基于图像的航空地面能见度(试点研究)

Daniela Kratchounova, D. Newton, R. Hood
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引用次数: 1

摘要

将一群人纳入天气感应回路有可能提高阿拉斯加广泛分布的机场的天气观测的可用性,这些机场目前没有必要的天气数据集。实际上,至少在一定程度上扩大现有气象感知基础设施的一种方法是,将安装在阿拉斯加的大型航空气象摄像机网络拍摄的图像与众包地面能见度估算相匹配。美国联邦航空局14 CFR 1.1将地面能见度定义为美国国家气象局或经认可的观测者[1]报告的地球表面附近的普遍水平能见度。来源于这些图像。2018年,民用航空航天医学研究所(CAMI)利用CAMI的云研究平台https://cbtopsatcami.faa.gov进行了基于图像的地面能见度试点研究。这项探索性研究的目的有两个。首先,在机场观察不同的基于图像和非基于图像的能见度模型在白天不同天气条件下的表现,在机场,传统的天气传感器与航空天气相机装置和工作人员的专家天气观测者搭配使用。其次,调查在应用环境中通过众包从阿拉斯加天气摄像机网络获取地面能见度的可行性。使用每日时间序列图来检查模型的行为。对未来研究的建议是建立在对模型行为的观察、参与率和来自飞行员和专家人类观察者社区的反馈的基础上的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image-Derived Ground Visibility for Aviation (Pilot Study)
Including a crowd in the weather-sensing loop has the potential for improving the availability of weather observations to Alaska's widely dispersed airfields where essential weather data sets are currently not available. One method of virtually expanding the existing weather-sensing infrastructure, at least in part, would be to pair the images taken by the large network of aviation weather cameras installed in Alaska with crowdsourced estimates of ground visibility11FAA 14 CFR 1.1 defines ground visibility as the prevailing horizontal visibility near the earth's surface as reported by the United States National Weather Service or an accredited observer [1]. derived from those images. In 2018, the Civil Aerospace Medical Institute (CAMI) conducted a pilot study of image-based ground visibility utilizing CAMI's cloud-based research platform at https://cbtopsatcami.faa.gov. The goal of this exploratory research was twofold. First, make observations about the behavior of the different image-based and non-image-based visibility models across different weather conditions during daytime at airfields where a traditional weather sensor is collocated with an aviation weather-camera installation and on-staff expert human weather-observers. Second, survey the viability of deriving ground visibility from Alaska's weather camera network via crowdsourcing in applied settings. The models' behavior was examined using daily time-series plots. The recommendations for future research are founded on the observations of the models' behavior, participation rates and feedback from the pilot and expert human observer's communities.
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