论文标题
使用WSR-88D天气雷达网络对谷壳的扩展极化观测
Extended Polarimetric Observations of Chaff using the WSR-88D Weather Radar Network
论文作者
论文摘要
军事谷壳是一种金属,纤维的雷达对策,由飞机和火箭释放,用于转移和掩盖目标。它通常是为了培训目的而在美国各地发行的,并且由于其共鸣长度,经常在S波段的天气监视雷达-1988多普勒(WSR-88D)网络上观察到。识别和表征CHAFF和其他非历史目标算法的努力在算法上需要对目标有统计理解。先前对谷壳特征的研究提供了事实证明对算法开发有用的重要信息。但是,WSR-88D处理套件的最新变化允许大量扩展的差异反射率,这是先前使用天气雷达谷壳研究的研究的主要主题。在这些变化的驱动下,分析了一个新的数据集,该数据集在美国267个案件中有280万个范围的谷壳大门。与以前的研究相比,案例的时空表示更好,研究了高度依赖性的新分析以及按体积覆盖模式进行的统计变化,以及对新的“全”差异反射率的新范围的研究。介绍了有关在WSR-88D算法开发中如何使用这些发现的讨论,特别是关注机器学习和不同目标类型的分离。
Military chaff is a metallic, fibrous radar countermeasure that is released by aircraft and rockets for diversion and masking of targets. It is often released across the United States for training purposes, and, due to its resonant cut lengths, is often observed on the S-band Weather Surveillance Radar - 1988 Doppler (WSR-88D) network. Efforts to identify and characterize chaff and other non-meteorological targets algorithmically require a statistical understanding of the targets. Previous studies of chaff characteristics have provided important information that has proven to be useful for algorithmic development. However, recent changes to the WSR-88D processing suite have allowed for a vastly extended range of differential reflectivity, a prime topic of previous studies on chaff using weather radar. Motivated by these changes, a new dataset of 2.8 million range gates of chaff from 267 cases across the United States is analyzed. With a better spatiotemporal representation of cases compared to previous studies, new analyses of height dependence, as well as changes in statistics by volume coverage pattern are examined, along with an investigation of the new "full" range of differential reflectivity. A discussion of how these findings are being used in WSR-88D algorithm development is presented, specifically with a focus on machine learning and separation of different target types.