Title: OC 3570 Final Project
1OC 3570Final Project
- AVHRR and Ship IR sensor
- versus
- in situ SAIL, BOOM and CTD instruments
- LCDR Marcus Simoes
2OC 3570AVHRR/Ship IR versus CTD,SAIL and BOOM
in situ data
- Guidelines
- Introduction
- Data acquisition
- Data processing
- Statistics Computations and Results
- Conclusions
3Introduction
- Main Goal to compare /BOOM/ Sail /CTD in situ
data with AVHRR and IR sensor data - SST Data from AVHRR only in 5 and 8 of Feb( leg
1) due to cloud conditions. - Differences in data due to acquisition depths
4Data Acquisition
- Remote.
- NOAA-14 AVHRR/2 ( channels 1 to 5) images of 5
and 8 Feb. - Infrared ship sensor onboard.
- In situ.
- Boom probe.
- SAIL Serial ASCII Interface Loop.
- CTD Conductivity-Temperature-Depth Sea bird
SBE-9 on stations 1,2,3 (5th Feb) and 8and 9
(8th Feb). - All data placed on the WEB in suitable ASCII.
5Data Processing
- BOOM , SAIL, CTD and IR sensor temperatures ready
to use. - AVHRR temperatures should be retrieved by a
preset SST algorithm stored in TERASCAN manually
(as you did in RS labs) - IR sensor does not work well these days and it
was disregard ( many possible reasons as moisture
contamination, malfunction,etc.) - Only 5 CTD stations in two days so they were used
as cross check information for BOOM and SAIL
temperatures.Disregarded on the comparative
statistical analysis and plots.
6Data ProcessingAVHRR
- Summary AVHRR SST retrieval Methodology used.
- Exclusion of Data at Large Zenith Angles
- Cloud Clearing (Measurements over cloud area are
not used). - IR uniformity test.
- Maximum Value in the Channel 2 Albedo .
- Difference in Channel 3,4 and 5.
- Test for daytime/nighttime
- Minimum Channel 4 Temperature
- Use of Day and Night time algorithms
7Data ProcessingAVHRR
- SST Algorithms
- NOAA-14 Daytime Algorithm
- MCSST Day Split Window Algorithm
- sst (1.017342 T4 ) 2.139588 (T4 - T5 )
0.779706 - (T4 - T5 ) (sec(ZA) - 1) -278.43 273.16
- where
- sst - computed SST value in degrees C.
- T4 - channel 4 scene temperature
- T5 - channel 5 scene temperature
- ZA - solar zenith angle
-
8Data ProcessingAVHRR
- NOAA-14 Night time Algorithms
- MCSST Night Dual Channel Algorithmsst1
(1.008751 T4 ) 1.409936 (T3 - T4 )
1.975581 (sec(ZA) - 1) - 273.914
273.16MCSST Night Split Window Algorithmsst2
(1.029088 T4 ) 2.275385 (T4 - T5 )
0.752567 (T4 - T5 ) (sec(ZA) - 1) - 282.24
273.16MCSST Night Triple Channel Algorithmsst3
(1.010037 T4 ) 0.920822 (T3 - T5 )
0.067026 (sec(ZA) - 1) - 275.364 273.16 - where
- sst n - computed SST value in degrees C.
- T3 - channel 3 scene temperature
- T4 - channel 4 scene temperature
- T5 - channel 5 scene temperature
- ZA - solar zenith angle
- Computed SST rejected if differs from climatology
by more than 10
9AVHRR data processing day 5 results
10AVHRR Data processing day 8 results
11BOOM Data Processing Day 5 Results
12BOOM Data Processing Day 8 Results
13SAIL Data Processing Day 5 Results
14SAIL Data Processing Day 8 Results
15Statistical Computations and Results
- Calculate parameters for each instrument
- Mean temperature.
- Standard deviation and Variance.
- Calculated parameters among instruments
- Correlation
- Linear Regression
16Statistical Computations and Results
17Statistical Computations and Results
18Statistical Computations and Results
19Conclusions
- BOOM x SAIL with good agreement in the cruise
- AVHRR useful to detected large features.
- Be sure when you are retrieving temperatures from
AVHRR that you have a good image, the methodology
and the right algorithm. - Use good in situ measurements as control points
to AVHRR images.
20OC 3570AVHRR/Ship IR versus CTD,SAIL and BOOM
in situ data