.. STATUS UPDATE FROM THE GOES-R HYDROLOGY ALGORITHM TEAM AWG Background and Structure Robert J. Kuligowski NOAA/NESDIS Center for Satellite Applications.

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.. STATUS UPDATE FROM THE GOES-R HYDROLOGY ALGORITHM TEAM AWG Background and Structure Robert J. Kuligowski NOAA/NESDIS Center for Satellite Applications and Research (STAR), Camp Springs, MD DISCLAIMER: The contents of this poster are solely the opinions of the author and do not constitute a statement of policy, decision, or position on behalf of the GOES-R Program Office, NOAA, or the U.S. Government. P1.65 Algorithm Evaluation Strategy Algorithm Working Group (AWG) Purpose and Activities Develop, demonstrate, and recommend end-to-end capabilities for the GOES-R ground segment Provide sustained post-launch validation and product enhancements Specific activities include: –Proxy dataset development –Algorithm and application development –Product demonstration systems –Development of cal/val tools –Sustained product validation –Algorithm and application improvements Application Teams Support the AWG by providing recommended, demonstrated, and validated algorithms for processing GOES_R observations into user-required products which satisfy requirements. Each Application Team will: Review candidate algorithms and identify algorithm deficiencies Establish priorities and suggest solutions to resolve algorithm deficiencies; Formulate, oversee, and participate in algorithm intercomparisons; Recommend algorithms for GOES-R. The selected algorithms will then be demonstrated and documented for delivery to the System Prime via the GOES-R Program Office. Hydrology Application Team Members Bob Kuligowski, NESDIS/STAR, Chair Phil Arkin, ESSIC Ralph Ferraro, NESDIS/STAR John Janowiak, NWS/CPC George Huffman, NASA-GSFC (SSAI) Soroosh Sorooshian, UC-Irvine Hydrology AWG-Related Environmental Data Records , “Probability of Rainfall” , “Rainfall Potential” , “Rainfall Rate / QPE” Candidate QPE Algorithms CPC IRFREQ (CPC—Joyce et al. 2004)CPC IRFREQ (CPC—Joyce et al. 2004) NRL-Blended (Turk et al. 2003)NRL-Blended (Turk et al. 2003) PERSIANN (Sorooshian et al. 2000)PERSIANN (Sorooshian et al. 2000) SCaMPR (Kuligowski 2002)’SCaMPR (Kuligowski 2002)’ Candidate Nowcasting Algorithms Hydro-Nowcaster (Scofield et al. 2002)Hydro-Nowcaster (Scofield et al. 2002) K-Means (Lakshmanan et al. 2003)K-Means (Lakshmanan et al. 2003) TITAN (Dixon and Weiner 1993)TITAN (Dixon and Weiner 1993) Proxy and Ground Validation Data METEOSAT Second Generation (MSG) Spinning Enhanced Visible and InfraRed Imager (SEVIRI) data are being used as ABI proxy channelsMETEOSAT Second Generation (MSG) Spinning Enhanced Visible and InfraRed Imager (SEVIRI) data are being used as ABI proxy channels Ground validation data (Figs. 2-3) include:Ground validation data (Figs. 2-3) include: A set of ~16,000 daily rain gauges obtained from the Climate Prediction CenterA set of ~16,000 daily rain gauges obtained from the Climate Prediction Center A set of ~1,125 daily gauges and ~65 hourly gauges over the UK from the British Atmospheric Data Center (BADC) MIDAS dataA set of ~1,125 daily gauges and ~65 hourly gauges over the UK from the British Atmospheric Data Center (BADC) MIDAS data A set of ~12 10-minute gauges onboard floating buoys in the Atlantic Ocean from the Pilot Research Moored Array in the Atlantic (PIRATA)A set of ~12 10-minute gauges onboard floating buoys in the Atlantic Ocean from the Pilot Research Moored Array in the Atlantic (PIRATA) Tropical Rainfall Measuring Mission (TRMM) Precipitation Radar (PR) overpasses for the 2A25 rain rate algorithmTropical Rainfall Measuring Mission (TRMM) Precipitation Radar (PR) overpasses for the 2A25 rain rate algorithm References Dixon, M., and G. Wiener, 1993: TITAN: Thunderstorm Identification, Tracking, Analysis, and Nowcasting—a radar-based methodology. J. Atmos. Ocean. Tech., 10, Joyce, R. J., J. J. Janowiak, P. A. Arkin, and P. Xie, 2004: The combination of a passive microwave based satellite rainfall estimation algorithm with an IR based algorithm Joyce, R. J., J. J. Janowiak, P. A. Arkin, and P. Xie, 2004: The combination of a passive microwave based satellite rainfall estimation algorithm with an IR based algorithm. Preprints, 13 th Conf. on Satellite Meteorology and Oceanography, Norfolk, VA, Amer. Meteor. Soc., CD-ROM, P4.4. Kuligowski, R. J., 2002: A self-calibrating GOES rainfall algorithm for short-term rainfall estimates. J. Hydrometeor., 3, Lakshmanan, V., R. Rabin, and V. DeBruner, 2003: Multiscale storm identification and forecast. Atmos. Res., 67-68, Scofield, R. A., R. J. Kuligowski, and J. C. Davenport, 2004: The use of the Hydro-Nowcaster for Mesoscale Convective Systems and the Tropical Rainfall Nowcaster (TRaN) for landfalling tropical systems. Preprints, Symposium on Planning, Nowcasting, and Forecasting in the Urban Zone, Seattle, WA Amer. Meteor. Soc., CD-ROM, 1.4. Sorooshian, S., K. Hsu, X. Gao, H. V. Gupta, B. Imam, and D. Braithwaite, 2000: Evaluation of PERSIANN system satellite-based estimates of tropical rainfall. Bull. Amer. Meteor. Soc., 81, Turk, F. J., E. E. Ebert, H. J. Oh, B.-J. Sohn, V. Levizzani, E. A. Smith, and R. Ferraro, 2003: Turk, F. J., E. E. Ebert, H. J. Oh, B.-J. Sohn, V. Levizzani, E. A. Smith, and R. Ferraro, 2003: Validation of an Operational Global Precipitation Analysis at Short Time Scales. Preprints, 3 rd Conf. on Artificial Intelligence, Long Beach, CA, Amer. Meteor. Soc, CD-ROM, JP1.2. Candidate Algorithm Evaluation Algorithm developers used SEVIRI data from 1- 5 January, April, July, and October 2005 and corresponding ground validation data to adapt their algorithms for ABI capabilities.Algorithm developers used SEVIRI data from 1- 5 January, April, July, and October 2005 and corresponding ground validation data to adapt their algorithms for ABI capabilities. SEVIRI data from 6-9 January, April, July, and October 2005 were used to create independent estimates and nowcasts for evaluation by the Hydrology AT (Fig. 1).SEVIRI data from 6-9 January, April, July, and October 2005 were used to create independent estimates and nowcasts for evaluation by the Hydrology AT (Fig. 1). Figure 2. Validation regions and data for (left to right) 6-9 January, April, July, and October Figure 1. Flowchart of the Hydrology Algorithm Team algorithm evaluation and selection process. Current status Next Steps Complete the algorithm intercomparison and select rainfall rate and cloud nowcasting algorithms for transition into operations Combine the selected rainfall rate and cloud nowcasting algorithms to produce the rainfall potential algorithm Calibrate the quantitative rainfall nowcasts against ground validation to create the probability of rainfall algorithm Modify the source code to meet GOES-R AWG Algorithm Implementation Team (AIT) standards and produce all required internal and external documentation Figure 3. Close-ups of selected validation regions (left to right): April Region 4, October Region 2, and October Region 4.