The UW-CIMSS Advanced Dvorak Technique (ADT) : An Automated IR Method to Estimate Tropical Cyclone Intensity

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The UW-CIMSS Advanced (ADT) : An Automated IR Method to Estimate Tropical Cyclone Intensity Timothy Olander and Christopher Velden University of Wisconsin Madison, USA Cooperative Institute for Meteorological Satellite Studies (CIMSS) S) Joint 2007 EUMETSAT/AMS Meteorological Satellite Conference 26 September 2007

Motivation The ADT was developed to provide tropical cyclone (TC) forecasters with a purely objective tool to estimate TC intensity using geostationary satellite imagery in regions where aircraft reconnaissance and other data are not available. The ADT is based upon the (DT), a decision tree methodology, which primarily relies upon human interpretation of cloud patterns in satellite imagery to derive TC intensity. The major drawbacks of the DT are its inherent subjectivity and time required to master its regional subtleties. The ADT represents an attempt to advance beyond the limits of the DT while still retaining its basic philosophy. The ultimate goal is to provide an objective tool that yields reliable TC intensity and structure information to help improve forecasts.

Background The original/subjective DT is a top- down flow chart methodology which guides the TC analyst to an estimated storm intensity through a series of steps focusing on: - The current storm presentation ( scene type ) ) in the satellite image - Recent storm history (and model expected current intensity) - Various constraints regarding the allowable strengthening/weakening rates.

This enhancement is known as the " Hurricane IR Curve for Tropical Cyclone Classification" and is applied to infrared (11µm) imagery. Each different black/ white/gray shade corresponds to a specific cloud-top temperature range and represents different intensity classifications in the Subjective Intensity Classification. (NOAA Technical Report NESDIS 11, 1984) The ADT utilizes this BD Curve but has modified the relationships between the cloud-top temperatures and TC intensity using statistical regression analysis and additional/new cloud characteristic parameters.

ADT Development Timeline Late 1980s 1990 s Digital (DD) technique (Zehr, 1989) 2001-2004 Advanced Objective (AODT) (Olander et al., 2002) 1985 1990 1995 2000 2005 1980s objective EIR technique outlined (, 1984) 1995-2001 Objective (ODT) (Velden et al., 1998) 2004 - present Advanced (ADT) (Olander and Velden, 2007)

ADT Information The ADT utilizes imagery from the longwave infrared window channel (~11µm) from most of the current, operational geostationary satellites available. The algorithm is constantly updated to utilize any new satellites as they come online, and the data is made available. In addition, a current NESDIS/CIMSS/CIRA study is underway using simulated data to determine the potential impact of the upcoming GOES-R Advanced Baseline Imager (ABI) imagery on the ADT algorithm.

ADT Information The ADT retains many of the qualities of the original, such as scene type determination and various intensity time constraints. A completely automated and objective TC storm center determination scheme has been implemented to remove all subjectivity from the ADT analysis. However, an ADT user has the option to modify/over-ride ride the objectively-chosen chosen location, or scene type determination (e.g. pinhole eyes are difficult). The ADT code can be installed within a McIDAS environment (now a core McIDAS routine) or integrated within a separate satellite analysis platform (e.g., a version now operates in the NWS N-AWIPS N system).

ADT Flowchart - Overview

ADT Flowchart Scene Type Determination

ADT Flowchart Intensity Estimation

Validation Homogeneous comparison between ADT and Operational Forecast Center (OFC) DT estimates of TC Central MSL Pressure (in hpa) Ground Truth: Coincident aircraft reconnaissance reports Atlantic TCs -- 2006 Bias RMSE Ave #matches ADT -2.77 8.21 6.10 190 OFC -3.16 9.01 6.54 190 (Negative bias = ADT over-estimate) estimate)

Future Directions Continue improving scene identification scheme Utilize auto-centering techniques in (pinhole) eye identification Explore regression analysis for other scene types Target shear and curved band scenes Examine methods to improve intensity estimates Multi-channel methods such as WV/IR difference (see poster) Possible microwave imager -type analysis Explore TC stage breakdowns (formation, mature, dissipation) Continue ADT integration within UW-CIMSS Satellite Consensus (SATCON) TC Intensity Algorithm (see poster)

Operational Usage Current ADT User Sites NOAA/Tropical Prediction Center NOAA/Satellite Analysis Branch NOAA/Central Pacific Hurricane Center Joint Typhoon Warning Center Australian Bureau of Meteorology (Melbourne and Perth Regional Offices) Experimental or Research Usage Japan Meteorological Agency Shanghai Typhoon Institute of China National Typhoon and Marine Forecast Center - China Met. Adm. The Meteorologist Department Thailand Cooperative Institute for Meteorological Satellite Studies

References http://cimss.ssec.wisc.edu/tropic2 The Advanced : Continued Development of an Objective Scheme to Estimate Tropical Cyclone Intensity Using Geostationary Infrared Satellite Imagery, Olander and Velden, Wea.. Forecasting,, April 2007. The Tropical Cyclone Intensity Estimation : A Satellite-Based Method that Has Endured for over 30 Years, Velden et. al., Bull. Amer. Met. Soc., September 2006, 1195-1210. 1210. We gratefully acknowledge the Office of Naval Research and the Naval Research Laboratory Monterey for their continued support of ADT research at UW-CIMSS (SPAWAR PEO C41&Space/PMW 180 and the ONR Marine Meteorology Program via NRL-Monterey) We also acknowledge the NOAA/NESDIS GOES Program and the Satellite Analysis Branch for their longtime support of our ADT research.