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Sea-surface Temperature from GHRSST/MODIS – recent progress in improving accuracy Peter J. Minnett & Robert H. Evans with Kay Kilpatrick, Ajoy Kumar, Warner.

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Presentation on theme: "Sea-surface Temperature from GHRSST/MODIS – recent progress in improving accuracy Peter J. Minnett & Robert H. Evans with Kay Kilpatrick, Ajoy Kumar, Warner."— Presentation transcript:

1 Sea-surface Temperature from GHRSST/MODIS – recent progress in improving accuracy Peter J. Minnett & Robert H. Evans with Kay Kilpatrick, Ajoy Kumar, Warner Baringer, Erica Key, Goshka Szczodrak, Sue Walsh and Vicki Halliwell Rosenstiel School of Marine and Atmospheric Science University of Miami Peter J. Minnett & Robert H. Evans with Kay Kilpatrick, Ajoy Kumar, Warner Baringer, Erica Key, Goshka Szczodrak, Sue Walsh and Vicki Halliwell Rosenstiel School of Marine and Atmospheric Science University of Miami MISST Science Team Meeting November 28, 2006

2 Outline Leverage of Efforts Across Multiple Grants Generation of Single Sensor Error Statistics for AVHRR and MODIS GHRSST MODIS product generation division of effort Status of MODIS SST MODIS approach to SSES Initial observations – Space and Time resolution of sst analysis fields has important implications for sst retrieval coverage and quality – Regions of IR (MODIS) and microwave (AMSR) difference not correlated with water vapor Conclusions

3 Leverage of Effort for MISST NOPP - MISST support for generation of SSES - Minnett, Evans NOPP - ISAR and voluntary ship program to acquire radiometric in situ SST - Minnett NASA - MODIS algorithm support - Evans NASA - MAERI in situ observations for MODIS calibration and validation - Minnett NASA - Transfer of GHRSST/MODIS SST to JPL with product production at OCPG, GSFC - Evans GDAC

4 July, 2005 formation of MODIS SST processing team (JPL, OBPG - GSFC, Miami) Division of effort: Miami - algorithm development, cal/val, base code development OBPG (Bryan Franz) integrate code into OBPG processing, process MODIS Terra, Aqua; day, night; global 1km; SST, SST4; transfer files to JPL JPL PO.DAAC (J. Vazquez, E. Armstrong) - convert OBPG files into L2P, add remaining fields, ice mask, distance to clouds…, transfer files to Monterrey, interested users Program ‘near real-time’ processing MODIS Terra and Aqua L2P (OCPG) and transferring to JPL GDAC Real Time MODIS processing for GHRSST

5 Background – Algorithm Maintenance and Validation The foundation of Algorithm Maintenance is the comparison of MODIS SST retrievals with surface-based measurements of equal or superior accuracy (reference field). This is usually referred to as “validation.” It is needed to give: –confidence in the values of the geophysical fields. –knowledge under what circumstances an algorithm performs well, and when it performs badly (i.e. not enough to know that the retrievals represent the mean conditions well) - error statistics. –guidance to improve algorithm performance. But in reality….. There are no perfect reference fields…. For validation we must rely on imperfect reference fields, with known or unknown uncertainties, inadequate spatial coverage, and incomplete sampling of the governing parameters. The uncertainties in the reference field must be well known so they are not attributed to the satellite retrieval.

6 Marine-Atmospheric Emitted Radiance Interferometer (M-AERI) The mean discrepancies in the M-AERI 02 measurements of the NIST – characterized water bath blackbody calibration target in two spectral intervals where the atmosphere absorption and emission are low. Discrepancies are M-AERI minus NIST temperatures. Constructed by SSEC, U. Wisconsin - Madison Traceable to National Standards: NIST EOS TXR

7 Surface radiometry Use ship-based radiometers, e.g. M-AERI, ISAR, CIRIMS and others. M-AERI is the reference standard for satellite SST retrievals (AVHRR, AATSR, as well as MODIS), and for other ship-board radiometers. M-AERI also being used for AMSR-E & AIRS SST validation. M-AERI cruises Number of deployments40 Number of ships23 Number of days3352

8 ISAR – an autonomous IR radiometer ISAR – Infrared SST Autonomous Radiometer Filter radiometer, internal calibration Deployed on Jingu Maru, Atlantic crossings Currently on Mirai in Indian Ocean

9 Buoy measurements N = 12536 @ qf = 0 Spatial Distribution MODIS SST4 - Buoy Residuals Feb 2000 - Aug 2006

10 MODIS v5 global error statistics Buoys M-AERI

11 But bias & rms alone do not tell the whole story… Systematic patterns in residual uncertainties indicate shortcomings in the atmospheric correction algorithms, and indicate how they can be improved……

12 SSES for AVHRR Pathfinder Match-up database analyzed for behavior of residuals (AVHRR to buoy and M- AERI) Residuals structured as function of: –Satellite zenith angle –Temperature –Time

13 Measure of satellite retrieval uncertainty for MODIS Standard uncertainty approach is to provide a global estimate of bias and standard deviation. Based on high quality radiometry and buoy SST measurements MODIS - GHRSST (GODAE High Resolution Sea Surface Temperature Pilot Project) approach: –To provide a statistical estimate of expected bias and standard deviation for each satellite-retrieved SST –Partition satellite - in situ match-up database along 7 dimensions (environmental conditions and observing geometry) –The “uncertainty hypercube” has been implemented for MODIS SST and SST4 products and applied to the AQUA and TERRA instruments

14 MODIS Single Sensor Error Statistics Approach Bias and Standard Deviation Hypercube Hypercube dimensions (partitioning of Match-up database) : - Time- quarter of year (4) - Latitude band (5): "60S to 40S" "40S to 20S" "20S to 20N" "20N to 40N" "40N to 60N" - Sat Zenith angle intervals (4): "0 to 30 deg" "30+ to 40 deg" "40+ to 50 deg" "50+ deg" - Surface temperature intervals (8): 5 degree intervals - Channel difference intervals:SST(3), SST4(4) ch31-32 (SST): 0.7 2.0, >2.0 ch22-23 (SST4) 0.5 degree intervals: -0.5 0, >0 ->0.5, >0.5 -Quality level (2) cube created only for ql=0 and 1 Note for ql2 and 3 the bias and standard deviation are each fixed to a single value -Day/Night No interpolation between adjacent cells in Hypercube

15 SSES Characteristics SSES Bias wrt In Situ SSES St. Dev wrt In Situ MODIS SST MODIS SST – Reynolds OI SST Predicted SSES Bias SST Difference wrt Weekly OI Field St. Dev. of SSES Error Terra MODIS SST for GHRSST

16 February 1 SSES Bias wrt In Situ SSES St. Dev wrt In Situ MODIS SST MODIS SST – Reynolds OI SST

17 Water-vapor dependence… Water vapor is one of the main atmospheric constituents that contribute to the atmospheric effect in the infrared. Water vapor is not an independent variable in the atmospheric correction algorithm, but is represented by a proxy (brightness temperature difference). Non-linearity in the current algorithm water vapor dependence treated with 2 part linear fit.

18 Microwave SST accuracies AMSR-E M-AERI comparisons during AMMA, May-July 2006. Parts of the cruise tracks under clouds of ITCZ AMSR-E M-AERI comparisons during AMMA, May-July 2006. Parts of the cruise tracks under clouds of ITCZ

19 MODIS to AMSR-E SST comparisons Differences in MODIS and AMSR-E SSTs have spatial patterns, that do not correlate with the water vapor proxy. Other geophysical parameters also involved. Differences in MODIS and AMSR-E SSTs have spatial patterns, that do not correlate with the water vapor proxy. Other geophysical parameters also involved. 11-12 μ m brightness temperature differences 24 August 2004 11-12 μ m brightness temperature differences 24 August 2004 MODIS – AMSR-E SST Water vapor proxy

20 Summary - V5 monthly coefficients removed seasonal bias trends, Terra mirror side trends - SST4 rms order 0.4K, SST order 0.5K - SST4 less affected by dust aerosols, water vapor - Improved quality filtering removed most cold clouds and significant dust aerosol concentrations - Hypercube developed and tested for Terra and Aqua, provided to OCPG and included in Aqua and Terra L2P processing - Introduction of SSES hypercube provides insight into bias and standard deviation trends as a function of time, latitude, temperature, satellite zenith angle, brightness temperature difference as a proxy for water vapor and retrieval quality level

21 Conclusions - MODIS SSTs of “climate record” quality, having extensive error characterization, and traceability to NIST standards - No evidence that Terra SSTs are of poorer quality than Aqua SSTs - MODIS SSTs are an important component of GHRSST-PP - An important focus of GHRSST-PP is quantifying effects of diurnal heating… benefits from Terra AND Aqua - Hypercube provides insight leading to improved retrieval equation coefficient generation - DT analysis and hypercube bias comparable for most retrievals Challenges: - Many areas of climate interest are very cloudy – approach to follow is to use AMSR-E SSTs as a “transfer standard” - M-AERIs are still the best source of validation data, but are “showing their age….”

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