首页> 外文会议>Conference on Quantum-Physics-based Information Security >Atmospheric energy harvesting: use of Doppler Wind Lidars on UAVs to extend mission endurance and enable quiet operations
【24h】

Atmospheric energy harvesting: use of Doppler Wind Lidars on UAVs to extend mission endurance and enable quiet operations

机译:大气能量收集:在无人机上使用多普勒风楣,以延长任务耐力,使安静的操作能够实现

获取原文

摘要

The investigators are developing a system tool that utilizes both pre-flight information and continuous real-time knowledge and description of the state of the atmosphere and atmospheric energetics by an Airborne Doppler Wind Lidar (ADWL) to provide the autonomous guidance for detailed and adaptive flight path planning by UAS and small manned aircraft. This flight planning and control has the potential to reduce mission dependence upon preflight assumptions, extend flight duration and endurance, enable long periods of quiet operations and allow for the optimum self-routing of the aircraft. The ADWL wind data is used in real-time to detect atmospheric energy features such as thermals, waves, wind shear and others. These detected features are then used with an onboard, weather model driven flight control model to adaptively plan a flight path that optimizes energy harvesting with frequent updates on local changes in the opportunities and atmospheric flow characteristics. We have named this package AEORA for the Atmospheric Energy Opportunity Ranking Algorithm (AEORA).
机译:调查人员正在开发一个系统工具,通过飞行的多普勒风光LIDAR(ADWL)利用飞行前信息和持续的实时知识和对大气和大气能量的描述,以提供详细和适应飞行的自主指导路径规划由UAS和小型载人飞机。该航班规划和控制有可能降低特派团依赖性的依赖,延长飞行持续时间和耐力,使得长时间的安静操作,并允许飞机的最佳自由路线。 ADWL风数据实时使用以检测大气能量特征,例如热敏,波,风剪和其他功能。然后将这些检测到的特征与车载,天气模型驱动的飞行控制模型一起使用,自适应地平行飞行路径,该航路在机会和大气流动特性的局部变化中频繁更新优化能量收集。我们已为大气能量机会排名算法(AEORA)命名为此封装Aeora。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号