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Visual Detection of Small Unmanned Aircraft System: Modeling the Limits of Human Pilots

机译:小型无人机系统的视觉检测:建模人类飞行员的限制

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Every month, the Federal Aviation Administration (FAA) receives over 100 reports of small Unmanned Aircraft Systems (sUAS) operating in airspace where they do not belong and the industry has not deployed any specific, ubiquitous solution to preclude this potential collision hazard for pilots of manned aircraft [1]. The purpose of this research is to determine the key physical attributes and construct a new mathematical model to determine the probability of visual detection and avoidance of sUAS. Using the Monte Carlo simulation method, this study provided a means for addressing the effects of uncertainty in the uncontrollable inputs. As a result, it produced a set of probability curves for various operating scenarios and depicted the likelihood of visually detecting a small, unmanned aircraft in time to avoid colliding with it. This study suggested the probability of detecting a sUAS in time to avoid a collision, in all cases modeled during the study, is far less than 50%. The probability was well under 10% for sUAS aircraft similar to the products used by many recreational and hobby operators. This study indicated the see-and-avoid is not a reliable technique for collision prevention by manned-aircraft pilots with small, unmanned aircraft and call for regulators and the industry's deployment of alternative methods.
机译:每个月,联邦航空管理局(FAA)收到超过100个关于空域的小型无人机系统(SUA)的报告,他们不属于,该行业没有部署任何特定的,无处不在的解决方案,以排除这种潜在的碰撞危险载人飞机[1]。本研究的目的是确定关键物理属性并构建一个新的数学模型,以确定视觉检测和避免苏斯的概率。使用Monte Carlo仿真方法,本研究提供了一种用于解决不可控制输入中不确定性的影响的方法。结果,它为各种操作场景产生了一组概率曲线,并在随时检测到小型飞行器的可能性及时,以避免与其碰撞。本研究表明,在研究期间建模的所有情况下,在所有情况下,避免碰撞的时间避免碰撞的可能性远远低于50%。 SUAS飞机的概率低于10%,类似于许多娱乐和爱好运营商使用的产品。本研究表明,跷跷板和避免不是一种可靠的技术,用于采用小型,无人驾驶飞机和监管机构的拨打飞机飞行员和监管机构和行业部署替代方法的可靠技术。

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