satellite ocean color overview

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Satellite Ocean Color Overview Dave Siegel – UC Santa Barbara With help from Chuck McClain, Mike Behrenfeld, Bryan Franz, Jim Yoder, David Antoine, Gene Feldman, Claudia Mengalt, Bob Evans, Norm Nelson, Stéphane Maritorena & many more er ASLO 2011 Tutorial Talk

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Satellite Ocean Color Overview. Dave Siegel – UC Santa Barbara With help from Chuck McClain, Mike Behrenfeld, Bryan Franz, Jim Yoder, David Antoine, Gene Feldman, Claudia Mengalt , Bob Evans, Norm Nelson, Stéphane Maritorena & many more. After ASLO 2011 Tutorial Talk. - PowerPoint PPT Presentation

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Page 1: Satellite Ocean Color  Overview

Satellite Ocean Color Overview

Dave Siegel – UC Santa Barbara

With help from Chuck McClain, Mike Behrenfeld, Bryan Franz, Jim Yoder, David Antoine, Gene Feldman, Claudia Mengalt, Bob Evans, Norm Nelson, Stéphane Maritorena & many more

After ASLO 2011 Tutorial Talk

Page 2: Satellite Ocean Color  Overview

What is Satellite Ocean Color?

• The spectrum of the light reflected from the sea

• Water-leaving photons are backscattered & not absorbed (ocean optics & relationship to ecology)

• To see from space, we must account for the atmosphere (radiative transfer in the atmosphere)

• Ocean color signals are small (great measurements

require great care…)

ocean

atmosphere

Page 3: Satellite Ocean Color  Overview

Bright Atmosphere – Dark Ocean

TOA Radiance

Water-Leaving Radiance

Log(

Radi

ance

)

Factor of >10 difference

How do we correct for the atmosphere??

Page 4: Satellite Ocean Color  Overview

Atmospheric CorrectionRadiance budget for

satellite radianceMeasure Lt(l)Model Lr(l), Lf(l) & Lg(l)Unknowns are Lw(l),

La(l) & Lar(l)It is Lw(l) we need to

know…

Page 5: Satellite Ocean Color  Overview

Atmospheric Correction Basics• Goal: Subtract off the atmospheric path

signals from the satellite measurement

• Model Rayleigh scattering, molecular absorption & interface reflectance terms

• Hard part is aerosol radiances – Use near-infrared bands to model aerosol

radiances in the visible– Requires detailed models of aerosol optical

properties that can be diagnosed from NIR

Page 6: Satellite Ocean Color  Overview

Ocean Color Sensor Requirements

• An ocean color sensor must…

– Have necessary spectral resolution

– Accurate (gains must be well known)

– Stable (changes in gains must be known)

– Well characterized (polarization, spectral, etc.)

• Devil is in the details…

Page 7: Satellite Ocean Color  Overview

Products

SWIR

NIR

Visib

leUltraviolet

5 nm

reso

lutio

n (3

45 –

775

nm

)26

requ

ired

“mul

tispe

ctra

l” b

ands

3 SW

IRba

nds

Absorbing aerosols

Dissolved organics

Phytoplankton pigments

Functional groups

Particle sizes

Physiology

Pigment fluorescence

Coastal biology

Atmospheric correction(clear ocean)

AtmosphericCorrection(coastal) &Aerosol/cloud propertiesSW

IR

Total pigment or Chlorophyll-abut major errors due to absorption by dissolved organics

Atmospheric Correction/ MODIS chlorophyllfluorescence

AtmosphericCorrection(clear ocean)

AtmosphericCorrection(coastal)**

NIR

Visib

leUltraviolet

Products

MODIS on Terra was launched in 2000, but does not yet provide science quality ocean dataMODIS/Visible Infrared Imaging Radiometer Suite (VIIRS) SWIR bands are not optimized for oceans

No Measurements

CZCS

(197

8-19

85)

SeaW

iFS

(199

7-20

10 )

MO

DIS

(200

2- )*

VIIR

S

***

“Multispectral”Ocean BandsCZCS: 4SeaWiFS: 8MODIS: 9VIIRS: 7OES: 26

86 “hyperspectral” bands + 3 SWIR

Comparison of Spectral Coverage

Chuck McClain (GSFC)AC

E pl

an

Page 8: Satellite Ocean Color  Overview

SeaWiFS: 1997-2010

Page 9: Satellite Ocean Color  Overview

Satellite Sensor Gains

• Accuracy requirements mean that satellite gains need to be known to better than 0.005

• Accurate ground data are requiredEnd-to-end test -> vicarious calibration

• Changes in these gains must be monitoredLunar viewing or multiple on-board sources

• Other “issues” creep in (like changes in polarization sensitivity or spectral responses)

Page 10: Satellite Ocean Color  Overview

SeaWiFS Lunar Calibration

Fred Patt, GSFC

Used to monitor sensor gain changes over time

Uncertainty about trend lines is ~0.1%

Page 11: Satellite Ocean Color  Overview

Marine Optical BouY• Accurate source for

vicarious calibration

• Used with models to set absolute gains

• Located off Hawaii and operational since 1996

• Difficulty with glint & nadir looking satellites (MODIS)

• Other ground obs are used as well

Page 12: Satellite Ocean Color  Overview

Satellite Sensor Issues• Accuracy requirements mean that satellite

gains need to be known to better than 0.005

• Accurate ground data are required - MOBY+End-to-end test -> vicarious calibration

• Changes in these gains must be monitoredLunar viewing or multiple on-board sources

• Other “issues” can creep in (like changes in polarization sensitivity or spectral responses)

• Reprocessing is key…

Page 13: Satellite Ocean Color  Overview

Bio-Optical Modeling

• Goal: Relate water-leaving radiance spectra to useful in-water properties

• Both empirical & semi-analytical approaches

• Need simultaneous measurements of water-leaving radiance & useful in-water properties

Page 14: Satellite Ocean Color  Overview

Global In Situ Data - SeaBASS

All Data AOT

ChlOptical Profiles

Page 15: Satellite Ocean Color  Overview

Bio-Optical AlgorithmOC4v6 used for

SeaWiFS• Empirical• Maximum

Band Ratio of LwN(l)’s (443/555, 489/555 & 510/555)

From GSFC reprocessing page following O’Reilly et al. [1998] JGR

Page 16: Satellite Ocean Color  Overview

• Retrieves three relevant properties (CDM, BBP, Chl)• Assumptions…

– Relationship between LwN(l) & properties is known– Component spectral shapes are constant - only their

magnitudes vary– Water properties are known

• Results in a least squares problem for the 3 properties

• Model coefficients determined through a global optimization using field observations

Maritorena et al. Applied Optics [2002]

GSM Semi-Analytic Model

Page 17: Satellite Ocean Color  Overview

• OC4v6 w/ SeaWiFS• Global match-up

data set of SeaWiFS & in situ Chl’s

• Regression & the fit slope are very good

End-to-End Validation

http://oceancolor.gsfc.nasa.gov/REPROCESSING/R2009/ocv6/

Page 18: Satellite Ocean Color  Overview

Ocean Color Components• Ocean color signals are small (great

measurements require great care…)

• We must account for the atmosphere (radiative transfer in the atmosphere)

• Relate water-leaving radiance to bio-optical properties(ocean optics & relationship to ecology)

• Validate we can do this end-to-end through the entire system (this requires periodic reprocessing)

Page 19: Satellite Ocean Color  Overview

1. Use what we have to its fullest…– New algorithms and approaches with data in

hand– Make VIIRS a success (this is a community responsibility)

2. Help in the planning for future missions – PACE/ACE, GeoCAPE, HyspIRI, …

3. Make satellite ocean color “carbon savvy” – Develop techniques for Net Community

Production, C Export, N2 Fixation, etc.

Where do we go now…

Page 20: Satellite Ocean Color  Overview

Thank You for Your Attention!!

Special Thanx to the NASA Goddard Ocean Biology Processing Group

and theNRC Committee on Sustained Ocean Color Obs