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Daytime Precipitation Estimation Using Bispectral Cloud Classification System

机译:利用双谱云分类系统进行白天降水估算

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Two previously developed Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks (PERSIANN) algorithms that incorporate cloud classification system (PERSIANN-CCS) and multispectral analysis (PERSIANN-MSA) are integrated and employed to analyze the role of cloud albedo from Geostationary Operational Environmental Satellite-12 (GOES-12) visible (0.65 mu m) channel in supplementing infrared (10.7 mm) data. The integrated technique derives finescale (0.04 degree 0.04 degree latitude-longitude every 30 min) rain rate for each grid box through four major steps: 1) segmenting clouds into a number of cloud patches using infrared or albedo images; 2) classification of cloud patches into a number of cloud types using radiative, geometrical, and textural features for each individual cloud patch; 3) classification of each cloud type into a number of subclasses and assigning rain rates to each subclass using a multidimensional histogram matching method; and 4) associating satellite gridbox information to the appropriate corresponding cloud type and subclass to estimate rain rate in grid scale. The technique was applied over a study region that includes the U.S. landmass east of 115 degree W. One reference infrared-only and three different bispectral (visible and infrared) rain estimation scenarios were compared to investigate the technique's ability to address two major drawbacks of infrared-only methods: 1) underestimating warm rainfall and 2) the inability to screen out no-rain thin cirrus clouds. Radar estimates were used to evaluate the scenarios at a range of temporal (3 and 6 hourly) and spatial (0.04 degree , 0.08 degree , 0.12 degree , and 0.24 degree latitude-longitude) scales. Overall, the results using daytime data during June-August 2006 indicate that significant gain over infrared-only technique is obtained once albedo is used for cloud segmentation followed by bispectral cloud classification and rainfall estimation. At 3-h, 0.04 degree resolution, the observed improvement using bispectral information was about 66% for equitable threat score and 26% for the correlation coefficient. At coarser 0.24 degree resolution, the gains were 34% and 32% for the two performance measures, respectively.
机译:两种先前开发的结合了云分类系统(PERSIANN-CCS)和多光谱分析(PERSIANN-MSA)的,使用人工神经网络(PERSIANN)算法从遥感信息中进行的降水估计被整合并用于分析对地静止作战环境中云反照率的作用卫星12(GOES-12)可见(0.65μm)频道,用于补充红外(10.7 mm)数据。集成技术通过四个主要步骤得出每个网格箱的精细尺度(每30分钟0.04度至0.04度经纬度)降雨率:1)使用红外或反照率图像将云分割为多个云块; 2)使用每个单独的云补丁的辐射,几何和纹理特征将云补丁分类为多种云类型; 3)将每种云类型分类为多个子类,并使用多维直方图匹配方法为每个子类分配降雨率; 4)将卫星网格箱信息与适当的相应云类型和子类相关联,以估计网格规模的降雨率。这项技术被应用到一个包括美国东部115 W陆地的研究区域。比较了一个仅参考红外和三种不同的双光谱(可见光和红外)降雨估算方案,以研究该技术解决红外的两个主要缺点的能力。仅限方法:1)低估了温暖的降雨; 2)无法筛选出无雨的薄卷云。雷达估算用于评估时间(3小时和6小时)和空间(0.04度,0.08度,0.12度和0.24度经纬度)范围内的情景。总体而言,使用2006年6月至8月期间的白天数据得出的结果表明,一旦将反照率用于云分割,然后进行双光谱云分类和降雨估算,将获得比纯红外技术明显的收益。在3小时,0.04度的分辨率下,使用双光谱信息观察到的改善对于公平威胁评分约为66%,对于相关系数约为26%。在较粗的0.24度分辨率下,两个性能指标的增益分别为34%和32%。

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