Daytime Precipitation Estimation Using Bispectral Cloud Classification System

作者:Behrangi Ali*; Hsu Koulin; Imam Bisher; Sorooshian Soroosh
来源:Journal of Applied Meteorology and Climatology, 2010, 49(5): 1015-1031.
DOI:10.1175/2009JAMC2291.1

摘要

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 degrees x 0.04 degrees 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 degrees 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 degrees, 0.08 degrees, 0.12 degrees, and 0.24 degrees 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 degrees resolution, the observed improvement using bispectral information was about 66% for equitable threat score and 26% for the correlation coefficient. At coarser 0.24 degrees resolution, the gains were 34% and 32% for the two performance measures, respectively.

  • 出版日期2010-5-10