1 / 30

CLARREO Visible and Near-Infrared Studies

CLARREO Visible and Near-Infrared Studies. P. Pilewskie, G. Kopp, Y. Roberts, B. Kindel, N. Shanbhag University of Colorado, Laboratory for Atmospheric and Space Physics. LASP Science Studies. LASP Science Studies.

paul
Télécharger la présentation

CLARREO Visible and Near-Infrared Studies

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. CLARREO Visible and Near-Infrared Studies P. Pilewskie, G. Kopp, Y. Roberts, B. Kindel, N. Shanbhag University of Colorado, Laboratory for Atmospheric and Space Physics

  2. LASP Science Studies

  3. LASP Science Studies • Linked to IIP activities: determine requirements for CLARREO reflected-shortwave instruments. • Climate Benchmarking • Accuracy/Stability (needed to detect climate change signal) • Radiometric • Spectral • Spectral coverage and resolution • Spatial coverage and resolution • Temporal resolution • Cross-Calibration • Current and future instruments • Orbital requirements

  4. Spectral Irradiance and Atmospheric Extinction

  5. SCIAMACHY Nadir Radiance Spectra Sub-saturated water vapor bands Chlorophyll green peak Near-infrared jump

  6. Nadir Radiance Spectra from Aircraft: Clouds Thick Cirrus Stratus:   40 Stratus:   10

  7. Establishing a Benchmark Climate Data Record:Reflected Solar Spectral Radiance • Forcing and feedback not easily separable. • No direct signal related to climate response. • What is a suitable benchmark variable to monitor in the shortwave? • Ideally, albedo, but we don’t measure irradiance from LEO. • Other variables retrieved from reflected radiance: • What are climate trends? • Model assumptions  uncertainties • What trends are evident in directly measured, high accuracy, SI traceable radiance? • Understand variability in measured reflected radiance. • Use to constrain/test models.

  8. Radiometric accuracy and stability • Study objective • Determine required instrument radiometric accuracy and stability levels for CLARREO in solar spectrum (Earth-reflected). • Approach • Using trend in water vapor feedback as “benchmark”, determine error in accuracy required for detection. • Examine other suitable variables.

  9. Climate Fingerprinting: Water Vapor Feedback 0.4 kg/m2 per decade Santer et al., PNAS, 2007.

  10. Sample CLARREO Slit Functions Spectral Radiance: Water Vapor Retrieval Define accuracy/stability requirements needed to detect trend in water vapor ~ 0.4 kg/m2 per decade.

  11. Sensitivity of Earth-Reflected Solar Radiance to Water Vapor • MODTRAN simulations used to derive changes in outgoing top-of-atmosphere spectral radiance due to 0.4 kg/m2 per decade trend. • Largest absolute changes occur in the weak (sub-saturated) VNIR water band; largest fractional changes in the wings of the stronger SWIR bands.

  12. Spectral/Spatial Range and Resolution • Study objective • Determine information content in hyperspectral (reflected solar) imagery. • Approach • Use SCIAMACHY (and other candidate data sources such as AVIRIS, Hyperion, etc.) to derive independent spectral modes of variability using PCA, SVD, EOF, etc. • Determine influence of spectral resolution and range on derived components. • Use SCIAMACHY to derive independent modes of variability at varying spatial scales. • Using broad-swath imagers (SCIAMACHY, potentially MODIS) to examine scales over which spectral variance is conserved.

  13. SCIAMACHY SCanning Imaging Absorption SpectroMeter for Atmospheric CHartographY • Our study uses SCIAMACHY Data Products ‘SCI_NL__1P’ as these data closely match CLARREO goals for spectral and spatial range • Spatial Resolution (nadir) • 30 km (along-track) x 60 km (cross-track) • Spectral Range (used) • 240 - 1750 nm • Spectral Resolution • 0.24 - 1.5 nm • Radiometric Accuracy • Sun-normalized: 2-3% • Relative: 1%

  14. Analyzed Orbital Data from SCIAMACHY Sun-synchronous polar orbit. Nominal reference orbit of mean altitude 800 km, 35 days repeat cycle, 10:00 AM MLST descending node, 98.55 deg. inclination.

  15. Spectral Decomposition: Information Content http://www.silvereng.com/PDF/NEMO.pdf

  16. Cumulative Variance

  17. Principal Components for Single and Global Orbits

  18. SCIAMACHY Degraded to 10 nm SCIAMACHY Native Resolution

  19. Spectral resolution

  20. 3-Day Full Global Coverage

  21. Variance: 1-3 day comparisons

  22. Variance: seasonal comparisons Vegetation Molecular scattering Clouds/water vapor

  23. Seasonal Variability

  24. Rotation of Principal Axes

  25. PC5 Represents Vegetation

  26. PC5 Scores

  27. PC1 Scores

  28. PC1 Scores

  29. Science Studies Summary • Water vapor feedback provides a constraint to the required accuracy/stability. • PCA is useful in determining information content in a multidimensional dataset such as SCIAMACHY. • For both a full-global case and a subset single orbit, 99% of the variance is explained by 5-6 components. • Interpretation of physical causality is more difficult. • First component: clouds/water vapor; fourth: molecular scattering; fifth: vegetated surface albedo. • Spectral resolution makes little difference in distributed variance. • Recommendation: use cloud phase as threshold. • Seasonal variability is evident, but PC order is conserved.

  30. Science Studies Outlook Future work: • SCIAMACHY PCA • Inter-annual variability • Quantify information loss using discrete bands versus full spectrum • Cross-calibration capabilities of CLARREO • Current and future instruments • Orbital requirements

More Related