An Efficient and Generalizable Transfer Learning Method for Weather Condition Detection on Ground Terminals

IF 5.7 2区 计算机科学 Q1 ENGINEERING, AEROSPACE IEEE Transactions on Aerospace and Electronic Systems Pub Date : 2024-11-13 DOI:10.1109/TAES.2024.3496857
Wenxuan Zhang;Peng Hu
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Abstract

The increasing adoption of satellite Internet with low-Earth-orbit (LEO) satellites in mega-constellations allows ubiquitous connectivity to rural and remote areas. However, weather events have a significant impact on the performance and reliability of satellite Internet. Adverse weather events, such as snow and rain, can disturb the performance and operations of satellite Internet’s essential ground terminal components, such as satellite antennas, significantly disrupting the space–ground link conditions between LEO satellites and ground stations. This challenge calls for not only region-based weather forecasts but also fine-grained detection capability on ground terminal components of fine-grained weather conditions. Such a capability can assist in fault diagnostics and mitigation for reliable satellite Internet, but its solutions are lacking, not to mention the effectiveness and generalization that are essential in real-world deployments. This article discusses an efficient transfer learning (TL) method that can enable a ground component to locally detect representative weather-related conditions. The proposed method can detect snow, wet, and other conditions resulting from adverse and typical weather events, and shows superior performance compared to the typical deep learning methods, such as YOLOv7, YOLOv9, Faster R-CNN, and R-YOLO. Our TL method also shows the advantage of being generalizable to various scenarios.
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用于地面终端气象条件检测的高效、可推广的迁移学习方法
越来越多地采用卫星互联网与低地球轨道(LEO)卫星在大型星座允许无处不在的连接到农村和偏远地区。然而,天气事件对卫星互联网的性能和可靠性有很大的影响。恶劣天气事件,如雨雪,会干扰卫星互联网的基本地面终端组件(如卫星天线)的性能和运行,严重破坏LEO卫星与地面站之间的空间-地面链路条件。这一挑战不仅需要基于区域的天气预报,还需要对细粒度天气条件的地面终端组件进行细粒度探测能力。这种能力可以帮助可靠的卫星互联网进行故障诊断和缓解,但缺乏其解决方案,更不用说在实际部署中必不可少的有效性和通用性了。本文讨论了一种有效的迁移学习(TL)方法,该方法可以使地面组件在本地检测具有代表性的天气相关条件。该方法可以检测由恶劣天气事件和典型天气事件导致的雪、湿等情况,与典型的深度学习方法(如YOLOv7、YOLOv9、Faster R-CNN和R-YOLO)相比,表现出更优越的性能。我们的TL方法还显示了可推广到各种场景的优势。
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来源期刊
CiteScore
7.80
自引率
13.60%
发文量
433
审稿时长
8.7 months
期刊介绍: IEEE Transactions on Aerospace and Electronic Systems focuses on the organization, design, development, integration, and operation of complex systems for space, air, ocean, or ground environment. These systems include, but are not limited to, navigation, avionics, spacecraft, aerospace power, radar, sonar, telemetry, defense, transportation, automated testing, and command and control.
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