Hydrolight Lab: Part 1 July 18th, 2013.

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Presentation transcript:

Hydrolight Lab: Part 1 July 18th, 2013

Exercise 1: Optical Depth What geometric depths correspond to optical depths Runs took a similar amount of time even though the geometric depths were different: Run 1 took 3.6 s, Run 2 took 3.6 s C = a + b; Optical Depth = Geometrical Depth * C   a (m-1) b (m-1) Optical Depth Geometrical Depth (m) Run 1 0.1 0.4 20 40 Run 2 1 4

Exercise 1: Optical Depth Irradiances are the same at the same optical depths PLOT: show irradiances are the same at the same optical depths

Exercise 1: Optical Depth K functions are not constant with depth Various K functions as a function of depth for the highly scattering water

Exercise 2: IOP error effects Your AC-9 gives a=0.30 m-1 +/- 20% Three runs with a= 0.24, 0.30, 0.36 m-1 b = 1.0 m-1 at 440 nm

Exercise 2: IOP error effects Depth Ed Diff. (10 m) (W/m^2 nm) (%) Run3 1.83E-02 0.00 Run4 3.76E-02 105.29 Run5 9.02E-03 -50.71   (50 m) 3.58E-10 1.25E-08 3385.55 1.10E-11 -96.93 Depth Lu Diff. (10 m) (W/m^2 nm) (%) Run3 9.95E-05 0.00 Run4 2.63E-04 164.25 Run5 4.00E-05 -59.84   (50 m) 2.28E-11 7.95E-10 3385.64 7.00E-13 -96.93 A small error in an IOP can make a big difference in the field at depth Run 3 Run 4 Run 5 a (m-1) 0.3 0.24 0.36

Unbiased Percent Difference Unbiased percent difference UPD (Hooker et al., 2002) where X represents the ocean color product for λ at any discrete wavelength and t is neglected for Hydrolight ..................[1]

E3: Rrs dependence on backscatter Particle Backscatter fraction Bb=bbp/bp The optical depth differences cause the computer time various

Exercise 4: Compare “CLASSIC” and “NEW” Case 1 IOP model Chl = 2.3 mg m-3

Exercise 5: Compare Hydrolight and Ecolight outputs Ecolight computed irradiances same as Hydrolight, but it 12-20 times faster than Hydrolight

EXERCISE 6 Study area: Alfacs Bay (Ebro Delta, NW Mediterranean) - Case II waters Zmax= 6.5 m Hidrolight simulations: New Case I [Chl]= 6 mg/m3 Inelastic scattering Finite depth (Zmax= 6.5 m) Default values Different bottom types

Effect of bottom reflectance on Rrs [Chl]= 6 mg/m3

Irradiance reflectance vs depth

THANKS!

Rrs Dependence on Sun Zenith Rrs as seen from 40˚, 135˚ viewing angle Small variations in Rrs with sun zenith angle (assume Rrs is calculated exactly..?)

Rrs Dependence on Sun Zenith The change in Rrs must be due to viewing the VSF at different angles drops off at >60˚ due to less light enter the water at high angles.

Rho Dependence on Sun Zenith A rho of 0.28 appears to be a good approximation unless the sun is directly overhead. Rho also becomes spectrally dependent at small zenith angles.

Phase Functions From Lab 4 Arizona Dust – 40-30 um Platymonas – 16-30 um Chaetoceros – 7-10 um (chains) DRE - ????

LISST, Eco VSF, Mie Theory Fit phase function to LISST and VFS measurements of bead mixtures (and well characterized culture? Coccolithophores?). Compare the phase function to the predicted function calculated using Mie theory. Video for explaining the calibration, data collection, deployment, data analysis of LISST.

HyperPro Ashley and Morgaine A video!!! View of the instrument in and out of the water. Demonstrate (at least one) buoy-mode deployment. Demonstrate profiling? Demonstrate basic data processing. Suggestions for where user can go from there.

Fluorometry Group: Matt, Sophie, & Elizabeth Fluorometer profiles, ideally in a transect (WetLabs and potentially Turner-cyclops) Matching Niskin bottle samples at intervals to be analyzed later in lab Proper lab protocols for bench-top fluorescence Satellite image match-ups, if available Discussing limits/pitfalls NP Quenching, fluor:chl:carbon, temperature/pressure effects, CDOM interference, etc For video only: introduction to fluorescence Shine blue light on culture or spinach extract (if possible) Shine CDOM fluorometer onto white paper Very basic chemistry (excitation of an electron)

An Introduction to Radiometry: Taking Measurements, Getting Closure, and Data Applications During this video you will learn the basics of radiometry and how to take proper measurements in the field and aboard ship with a variety of instruments. Using real data we’ll also show you how to process and compare results from these instruments.

The Plan: Dock Tests + Cruise Data Comparison 1: Find Rrs with the HyperPRO, HyperSAS, WISP Get closure! Comparison 2: Measure chlorophyll with Fluorometer (CTD samples) and the WISP Compare methodologies Combine the results in a video introducing the basics of radiometry, instrument use, and data processing/comparison/application

If we have time… We’ll make the part (or all?) of the video in Chinese and Spanish.