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Bias analysis and correction for MetOp/AVHRR IR channel using AVHRR-IASI inter-comparison Tiejun Chang and Xiangqian Wu GSICS Joint Research and data Working Groups Meeting March, 6, 2012 Beijing
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Bias analysis and correction for MetOp/AVHRR IR channel using AVHRR-IASI inter-comparison Introduction Methodology and data processing - Co-registered radiance and collocated radiance - Homogeneous scene selection AVHRR IR channel calibration - Radiance-based nonlinear correction currently used for L1b radiance: - Count-based quadratic calibration for testing Calibration radiance error effects - Calibration radiance error effect model - Evaluation of the error Calibration coefficients error analysis for re-processed radiance - Bias regressive analysis model - Error evaluations - Calibration coefficient correction for quadratic calibration algorithm Bias analysis and radiance correction for L1b radiance - Regressive analysis of the bias - Radiance correction Summary 1
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Introduction AVHRR IASI: Accurate and stable spectral radiance measurement High spectral resolution a good reference for inter-comparison MetOp-A: Launched on October 19, 2006 (images and tables from EUMETSAT MetOp website) AVHRR-IASI collocation measurements over ~5 years, on various Earth scenes, and in different seasons a good tool for AVHRR bias analysis 2
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Introduction Motivation: Increasing need for accuracy in AVHRR radiance products require a precise calibration of the instrument response AVHRR IR channel bias has been observed Correction of Earth scene radiance for AVHRR IR channels is needed Focus of this work: Analytical modeling of the calibration error effect Regression analysis for calibration error evaluations Correction for both processed radiance and calibration coefficients AVHRR IR channel calibration algorithm improvement References: [1] L. Wang, and C. Cao, IEEE Trans. Geosci. Remote Sens., 46, 4005–4013, (2008) [2] J. Mittaz and A. Harris, Journal of Atmospheric And Oceanic Technology, Vol, 28 Issue: 9, 1072-1087 (2011) Earth scene brightness temperature dependent bias for AVHRR IR channels. (from ref. 2) 3
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Bias analysis and correction for MetOp/AVHRR IR channel using AVHRR-IASI inter-comparison Introduction Methodology and data processing - Co-registered radiance and collocated radiance - Homogeneous scene selection AVHRR IR channel calibration - Radiance-based nonlinear correction currently used for L1b radiance: - Count-based quadratic calibration for testing Calibration radiance error effects - Calibration radiance error effect model - Evaluation of the error Calibration coefficients error analysis for re-processed radiance - Bias regressive analysis model - Error evaluations - Calibration coefficient correction for quadratic calibration algorithm Bias analysis and radiance correction for L1b radiance - Regressive analysis of the bias - Radiance correction Summary
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Methodology and data processing Collocated L1b radiance and re-processed radiance IASI L1c AVHR R L1b AVHRR radiance AVHRR raw counts & cal. Info. collocated pixels Collocated AVHRR radiance Re-processed collocated AVHRR radiance Test calibration algorithm IASI radiance with AVHRR SRF 5 IASI spectral coverage Channel 4 and 5 Focus on radiometric calibration issue Nadir only One day (1 st day) each month in year 2011 processed.
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Methodology and data processing Collocated Nadir pixels/Homogeneous scene selection 2 IASI FORs (8 FOVs) at nadir selected IASI FOV footprint 12x12 km (blue circles) AVHRR pixel footprint 1.1x1.1 km (red dots) ~ 130 AVHRR pixels for each IASI FOV. AVHRR radiance is the average of the enclosed AVHRR pixels Scene homogeneity becomes a concern Dec., 1 st, 2011 data 6
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Methodology and data processing Homogeneous scene consideration and selection 10000 1000 Number of data points Earth scene radiance range - Ch 4 - Ch 5 Scene homogeneity impacts regression analysis - random noise level affects analysis accuracy - bias due to a limited data size (such as 1-day) - error due to inhomogeneous + registration error Homogeneous scene selection considerations Homogeneous scene selection criterion: After testing, the standard deviation is used as selection reference and the threshold is set to 0.75 % selection criteriontighterlooser number of data pointslessmore earth radiance rangenarrowbroader error and noise levellowerhigher 0.75% (12/01/211 data) 7
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Methodology and data processing AVHRR-IASI difference on homogeneous scenes Collocated radiance Ch 4 Ch 5 Re-processed radiance Ch 5 Ch 4 Relative radiance error = (AVHRR-IASI)/IASI Relative radiance error is convenient for calibration error analysis Radiance unit used The corrections are derived from analysis of 12 days data (1/month in year 2011) Dec., 1,2011 data is shown as an example in this talk 8
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Bias analysis and correction for MetOp/AVHRR IR channel using AVHRR-IASI inter-comparison Introduction Methodology and data processing - Co-registered radiance and collocated radiance - Homogeneous scene selection AVHRR IR channel calibration - Radiance-based nonlinear correction currently used for L1b radiance: - Count-based quadratic calibration for testing Calibration radiance error effects - Calibration radiance error effect model - Evaluation of the error Calibration coefficients error analysis for re-processed radiance - Bias regressive analysis model - Error evaluations - Calibration coefficient correction for quadratic calibration algorithm Bias analysis and radiance correction for L1b radiance - Regressive analysis of the bias - Radiance correction Summary
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AVHRR IR channel calibration for L1b radiance The Channel 4 and 5 use Hg-Cd-Te detector operated in photoconductive (PC) mode and exhibit nonlinear responses. A radiance based nonlinear correction is applied for generating L1b product. Earth scene radiance retrieval Linear radiance estimation Nonlinear correction References: [1] C. Walton, J. Sullivan, C. Rao, and M. Weinreb, J. Geophys. Res., 103, 3323–3337 (1998); [2] J. Sullivan, Int. J. Remote Sensing, Vol 20, No. 18, 3493-3501 (1999) AVHRR IR channel Radiance based nonlinear correction. (from ref. 2) C target: count value when viewing a target (ICT, deep space, or Earth scene) b 0, b 1,b 2, and R earth: calibration coefficients from pre-launch characterization. 10
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Alternative nonlinear correction algorithm The count based quadratic nonlinear correction algorithms are used for some IR channel radiometric calibration The instrument response drifts with instrument degradation and instrument temperature fluctuations are considered, for example linear gain is calculated scan by scan [1]. References: [1] X. Xiong, K. Chiang, J. Esposito, B. Guenther, and W.L. Barnes, “MODIS On-orbit Calibration and Characterization,” Metrologia, vol. 40, pp. 89-92, 2003 C target : count value when viewing a target (ICT, deep space, or Earth scene) a 0 and a 2 : calibration coefficients (offset, linear gain, nonlinear coefficient) from pre-launch characterization. Direct count-radiance conversion & 2 independent coefficients simple calibration easier analysis of error effect on the radiance a1a1 11
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Bias analysis and correction for MetOp/AVHRR IR channel using AVHRR-IASI inter-comparison Introduction Methodology and data processing - Co-registered radiance and collocated radiance - Homogeneous scene selection AVHRR IR channel calibration - Radiance-based nonlinear correction currently used for L1b radiance: - Count-based quadratic calibration for testing Calibration radiance error effects - Calibration radiance error effect model - Evaluation of the error Calibration coefficients error analysis for re-processed radiance - Bias regressive analysis model - Error evaluations - Calibration coefficient correction for quadratic calibration algorithm Bias analysis and radiance correction for L1b radiance - Regressive analysis of the bias - Radiance correction Summary 12
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Calibration radiance error analysis f EV : emissivity B(T ): BB radiance at temperature T f inst and f EV : configuration factors (portion of ICT hemisphere covered) On-board calibration radiance: f inst f space f inst +f EV + f space =1 Calibration radiance used : instrument dependent (Constant) ICT temperature & error dependentEarth & ICT radiance dependent On-board calibration radiance error: Effective emissivity error 13
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Calibration error effect analysis Error in Earth radiance retrieval - perturbations in coefficients - 1 st order effect only Count based quadratic algorithm A B C B A C 14
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Step 1: Evaluation of calibration radiance error Analytical model Calibration radiance error Select Earth scenes with BT close to ICT BT 15
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Step 2: Regression for calibration coefficient error Errors in offset and nonlinearity Calibration radiance error From step 1 Analytical model Remove calibration radiance error effect 16 Regression analysis
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Evaluation of calibration radiance error Using re-processed radiance with count based quadratic algorithm Ch 4 12/01/2011 one-day data Non-negligible calibration error (ideally should be 0. However 0.0011 (ch4) and 0.00056 (ch5) on average) L1b radiance with radiance based nonlinear correction algorithm 17
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Evaluation of calibration radiance error. Channel 4Channel 5 Number of data points Collocated radiance (Re-processed) Number of data points Collocated radiance (Re-processed) January3440.002960.003004800.003360.00337 February540.002800.00282850.003200.00323 March4290.002890.002955350.003370.00343 April5070.003020.003076530.003370.00343 May5630.002950.003009000.003390.00345 June560.003120.00319800.003080.00311 July680.002610.002729510.002890.00300 August1070.002990.003061080.003420.00351 September7530.003090.0031211500.003400.00343 October8280.003060.0031110990.003350.00336 November6610.002740.002829380.003130.00316 December8140.002830.0029010730.003290.00338 Weighted average 0.002940.003000.003270.00333 Standard deviation 0.000130.000110.000170.00015 One-day (1 st day) data in each month analyzed The value in the table is the relative radiance error (effective emissivity error) 18
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Bias analysis and correction for MetOp/AVHRR IR channel using AVHRR-IASI inter-comparison Introduction Methodology and data processing - Co-registered radiance and collocated radiance - Homogeneous scene selection AVHRR IR channel calibration - Radiance-based nonlinear correction currently used for L1b radiance: - Count-based quadratic calibration for testing Calibration radiance error effects - Calibration radiance error effect model - Evaluation of the error Calibration coefficients error analysis for re-processed radiance - Bias regressive analysis model - Error evaluations - Calibration coefficient correction for quadratic calibration algorithm Bias analysis and radiance correction for L1b radiance - Regressive analysis of the bias - Radiance correction Summary 19
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Step 2: Regression for calibration coefficient error Calibration radiance error 0.297% for Ch4 0.330% for Ch5 Analytical model Remove calibration radiance error effect 20 Errors in offset and nonlinearity Regression analysis for
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Weighting function in regression analysis Regression model Ch 4 A B C B A C 21
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Weighting function in regression analysis = number of data points in unit radiance range centered Weighting function for least-square fit 22
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Weighting function in regression analysis = number of data points in unit radiance range centered Weighting function for least-square fit Regression model --- Weight applied --- Weight not applied 23
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Regressive analysis for re-processed radiance Correction of calibration coefficients Bias regression model Ch 4 Ch 5 Corrected Channel 40.972-0.3531.3251.84x10 -5 0.17x10 -5 1.67x10 -5 Channel 50.636-0.5321.1681.18x10 -5 0.08x10 -5 1.10x10 -5 Calibration coefficient improvement 24
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Bias analysis and correction for MetOp/AVHRR IR channel using AVHRR-IASI inter-comparison Introduction Methodology and data processing - Co-registered radiance and collocated radiance - Homogeneous scene selection AVHRR IR channel calibration - Radiance-based nonlinear correction currently used for L1b radiance: - Count-based quadratic calibration for testing Calibration radiance error effects - Calibration radiance error effect model - Evaluation of the error Calibration coefficients error analysis for re-processed radiance - Bias regressive analysis model - Error evaluations - Calibration coefficient correction for quadratic calibration algorithm Bias analysis and radiance correction for L1b radiance - Regressive analysis of the bias - Radiance correction Summary
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Bias regressive model for L1b radiance Bias regression model Collocated radiance (L1b) Re-processed radiance It is difficult to derive a model for bias regressive analysis Similar error effect Use the model for count-based quadratic calibration Ch 4 Re-processed Ch 4 L1b 26
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Regressive analysis and radiance correction algorithm for L1b radiance Radiance correction for L1b radiance Bias regression model Ch 4 Ch 5 27
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Radiance correction for L1b radiance Ch 4 Ch 5 before after before after Radiance correction for L1b radiance 28
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Radiance correction for L1b radiance Ch 4 Ch 5 before after Gaussian fit Center =0.0056% Width =0.089% Center =0.0042% Width =0.073% 29 Gaussian error distribution remaining error is mostly random noise indicated by the width Center close to 0 AVHRR bias has been mostly removed The Gaussian coefficients uncertainty of the correction
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Summary Regression analysis and radiance correction Analytical model Bias form AVHRR-IASI Comparison Calibration coefficient correction Radiance correction Two-step regressions Weight function Error effects
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Summary Inter-comparison of AVHRR and IASI for both L1b radiance and re-processed radiance using a test calibration algorithm. Analytical study for calibration error effect for both calibration algorithms. Two-step regression analysis for evaluation of the calibration error. Radiance correction for L1b radiance. Calibration coefficient correction for the test calibration algorithm. Demonstration of the importance of using analytical model to investigate inter- comparison results. Development of a tool for test AVHRR calibration algorithm and calibration improvement Submitted to IEEE TGARS inter-comparison special issue.
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