coherent Structures Using a Single Fixed-Wing Unmanned Aircraft System

机译:一种使用单固定翼无人飞机系统检测大气拉格朗日相干结构的方法

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摘要

The transport of material through the atmosphere is an issue with wide ranging implications for fields as diverse as agriculture, aviation, and human health. Due to the unsteady nature of the atmosphere, predicting how material will be transported via the Earth’s wind field is challenging. Lagrangian diagnostics, such as Lagrangian coherent structures (LCSs), have been used to discover the most significant regions of material collection or dispersion. However, Lagrangian diagnostics can be time-consuming to calculate and often rely on weather forecasts that may not be completely accurate. Recently, Eulerian diagnostics have been developed which can provide indications of LCS and have computational advantages over their Lagrangian counterparts. In this paper, a methodology is developed for estimating local Eulerian diagnostics from wind velocity data measured by a single fixed-wing unmanned aircraft system (UAS) flying in a circular arc. Using a simulation environment, driven by realistic atmospheric velocity data from the North American Mesoscale (NAM) model, it is shown that the Eulerian diagnostic estimates from UAS measurements approximate the true local Eulerian diagnostics and also predict the passage of LCSs. This methodology requires only a single flying UAS, making it easier and more affordable to implement in the field than existing alternatives, such as multiple UASs and Dopler LiDAR measurements. Our method is general enough to be applied to calculate the gradient of any scalar field.
机译:物质通过大气的运输是一个问题,对农业,航空和人类健康等各个领域具有广泛的影响。由于大气的不稳定特性,预测如何通过地球的风场传输材料具有挑战性。拉格朗日诊断程序(例如拉格朗日相干结构(LCS))已用于发现材料收集或分散的最重要区域。但是,拉格朗日诊断程序的计算可能很耗时,并且常常依赖于可能并不完全准确的天气预报。近来,已经开发出了欧拉诊断,其可以提供LCS的指示并且相对于其拉格朗日同类具有计算优势。在本文中,开发了一种方法,用于从由以圆弧飞行的单个固定翼无人飞行器系统(UAS)测得的风速数据估计本地欧拉诊断。在来自北美中尺度(NAM)模型的实际大气速度数据的驱动下,使用模拟环境表明,来自UAS测量的欧拉诊断估计值近似于真实的本地欧拉诊断,并且还预测了LCS的通过。这种方法仅需要一个飞行的UAS,与现有的替代方案(例如多个UAS和Dopler LiDAR测量)相比,它在现场实施起来更容易且更实惠。我们的方法足够通用,可用于计算任何标量场的梯度。

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