- 1 CLARREO Science Meeting CLARREO Science Meeting July 6, 2010 July 6, 2010 Bruce Wielicki.

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Presentation transcript:

- 1 CLARREO Science Meeting CLARREO Science Meeting July 6, 2010 July 6, 2010 Bruce Wielicki

- 2 NOAA CLARREO CERES (Clouds and Earth’s Radiative Energy System) TSIS (Total Solar Irradiance Sensor) NASA CLARREO Solar reflected spectra: SI traceable relative uncertainty of 0.3% (k=2) Infrared emitted spectra: SI traceable uncertainty of 0.1K (k=3) Global Navigational Satellite System Radio Occultation: SI traceable uncertainty of 0.1K (k=3). CLARREO is a Cornerstone of the Climate Observing System Decadal Survey defines CLARREO

- 3 CLARREO and Climate Science CLARREO Climate Change Calibration 1 st Approach Climate Benchmarks Process Inter-calibration

- 4 50% of CLARREO Science Value is in Reflected Solar Spectra 50% of CLARREO Science Value is in Infrared Spectra & GNSS-RO Roe and Baker, Temperature - Water Vapor - Clouds - Radiation - Snow/Ice Cover - Greenhouse Gases - Surface Albedo Cloud Feedback Water Vapor/Lapse Rate Feedback Snow/Ice Albedo Feedback Earth's Climate Blue = CLARREO Solar Reflected Spectra Science Red = CLARREO IR spectra & GNSS-RO Science CLARREO Science Value Climate Forcing, Response, Feedback 100% of CLARREO Science Value is in the Accuracy of the Data

- 5 Feedbacks Drive Space/Time Sampling Requirements Multi-model ensemble-mean maps of the temperature, water vapor, albedo, and cloud feedback, computed using climate response patterns from the IPCC AR4 models and the GFDL radiative kernels Soden et al Land and ocean zonal annual means required for temperature lapse rate and water vapor feedbacks, surface albedo feedbacks 1000 km regional scale required for cloud feedbacks Seasonal cycle required for reflected solar: cloud feedback, snow/ice albedo feedback Water Vapor FeedbackTemperature Feedback Cloud FeedbackAlbedo Feedback Global Mean = 0.30 W/m 2 /KGlobal Mean = 0.79 W/m 2 /K Global Mean = 1.9 W/m 2 /K Global Mean = -4.2 W/m 2 /K

- 6 CLARREO will create benchmark climate data records using two complementary approaches –Benchmarks using only CLARREO data –Benchmarks using CLARREO for reference calibration of operational sensors These two approaches provide a robust test of the CLARREO data records –Analogous to using independent measurements and analysis in metrology Climate benchmarks require –Accuracy for decadal trend detection –Unbiased sampling of the climate system –Information content sufficient for trend detection and attribution CLARREO is a Climate Benchmarking Mission Tracing CLARREO Decadal Change Science Objectives to Mission Requirements

- 7 Instantaneous changes are nonlinear: decadal change is highly linear Spectral Decadal Change is Linear Doubled CO2 change of all-sky Global spectral radiance from T(z), q(z), CO 2, clouds, for the CFMIP CCCMA coupled climate model Nonlinear portion of decadal change Is a few percent of total (offset by 0.01) Huang et al similar linearity found for decadal change of reflected solar spectra Jin et al., 2010 Blue = total of all changes Red = linear sum of individual Component changes 20  m10  m5  m

- 8 A perfect climate observing system is limited in trend accuracy only by climate system natural variability (e.g. ENSO) (Leroy et al, 2008). Degradation of accuracy of an actual climate observing system relative to a perfect one (fractional error F a in accuracy) is given by: F a = (1 +  f 2 i ) 1/2 - 1, where f 2 i =  2 i  i /  2 var  var for linear trends where  is standard deviation,  is autocorrelation time,  var is natural variability, and  i is one of the CLARREO error sources. Degradation of the time to detect climate trends relative to a perfect observing system (fractional error in detection time F t ) is similarly given by: F t = (1 +  f 2 i ) 1/3 – 1 Degradation in time to detect trends is only 2/3 of degradation in accuracy. Provides an integrated error budget across all decadal change error sources Determining the Accuracy of Decadal Change Trends and Time to Detect Trends

- 9 The CLARREO requirement is for climate change trend accuracy to be within 20% of a perfect observing system (e.g. testing climate predictions), and time to detect trends to be within 15% (societal decision making). The accuracy of CLARREO observations is required only at large time and space scales such as zonal annual, not at instantaneous field of view. Therefore all errors in the CLARREO error budgets are determined over many 1000s of CLARREO observations: never 1, or even a few. CLARREO requirements are very different than a typical NASA Earth Science process mission interested in retrievals at instantaneous fields of view at high space/time resolution. Degradation of Large Scale Decadal Change Trends by less than 20% Accuracy of Decadal Change Trends Time to Detect Trends

- 10 Climate Change Accuracy is Critical to Making Difficult Policy Decisions Goal of within 20% accuracy of an ideal climate observing system is critical! Example for Temperature Trends -CLARREO accuracy goals are optimal cost/value -High confidence critical for policy decisions -CLARREO accuracy designed to provide that confidence.

11 Use or disclosure of the data contained on this sheet is subject to restrictions Climate Change Accuracy is Critical to Making Difficult Policy Decisions Goal of within 20% accuracy of an ideal climate observing system is critical! Example for Decadal Change in SW Cloud Radiative Forcing - All major error sources included: absolute accuracy assumes gaps occur orbit sampling (90 deg) instrument noise reference intercalibration uncertainty (CERES).

- 12 Decadal Change Spectral Fingerprinting Benchmarks: Tracing Mission Requirements Data, models Climate OSSEs; A-train observation + RTM simulations Orbit Sampling Simulations Instrument Design Studies IIPs, NIST

- 13 Decadal Change Reference Intercalibration Benchmarks: Tracing Mission Requirements DECADE 1 DECADE 2 Data, models Climate OSSEs Orbit Sampling Simulations Retrieval Bias Simulations Instrument Design Studies IIPs, NIST Intercalibration Simulations

- 14 CLARREO instrument absolute accuracy requirements are derived consistent with the goal of achieving accuracy within 20% of a perfect climate observing system, and time to detect trends within 15% of a perfect observing system. 0.1K (k=3) for the IR spectra absolute accuracy required. Driven by natural variability of IR spectra. 0.3% (k=2) for the RS spectra (nadir reflectance) is required. Driven by natural variability of cloud radiative forcing, cloud fraction, cloud optical depth, particle size. 0.03% (k=2) refractivity, consistent with an accuracy of 0.1K (k=3) for temperature profile. Accuracy is for 5km to 20km altitudes. Achieving SI traceable observations with absolute accuracy at these decadal change levels enables the CLARREO mission to uniquely survive even short gaps in the climate record. Overlap becomes very important for a continuous climate record, but a gap does not break the climate record and cause a "restart". Instrument Absolute Accuracy set for < 20% Trend Accuracy Degradation CLARREO Accuracy Requirements

- 15 Fractional Accuracy in Decadal Change Trends F a = (1 +  f 2 i ) 1/2 - 1, where f 2 i =  2 i  i /  2 var  var Calibration uncertainty is independent of the benchmark or reference intercalibration time/space scale.  i is selected as mission length (5 years). Natural variability increases as time/space scale decreases –annual zonal = 3.5 times larger than annual global –seasonal zonal = 7.5 times larger than annual global –annual regional (10 x 30) = 10 times larger than annual global Benchmark orbit sampling uncertainty increases as time/space decreases –ratio of  2 i  i /  2 var  var for sampling error ~ constant with time/space –fractional contribution of sampling error independent of time/space scale down to 10 by 30 lat/lon, but increases for smaller scales as a result of orbit track separation of ~ 25 degrees longitude at the equator. Calibration uncertainty is most critical at largest time/space scales Accuracy: Time & Space Scale

- 16 Fractional Accuracy in Decadal Change Trends F a = (1 +  f 2 i ) 1/2 - 1, where f 2 i =  2 i  i /  2 var  var Reference Intercalibration sampling uncertainty increases as time scale decreases (fewer samples). All reference intercalibrations are global. –As for benchmark orbit sampling, ratio of  2 i  i /  2 var  var for reference intercalibration sampling error ~ constant with time scale –Required accuracy of each reference intercalibration is a function of the time scale: monthly average can be less accurate than annual and still maintain the same accuracy in decadal change trends: for F a, scales as  i 0.5 –At the time scale of CLARREO absolute calibration uncertainty (60 months)reference intercalibration uncertainty must be at least a factor of 2 less than CLARREO calibration accuracy so that reference intercalibration does not dominate the decadal change trend accuracy. –Reference intercalibration sampling requirements will therefore be a function of time scale (monthly, seasonal, annual). Orbit & Reference Intercalibration contribution to F a ~ constant in time/space Accuracy: Time & Space Scale

- 17 Decadal change trend accuracy (Leroy et al., 2008) [ (  m) 2 ] = 12(  ) -3 (  2 var  var +  2 meas  meas ) (  m) ~ (  ) -3/2 Accuracy increases as    as a result of increasing anthropogenic trend signals over time (“baseline”). This value is present as long beginning of CLARREO record is at least 5 years: i.e. gaps can be tolerated. Would not work for very short CLARREO beginning record (i.e. 1 month or 1 year). Accuracy further increases as (  ) -1/2 as a result of time averaging of noise from natural variability: directly related to the total CLARREO climate record length over multiple missions Anthropogenic trend accuracy increases with climate record length Accuracy: Length of Record

- 18 Requirements remain similar to those we developed for the baseline mission and Level 1 requirements document last fall (see following chart) The orbit sampling studies show that we meet our accuracy goal in F a (20%) and F t (15%) using a single 90 degree orbit for RS and IR spectra BUT: Two satellites are required for: –verification of instrument calibration in orbit (instrument overlap) –verification of sampling uncertainty (2 vs 1 satellite) –length of climate change record (survival on orbit) –full diurnal sampling in 3 months instead of 6 months –verification of decadal change in diurnal cycle? Will update level 1 and level 2 requirements following this science meeting and before MCR: not expecting any major changes. Will revisit near end of phase A. No major changes to L1 and L2 requirements from last fall. Summary of L1 and L2 Reqmts

- 19

- 20 Backup slides Backup Slides

- 21 CLARREO provides the S.I. traceable absolute accuracy in infrared and solar reflected spectra needed to observe decadal climate change and verify climate predictions. The CLARREO full spectra extend and expand the information content to a wide range of climate variables at climate change accuracy. CLARREO anchors the research and operational solar and infrared sensors at climate change accuracy through inter-calibration, providing the first “Standards Lab in Space”. CLARREO provides the first full IR spectra by including the far infrared which is half of the Earth’s emitted radiation, and is the bulk of the earths water vapor greenhouse effect. CLARREO provides the first full solar reflected spectra from the Earth at climate change accuracy. Summary of CLARREO Advances

- 22 Climate OSSEs- Observing System Simulation Experiments Climate modelers were identified by the Decadal Survey as primary users of CLARREO data OSSEs were begun with 3 modeling groups (GISS, GFDL, U-Cal Berkeley) to determine measurement requirements Studies include climate change fingerprinting methods using time/space averaged spectral data to define spectral resolution (IR 1 cm -1, RS 15 cm - 1 )& spectral coverage (IR 200 to 2000 cm -1, RS 300 to 2500 nm). Studies by U-Cal Berkeley, LASP, and LaRC demonstrate the linearity and information content of the decadal change solar-reflected radiance signals. (Collins & Feldman, 2009) all-sky - Studies by GFDL/ Harvard demonstrate the linearity of all-sky decadal change IR signals - Eliminates the requirement for global clear- sky observations (Huang and Leroy, 2009)

- 23 CLARREO Reference Inter-calibration Uncertainty: IR spectra Studies have answered outstanding questions concerning the accuracy of using CLARREO as a reference calibrator of operational IR sensors Nadir-only viewing provides sufficient sampling for IR intercalibration of gain, offset, and response nonlinearities. Sampling time and FOV will determine integration time for reference calibration Conclusion: Instrument nonlinearities can be investigated using yearly averages for single channels or monthly using spectral averaging 100km (14s), 1276 pts, STDEV = K spatial sampling noise 50 km (8s), 2286 pts, STDEV = K spatial sampling noise 25 km (4s), 4474 pts, STDEV = K spatial sampling noise Conclusion: The inter-calibration goal of 0.1K (3-σ) for decadal change can be accomplished for a range of CLARREO FOV sizes 25km or larger. Holz et al., 2009 CLARREO can provide IR reference intercalibration for CrIS, IASI, VIIRS, CERES

- 24 Studies conducted by LaRC and GSFC have determined the ability of CLARREO to serve as a reference calibrator of operational sensors at decadal change accuracy. Demonstrated using SCHIAMACHY data to simulate CLARREO spectra. Determined the ability to distinguish and correct for changes in –Gain and Offset  Reference Inter-calibration of VIIRS narrowband leads to spectral sampling requirement of 4 nm and spectral resolution of 8nm. –Gain Nonlinearity –Spectral shape  Reference Inter-calibration of CERES broadband leads to spectral range requirement: 320 nm to 2300 nm –Polarization Sensitivity  Polarization sensitivity requirement for CLARREO RS spectrometer is less than 0.25% (k=2)  Scene dependent PARASOL spectral polarization data used to demonstrate intercalibration. Demonstrated requirement of angle matching to 1 degree, time matching to 5min, spatial averaging to 20km scale with 1km pointing knowledge (Wielicki et al. 2008). Demonstrated that any of the 90, 83, or 74 degree orbit inclinations have sufficient sampling for RS Reference intercalibration as long as either a gimball or spacecraft pointing system is capable of matching viewing zenith/azimuth/solar zenith with 1.5 degree/second motion. CLARREO can provide RS reference intercalibration for CERES, VIIRS CLARREO Reference Inter-calibration Uncertainty: RS spectra

- 25 Establish a critical climate benchmark that can be compared rigorously to future decades of SI-traceable climate observations Improved climate model physics through direct spectral observations of the far-infrared water vapor greenhouse effect. This is 50% of the IR energy. Provide reference intercalibration to operational RS and IR sensors –Up to 10X accuracy improvement in the RS and 5X in the IR for science and applications: temperature, water vapor, radiation, cloud, surface –Greatly improved consistency across operational observing system Provide high absolute accuracy and high spectral resolution RS and IR climatologies for climate model testing and physics improvements. Demonstrate new calibration technologies to improve future operational and climate monitoring instruments Initial CLARREO Mission Delivers High Science Value Science Payback in the First 3-5 Year Mission

- 26 Tracing CLARREO Decadal Change Science Objectives to Mission Requirements Trend Detection Above Natural Variability: Mission Duration Mission duration minimum of 3 years and consumables for 5 years is required to overcome natural variability such as ENSO.

- 27 Decadal climate change signals have to be rigorously detected above natural variability of the climate system (e.g. ENSO on 5-yr time scale). This is often called interannual variability and can be estimated from current observations (CERES, AIRS, SCHIAMACHY, MODIS, etc), as well as from climate models. Sufficient length of record is required to reduce natural variability Example for stratospheric temperature trends (S. Leroy, CLARREO science study) shows that natural variability places a requirement on CLARREO mission duration: 3-5 year mission duration for two CLARREO missions over a 15 year climate record (beginning of first mission to end of the second). 15 years is a typical time for decadal change signals to exceed natural variability. Trend Detection Above Natural Variability: Mission Duration S. Leroy, Harvard, Aug 2009 Uncertainty [K/decade]

- 28 If Sunsynchronous and 90 degree orbital sampling errors are similar: why not go with sunsynchronous orbit to simplify spacecraft and instrument thermal environment? –90 degree orbit precesses through all local times of day and a single clarreo surviving satellite can still provide Reference Intercalibration for all sunsychronous orbits for a full range of climate regimes (tropics to polar). Not true for a sunsynch CLARREO. –90 degree samples all local times of day, allowing full diurnal cycle sampling and verification if any diurnal cycle changes have occurred on decade time scale. This eliminates any uncertainties about sunsynchronous sampling at only 2 times of day. –90 degree nadir radiance is still sufficient to handle solar reflected benchmark despite anisotropy variations with scene type at nadir (similar relative % radiance & flux errors). This was a serious concern before we did the full simulation using CERES data and CERES anisotropic models for all scene types to simulate clarreo nadir benchmark sampling (previous table). 2 CLARREO 90 degree orbits meet all RS and IR science requirements CLARREO Orbit Sampling Requirement IR and RS Spectra

- 29 CLARREO Orbit Sampling Requirement GNSS-RO 2 CLARREO 90 degree orbits meet the GNSS-RO Sampling Requirement Errors increase by 40% for GPS only Simulated 2 CLARREO low Earth orbiters in polar orbit, spaced 90º in ascending node. Simulated 24 GPS and 27 Galileo in nominal configuration. Ran for 8 years, interpolated to NCEP reanalysis. Binned by month, averaged over year, compared to NCEP reanalysis truth.