1 2 nd GOES-R AWG Validation Workshop Winds Application Team Topic: Hurricane Intensity Estimation (HIE) Algorithm Chris Velden (CIMSS) Tim Olander (CIMSS)

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Presentation transcript:

1 2 nd GOES-R AWG Validation Workshop Winds Application Team Topic: Hurricane Intensity Estimation (HIE) Algorithm Chris Velden (CIMSS) Tim Olander (CIMSS) Jaime Daniels (STAR)

2 Outline Product Generation and Assessment –Proxy products being used and recent validation methods/results –User engagement and interactions within GOES-R Proving Ground demonstrations Algorithm Enhancements Beyond Baseline –Description of upgrades to current baseline algorithm –Test results and benefits of enhancements Road to GOES-R Post-Launch Testing/Product Validation –Validation and user engagement plans

HIE is currently an algorithm/product being assessed in the GOES-R Hurricane Proving Ground –Based on the current operational ADT algorithm developed at CIMSS –Provides intensity estimates during North Atlantic hurricane season utilizing 15-minute MSG SEVERI and GOES CONUS imagery MSG east of 60° W GOES CONUS west of 60° W and north of 15° N –Estimates available online in real-time since 2010 at : –CIMSS actively engages GOES-R PG HIE users for assessment of algorithm performance and recommendations for improvements NHC analysts have noted cases when the higher-res imagery lead to better HIE response time to intensity changes vs. the ADT CIMSS HIE team has addressed several issues highlighted during independent analysis of HIE during the PG process 3 Product Generation and Assessment

4 2011/2012 HIE Validation Comparison Vs. NHC Best Track Max Wind Error (kt) Max Wind Bias (kt) MSLP Error (mb) MSLP Bias (mb)CI# ErrorCI# Bias (# data points) (# data points) The 2012 stats are slightly worse than for The most likely reason is a large number of sheared and hybrid storms (Sandy) in the 2012 data set. Analysis by Jack Beven (NOAA/NHC) for GOES-R PG review Required AWG HIE Accuracy (5 m/s) and Precision (8 m/s)

5 Product Generation and Assessment

6

7 HURRICANE MICHAEL DISCUSSION NUMBER 13 NWS NATIONAL HURRICANE CENTER MIAMI FL AL AM AST THU SEP MICHAEL HAS CONTINUED TO INTENSIFY OVER THE PAST SEVERAL HOURS WITH THE EYE BECOMING WARMER AND THE EYEWALL CONVECTION STAYING STRONG. WHILE SUBJECTIVE ESTIMATES WERE NEAR 90 KT AT 0600 UTC...OBJECTIVE ESTIMATES FROM ADT AND THE GOES-R HIE PRODUCT HAVE RECENTLY BEEN BETWEEN 107 AND 110 KT. A BLEND OF THESE DATA GIVE AN INITIAL WIND SPEED OF 100 KT...MAKING MICHAEL THE FIRST MAJOR HURRICANE... CATEGORY THREE OR HIGHER...OF THE SEASON. HURRICANE MICHAEL DISCUSSION NUMBER 13 NWS NATIONAL HURRICANE CENTER MIAMI FL AL AM AST THU SEP MICHAEL HAS CONTINUED TO INTENSIFY OVER THE PAST SEVERAL HOURS WITH THE EYE BECOMING WARMER AND THE EYEWALL CONVECTION STAYING STRONG. WHILE SUBJECTIVE ESTIMATES WERE NEAR 90 KT AT 0600 UTC...OBJECTIVE ESTIMATES FROM ADT AND THE GOES-R HIE PRODUCT HAVE RECENTLY BEEN BETWEEN 107 AND 110 KT. A BLEND OF THESE DATA GIVE AN INITIAL WIND SPEED OF 100 KT...MAKING MICHAEL THE FIRST MAJOR HURRICANE... CATEGORY THREE OR HIGHER...OF THE SEASON. desk = HSU Atlantic product = Hurricane Intensity Estimate time = 08Z 9/6/2012 feature = Hurricane Michael use = TC Analysis comment = The HIE was quite responsive to the rapid intensification of Michael overnight. Forecasters used the HIE as part of the justification to increase the intensity on the 09Z advisory to 100 kt: GOES-R Proving Ground Feedback comment (6 Sept 2012) Product Generation and Assessment

Algorithm Enhancements Beyond Baseline Current ADT version at CIMSS is v8.1.5 –v8.1.4 delivered and operational at NESDIS/SAB (v8.1.5 delivery: Spring 2014) –HIE is ADT version Major upgrade: ADT module (v8.1.4) now directly accesses and interrogates polar satellite microwave (PMW) data and internally derives “eye score” values (instead of using externally-derived values as needed by the HIE) –ADT code was rewritten to modify logic –ADT code also has many more PMW rules, such as; “HOLD” intensity if PMW data is >8 hrs old Resetting PMW implementation if T# falls below 4.0 (allows for new PMW impact in storms that go through major intensity cycles) Land interaction rule (over land for 6 hours turns off PMW rules) 8 Code differences (HIE vs. ADT)

Scene Type regression equations have been empirically modified to adjust for biases noted in validation studies HIE currently does not have new equations for converting CI# to MSLP –Inferior MSLP intensity estimates (not an AWG requirement, but users do want these values) HIE currently does not output satellite viewing angle or satellite type ID into history file listing/bulletin (ADT does, based on user requests) 9 Code differences (HIE vs. ADT) Algorithm Enhancements: Beyond Baseline

ADT code relies upon internal McIDAS-X based navigation and calibration routines when reading in GOES satellite imagery, while HIE will use AIT framework imagery via GEOCAT –HIE and ADT input data may be slightly different (HIE uses different method to obtain brightness temperatures than ADT). ADT uses McIDAS-X AREA files and calibration code to obtain brightness temperatures, while HIE framework "runs” AREA files through GEOCAT to get radiance and then converts to Brightness temperature using Planck Function. This can cause differences of 0.01 to 0.05 degrees K. AER/Harris HIE code is being written completely in C++ while the ADT code is written mostly in C As a result, meshing recent ADT updates with AER/Harris code could be difficult –May require extensive effort to correctly implement the new PMW differences Code differences (HIE vs. ADT) Algorithm Enhancements Beyond Baseline

HIE (to our knowledge) has not been tested on non-GOES satellites within the AWG framework. The current ADT operates on Meteosat, MSG and MTSAT geo satellites to fulfill SAB tropical cyclone monitoring requirements. It is our understanding that the current GOES-R requirement for HIE is for operation on GOES-R family of satellites only. HIE will not allow any user interaction (such as manual scene type or location overrides). Current ADT v8.1.4/5 does (user request). HIE "official output requirement" is a single wind speed value ONLY! –ADT outputs a current intensity analysis bulletin and history file listing of parameters requested by users. These are currently not required in HIE. HIE output will be into a netCDF file instead of the current ADT ASCII- format history file. Will “Tailored Outputs” be available for users? Current Intensity Estimate “Bulletin” with multiple parameters listed History file “listings” with all user-requested present/past information Graphical “time-series” display of intensity estimates Current ADT output analysis products are regularly utilized by operational forecasters, and are a necessary and essential part of the ADT intensity estimation process Implementation differences (HIE vs. ADT) Algorithm Enhancements Beyond Baseline

Post Launch ADT/HIE developers at CIMSS will continue to work with our NOAA partners in the HIE algorithm implementation and P/L validation stages Mimic current efforts involved with validating the operational ADT –Conduct annual statistical analysis with NESDIS/SAB to evaluate accuracy of ADT versus their subjective Dvorak estimates and NHC Best Track values (done since 2010) using routine metrics derived by NESDIS/SAB (example--next slide) –Code used to derive these statistical comparisons are the basis for GOES-R HIE validation software delivered to AIT in December 2010 Extend the validation efforts to include comparisons between the operational ADT and the HIE –Ensure compatibility of results. –Real-time monitoring: Troubleshoot any issues and/or notable differences. Continue user participation through the GOES-R PG. 12

Post Launch Example of Proposed P/L HIE Validation (patterned after current ADT validation methods) –NORTH ATLANTIC – 2011 TC Season Independent comparisons between real-time ADT and subjective DT operational intensity estimates from NESDIS/SAB Homogeneous sample: ADT and SAB estimates within +/- 30 minutes Validated against NHC Best Track intensity (when aircraft reconnaissance in situ measurement within +/- 2 hours) total matches (homogeneous) bias aae stdv SAB:CI# SAB:Win SAB:MSL ADT:CI# ADT:Win ADT:MSL Note: wind speed units in knots

Summary The Advanced Dvorak Technique (ADT) is the “parent” algorithm for the GOES-R HIE (Hurricane Intensity Estimation) and continues to advance beyond the version delivered to GOES-R AWG/Harris/AER –Improvements based upon statistical analysis and empirical observations by CIMSS developers and aided by outside/independent users –Major additions to code: Direct ingest and analysis of PMW data within ADT/HIE code; no longer relies upon externally-derived inputs/scores PMW code is multi-language (C, C++, F90); will likely require extensive work to integrate with Harris/AER HIE code HIE algorithm (in the form of modified ADT) is already being evaluated as part of the GOES-R Hurricane PG –NOAA/NHC provides in-season feedback, and annual evaluations –NESDIS/SAB continues to work directly with CIMSS ADT developers in implementing latest ADT versions into operations (via GOES PSDI) and conducting yearly evaluations. We deem this as a good model for PL validation of the HIE.

15 2 nd GOES-R AWG Validation Workshop Winds Application Team Topic: Hurricane Intensity Estimation (HIE) Algorithm Back-up Slides

Test results: Proof of positive PMW “eye score” impact on ADT –In developing TC stages, ADT intensities often plateau during CDO events until an eye feature appears in IR imagery. –PMW imagery can better identify organizing eyewall structures below the cirrus shield. –Based on the amount of eyewall organization (wrap) and strength, a PMW “score” is calculated. This score is determined from objectively analyzed structure using 85GHz, and related to TC intensity based on empirically-derived thresholds. –Can result in the over-ride of the IR-based T# (depending on score, two different T# intensity estimates can be assigned (either T# = 4.3 or 5.0)). –Additional logic in ADT algorithm “merges” new PMW-derived T# values into existing history file to eliminate unnatural intensity jumps (linear extrapolation back 12 hours from PMW estimate point). New logic also linearly increments the PMW value forward in proportion to DvT model Tnum expected growth. 16 Algorithm Enhancements Beyond Baseline

17 Algorithm Enhancements: Beyond Baseline

18 Algorithm Enhancements: Beyond Baseline Intensity range affected most by PMW “eye score” addition Comparison of latest ADT version (v8.1.3, with PMW) and previous version (v7.2.3, w/o PMW) Mean Error Bias Mean Error Bias