Evaluation of Precipitation Detection over Various Surfaces from Passive Microwave Imagers and Sounders

نویسندگان

  • S. Joseph Munchak
  • Gail Skofronick-Jackson
چکیده

During the middle part of this decade a wide variety of passive microwave imagers and sounders will be unified in the Global Precipitation Measurement (GPM) mission to provide a common basis for frequent (3 hr), global precipitation monitoring. The ability of these sensors to detect precipitation by discerning it from non-precipitating background depends upon the channels available and characteristics of the surface and atmosphere. This study quantifies the minimum detectable precipitation rate and fraction of precipitation detected for four representative instruments (TMI, GMI, AMSU-A, and AMSU-B) that will be part of the GPM constellation. Observations for these instruments were constructed from equivalent channels on the SSMIS instrument on DMSP satellites F16 and F17 and matched to precipitation data from NOAA’s National Mosaic and QPE (NMQ) during 2009 over the continuous United States. A variational optimal estimation retrieval of non-precipitation surface and atmosphere parameters was used to determine the consistency between the observed brightness temperatures and these parameters, with high cost function values shown to be related to precipitation. The minimum detectable precipitation rate, defined as the lowest rate for which probability of detection exceeds 50%, and the detected fraction of precorresponding author email: [email protected]; ph: 1-301-286-2392; fax: 1-301-6145492 Preprint submitted to Atmospheric Research October 5, 2012 https://ntrs.nasa.gov/search.jsp?R=20140009997 2017-09-14T04:34:48+00:00Z

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تاریخ انتشار 2013