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LONG-TERM STABILITY OF A MOORED OPTICAL OXYGEN SENSOR IN AN ESTUARY
Stephanie Jaeger*1, Simone Simbeck1, Carol Janzen2, Samuel Bennett1, & David Murphy1
1Sea-Bird Scientific, Bellevue, Washington 98005 USA · 2Alaska Ocean Observing System, Anchorage, Alaska 99501 USA
*Corresponding author: sjaeger@seabird.com
Introduction
Project Goal: Assess the long-term, undisturbed
performance of the SBE63 optical oxygen sensor in a
high fouling coastal environment over a two-year
period. Results indicate stability within +/- 2% in the
field.
• Instrument left on the mooring for 2 years without removal, cleaning,
or servicing
• Test site was a shallow nearshore estuarine environment at Shilshole
Marina, north of Seattle, WA USA
• Test site visited periodically with water samples and CTD profiles
collected for field validation of mooring
Acknowledgements:
Many thanks to Rory Holt for analyzing Winkler water samples, and all of the
Sea-Bird team members who helped with fieldwork. Thanks to Lydia
Kapsenberg, recipient of the 2013 Sea-Bird Graduate Student Equipment
Loan Program Award, for sharing data and feedback.
References:
• Bittig, H. and A. Körtzinger, 2015. Tackling Oxygen Optode Drift: Near-Surface and In-
Air Oxygen Optode Measurements on a Float Provide an Accurate in Situ Reference. J.
Atmos. Oceanic Technol. 32: 1536–1543.
• Garcia, H. and L. Gordon, 1992. Oxygen solubility in seawater: better fitting equations.
Limnol. Oceanogr. 37: 1307–1312.
• Kapsenberg, L. and G. Hofmann, 2016. Ocean pH time-series and drivers of variability
along the northern Channel Islands, California, USA. Limnol. Oceanogr., early release:
DOI: 10.1002/lno.10264.
• Knap, A., A. Michaels, A. Close, H. Ducklow and A. Dickson (eds.), 1996. Chapter 6:
Determination of Dissolved Oxygen by the Winkler Procedure; Protocols for Joint
Global Ocean Flux Study (JGOFS) Core Measurements. JGOFS Report 19: 29 – 36.
• Sea-Bird Electronics, 2015. User Manual for SBE37-SMP-ODO MicroCAT
C-T-ODO(P) Recorder. Sea-Bird Scientific: 97 pp.
Why is this important?
Dissolved oxygen (DO) is a key parameter for understanding biological
production, deep water mass transport, biogeochemical cycling, and other
oceanographic processes. Improvements and assessments of the long-
term stability of oxygen sensors contribute to a better understanding of
oxygen data quality. An understanding of potential impacts from
biofouling can lead to fewer field servicing visits needed at moored sites,
and leave more time for data analysis.
Results
Time series of mooring data shows seasonal and diurnal oxygen variability over the deployment period, and field validation data also mapped the same
features. In particular, oxygen super-saturation events from phytoplankton blooms are captured, with DO reaching as high as 185% oxygen saturation (up to
12.2 mL/L), shown in Fig. 1.
Near the end of the deployment, salinity showed less tidal fluctuation, while DO dropped to 0, presumably due to clogging of the sensor/plumbing. Then,
mooring was pulled and recovered in June 2015, after 21 months at the estuarine site. The extent of biofouling on recovery is shown in Fig. 2 and 4. Note the
clear path around the anti-foulant cartridges at the intake/exhaust that remains, confirming the efficacy of the anti-foulant in high growth environments.
After recovery, housing exterior was cleaned, and sensors lightly flushed with DI water only. Calibration was completed at Sea-Bird to assess drift, shown in
Fig. 3. The post calibration of the ODO sensor shows a slope drift of -1.2%, where the sensor was deployed for 21 months of the two year period. This result
falls within the initial accuracy specification of the ODO sensor (+/- 2%), showing negligible impacts from biofouling at this site.
Methods:
A SBE37SMP CTD (37) with a SBE63 optical dissolved oxygen sensor
(ODO) was deployed on a floating dock in central Puget Sound at 3 m
depth, and 4 m above the bottom. Sole biofouling protection was Sea-
Bird’s standard anti-foulant cartridges installed on the plumbing
intake/exhaust (Sea-Bird Electronics, 2015). Instrument sampled every 15
minutes and output in real-time via cellular telemetry.
37-ODO was not disturbed or recovered for 21 months. Periodic field site
visits were completed every 1 – 3 months to help validate mooring data,
and three major steps were completed with each visit:
1) Water samples were manually collected using a Niskin bottle, matching
the 37-ODO depth and sample period. Triplicates collected for
dissolved oxygen analysis by Winkler titration method (Knap et. al,
1996).
2) Side-by-side comparisons were made using profiling CTD (SBE19Plus
with SBE43 Clark electrode-type oxygen sensor) for reference, hung
in-situ adjacent to the 37-ODO.
3) A vertical profile was completed using same profiling CTD. Water
column structure and stratification were assessed to provide context of
the mooring relative to gradients. Spatial variability and position
relative to surface mixed layer are considered when comparing the
mooring to water samples.
Fig. 1 Time series of shallow SBE37-ODO deployed in central Puget Sound from Sept. 2013 – May 2015, undisturbed for duration. Temperature
(°C, shown in red) and salinity (PSU, shown in blue) on top. On bottom, DO shown in green with oxygen solubility (OxSol; Garcia & Gordon,
1992) shown in purple, plotted with discrete measurements taken from a clean reference SBE43 sensor and bottle samples.
Fig. 2B After 21-month
deployment: Same close-up of
SBE37-ODO. Note the clear
area around the white anti-
foulant cartridges on the
intake/exhaust.
Results and Precautions from Field Validations
Field validation results using both discrete water samples and a clean reference SBE43 sensor are shown below. During well-mixed conditions
(Table 2), the samples and moored sensor data agree better than during gradient conditions when sensor and samples were in the oxycline
(Table 1). This stresses the importance of understanding vertical and horizontal water column structure when making sensor and water sample
comparisons.
Conclusions
• ODO sensor showed stability within the initial accuracy
specification (+/- 2%) and negligible effects from biofouling,
until clogging of flow path after 21 months.
• Helps to provide a baseline when deciding how often to service
and maintain a mooring in similar environments, which can lead
to fewer field visits than typically expected.
Intake Exhaust
Thermistor
Intake Exhaust
Thermistor
Fig. 2A Prior to deployment:
Close-up of SBE37-ODO
intake/exhaust. Temperature,
conductivity, and oxygen
sensors are all contained
within the pumped flow path.
Fig. 3 Pre-
and post-
calibration
data from the
same SBE63
ODO sensor
as plotted in
Fig.1.
Residuals
show a slope
drift of -1.2%
after the two
year period.
Fig. 4 Photos of the entire SBE37-ODO instrument, both before
and after the 21-month deployment with biofouling.
Time
DO,
SBE37ODO
DO, ref.
SBE43
Date (PST) (mL/L) Rep. 1 Rep 2. Rep 3. AVG STD (mL/L)
03/12/14 13:00 6.75 7.14 7.32 7.54 7.33 0.20 6.65 -8.0 1.4
04/30/14 11:15 7.55 7.66 7.76 7.86 7.76 0.10 7.58 -2.7 -0.4
05/07/14 13:30 9.93 10.27 10.21 10.10 10.19 0.08 10.13 -2.6 -2.0
11/05/14 12:15 4.25 4.50 4.82 4.96 4.76 0.24 4.44 -10.6 -4.1
03/05/15 12:00 6.47 6.42 6.42 6.42 6.42 0.002 6.50 0.7 -0.5
DO, Winkler water samples (mL/L)
%Diff. of
ODO from
Avg. Winkler
%Diff. of
ODO from
SBE43
Time
DO,
SBE37ODO
DO, ref.
SBE43
Date (PST) (mL/L) Rep. 1 Rep 2. Rep 3. AVG STD (mL/L)
11/14/13 12:30 4.33 4.75* 4.91* 4.92* 4.86* 0.10* 4.26 ND 1.4
12/18/13 11:45 4.69 4.77 4.78 4.80 4.78 0.02 4.60 -1.9 1.9
01/29/14 11:15 5.35 5.39 5.44 5.52 5.45 0.07 5.33 -2.0 0.4
05/22/14 10:46 6.34 6.40 6.40 6.38 6.39 0.01 6.39 -0.8 -0.7
07/02/14 12:17 6.36 6.51 6.50 6.46 6.49 0.02 6.56 -2.0 -3.1
07/17/14 11:16 5.75 5.87 5.86 5.86 5.87 0.01 ND -1.9
07/17/14 11:30 5.69 5.76 -1.2
* = Not used as poor water sample collected for Winkler analysis
DO, Winkler water samples (mL/L)
%Diff. of
ODO from
Avg. Winkler
%Diff. of
ODO from
SBE43
Table 2. Station sampled while mooring (SBE37ODO; at 3 m depth) lies
in a well-mixed water mass. Mooring DO data is ≤ 2% different than
bottle samples.
Table 1. Station sampled during vertical DO gradient through-out water
column (~ 7 m total depth). Note discrepancy between mooring and
bottle samples; likely due to sampling in different water masses.
ODO
Sensor Time
DO,
SBE37OD
S/N: Date (UTC) Status (mL/L)
0265 06/25/14 21:15 Start interval 5.97 6.01 -0.61
0265 07/09/14 16:45 Mid-interval 4.94 4.97 -0.63
0265 07/09/14 20:45 Mid-interval 5.74 5.76 -0.29
0265 09/20/14 19:15 End of interval 5.32 5.32 0.08
0356 06/25/14 16:45 End of interval 5.43 5.56 -2.37
%Diff. of ODO
from Bottle
sample
DO, Bottle
water sample
(mL/L)
Discussion:
What is the mechanism and type of sensor drift?
• Drift characteristic of the SBE63 ODO observed by SBE across numerous
factory calibrations indicates sensor drifts linearly low of correct.
• Exact mechanism for drift in optical oxygen sensors is not well
understood, and may be due to a combination of factors.
• Bittig and Körtzinger (2015) suggest that reduction of oxygen sensitivity
over time could be attributed to a physical change of the sensing
membrane such as decreased oxygen accessibility of the luminophore or
decreased oxygen diffusivity inside the membrane.
• As with the SBE43, the instrument configuration with plumbing and anti-
foulants clearly helps to protect the sensor from external biofouling
growth.
How does this compare to drift while in storage?
Drift tests for optical oxygen sensors stored dry at room temperature,
completed at Sea-Bird over a three year period, indicate that shelf drift can
be on the order of -1.0 to -1.5% per year.
0
5
10
15
20
25
30
35
5
7
9
11
13
15
17
19
Salinity,PSU
Temperature,degC
Temp.
Salinity
0
100
200
300
400
500
600
0
2
4
6
8
10
12
14
DO,umol/kg
DissolvedOxygen,mL/L
DO, SBE37-ODO
OxSol
DO, SBE43 on SBE19Plus
DO, Winkler water sample
usingmeansigma-t
-0.2
-0.1
0
0.1
0.2
0 1 2 3 4 5 6 7 8 9 10
SBE 63 0497 - Oxygen (2 of 9) - 26-Jul-13
Residual(ml/l)
Oxygen (ml/l)
26-Jul-13 1.0000 18-Aug-15 1.0115
Table 3. Comparison between discrete water samples collected at
deployment depth and SBE37-ODO’s at Anacapa Island show good
agreement (< 2.4% difference). (Data from Kapsenberg and Hofmann, 2016).
Fig. 5 Pre and post calibrations completed at SBE from ODO sensors
deployed in the Channel Islands. Post calibrations show -0.7% drift
from ID 0265 and -1.8% drift from ID 0356 over the 1.5 year time
period.
Example of mooring in Channel Islands, CA
Another example of ODO performance at a nearshore site, in this case with
periodic cleaning, from Kapsenberg and Hofmann (2016). Deployment in a
kelp forest in northern Channel Islands at Anacapa Island pier from May
2013 – Sept. 2014. Instruments rotated between sites, and cleaned every 2
– 3 months. Results indicate negligible drift in ODO sensors.
-0.2
-0.1
0
0.1
0.2
0 1 2 3 4 5 6 7 8 9 10
SBE 63 0265 - Oxygen (2 of 10) - 09-Jan-13
Residual(ml/l)
Oxygen (ml/l)
09-Jan-13 1.0000
29-Oct-14 1.0072
-0.2
-0.1
0
0.1
0.2
0 1 2 3 4 5 6 7 8 9 10
SBE 63 0356 - Oxygen (2 of 5) - 09-Jan-13
Residual(ml/l)
Oxygen (ml/l)
09-Jan-13 1.0000
25-Jul-14 1.0176 ODO ID 0356 ODO ID 0265
Status indicates stage of a given deployment interval (each 2-3 months long).

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Long-term stability of a moored optical oxygen sensor in an estuary

  • 1. LONG-TERM STABILITY OF A MOORED OPTICAL OXYGEN SENSOR IN AN ESTUARY Stephanie Jaeger*1, Simone Simbeck1, Carol Janzen2, Samuel Bennett1, & David Murphy1 1Sea-Bird Scientific, Bellevue, Washington 98005 USA · 2Alaska Ocean Observing System, Anchorage, Alaska 99501 USA *Corresponding author: sjaeger@seabird.com Introduction Project Goal: Assess the long-term, undisturbed performance of the SBE63 optical oxygen sensor in a high fouling coastal environment over a two-year period. Results indicate stability within +/- 2% in the field. • Instrument left on the mooring for 2 years without removal, cleaning, or servicing • Test site was a shallow nearshore estuarine environment at Shilshole Marina, north of Seattle, WA USA • Test site visited periodically with water samples and CTD profiles collected for field validation of mooring Acknowledgements: Many thanks to Rory Holt for analyzing Winkler water samples, and all of the Sea-Bird team members who helped with fieldwork. Thanks to Lydia Kapsenberg, recipient of the 2013 Sea-Bird Graduate Student Equipment Loan Program Award, for sharing data and feedback. References: • Bittig, H. and A. Körtzinger, 2015. Tackling Oxygen Optode Drift: Near-Surface and In- Air Oxygen Optode Measurements on a Float Provide an Accurate in Situ Reference. J. Atmos. Oceanic Technol. 32: 1536–1543. • Garcia, H. and L. Gordon, 1992. Oxygen solubility in seawater: better fitting equations. Limnol. Oceanogr. 37: 1307–1312. • Kapsenberg, L. and G. Hofmann, 2016. Ocean pH time-series and drivers of variability along the northern Channel Islands, California, USA. Limnol. Oceanogr., early release: DOI: 10.1002/lno.10264. • Knap, A., A. Michaels, A. Close, H. Ducklow and A. Dickson (eds.), 1996. Chapter 6: Determination of Dissolved Oxygen by the Winkler Procedure; Protocols for Joint Global Ocean Flux Study (JGOFS) Core Measurements. JGOFS Report 19: 29 – 36. • Sea-Bird Electronics, 2015. User Manual for SBE37-SMP-ODO MicroCAT C-T-ODO(P) Recorder. Sea-Bird Scientific: 97 pp. Why is this important? Dissolved oxygen (DO) is a key parameter for understanding biological production, deep water mass transport, biogeochemical cycling, and other oceanographic processes. Improvements and assessments of the long- term stability of oxygen sensors contribute to a better understanding of oxygen data quality. An understanding of potential impacts from biofouling can lead to fewer field servicing visits needed at moored sites, and leave more time for data analysis. Results Time series of mooring data shows seasonal and diurnal oxygen variability over the deployment period, and field validation data also mapped the same features. In particular, oxygen super-saturation events from phytoplankton blooms are captured, with DO reaching as high as 185% oxygen saturation (up to 12.2 mL/L), shown in Fig. 1. Near the end of the deployment, salinity showed less tidal fluctuation, while DO dropped to 0, presumably due to clogging of the sensor/plumbing. Then, mooring was pulled and recovered in June 2015, after 21 months at the estuarine site. The extent of biofouling on recovery is shown in Fig. 2 and 4. Note the clear path around the anti-foulant cartridges at the intake/exhaust that remains, confirming the efficacy of the anti-foulant in high growth environments. After recovery, housing exterior was cleaned, and sensors lightly flushed with DI water only. Calibration was completed at Sea-Bird to assess drift, shown in Fig. 3. The post calibration of the ODO sensor shows a slope drift of -1.2%, where the sensor was deployed for 21 months of the two year period. This result falls within the initial accuracy specification of the ODO sensor (+/- 2%), showing negligible impacts from biofouling at this site. Methods: A SBE37SMP CTD (37) with a SBE63 optical dissolved oxygen sensor (ODO) was deployed on a floating dock in central Puget Sound at 3 m depth, and 4 m above the bottom. Sole biofouling protection was Sea- Bird’s standard anti-foulant cartridges installed on the plumbing intake/exhaust (Sea-Bird Electronics, 2015). Instrument sampled every 15 minutes and output in real-time via cellular telemetry. 37-ODO was not disturbed or recovered for 21 months. Periodic field site visits were completed every 1 – 3 months to help validate mooring data, and three major steps were completed with each visit: 1) Water samples were manually collected using a Niskin bottle, matching the 37-ODO depth and sample period. Triplicates collected for dissolved oxygen analysis by Winkler titration method (Knap et. al, 1996). 2) Side-by-side comparisons were made using profiling CTD (SBE19Plus with SBE43 Clark electrode-type oxygen sensor) for reference, hung in-situ adjacent to the 37-ODO. 3) A vertical profile was completed using same profiling CTD. Water column structure and stratification were assessed to provide context of the mooring relative to gradients. Spatial variability and position relative to surface mixed layer are considered when comparing the mooring to water samples. Fig. 1 Time series of shallow SBE37-ODO deployed in central Puget Sound from Sept. 2013 – May 2015, undisturbed for duration. Temperature (°C, shown in red) and salinity (PSU, shown in blue) on top. On bottom, DO shown in green with oxygen solubility (OxSol; Garcia & Gordon, 1992) shown in purple, plotted with discrete measurements taken from a clean reference SBE43 sensor and bottle samples. Fig. 2B After 21-month deployment: Same close-up of SBE37-ODO. Note the clear area around the white anti- foulant cartridges on the intake/exhaust. Results and Precautions from Field Validations Field validation results using both discrete water samples and a clean reference SBE43 sensor are shown below. During well-mixed conditions (Table 2), the samples and moored sensor data agree better than during gradient conditions when sensor and samples were in the oxycline (Table 1). This stresses the importance of understanding vertical and horizontal water column structure when making sensor and water sample comparisons. Conclusions • ODO sensor showed stability within the initial accuracy specification (+/- 2%) and negligible effects from biofouling, until clogging of flow path after 21 months. • Helps to provide a baseline when deciding how often to service and maintain a mooring in similar environments, which can lead to fewer field visits than typically expected. Intake Exhaust Thermistor Intake Exhaust Thermistor Fig. 2A Prior to deployment: Close-up of SBE37-ODO intake/exhaust. Temperature, conductivity, and oxygen sensors are all contained within the pumped flow path. Fig. 3 Pre- and post- calibration data from the same SBE63 ODO sensor as plotted in Fig.1. Residuals show a slope drift of -1.2% after the two year period. Fig. 4 Photos of the entire SBE37-ODO instrument, both before and after the 21-month deployment with biofouling. Time DO, SBE37ODO DO, ref. SBE43 Date (PST) (mL/L) Rep. 1 Rep 2. Rep 3. AVG STD (mL/L) 03/12/14 13:00 6.75 7.14 7.32 7.54 7.33 0.20 6.65 -8.0 1.4 04/30/14 11:15 7.55 7.66 7.76 7.86 7.76 0.10 7.58 -2.7 -0.4 05/07/14 13:30 9.93 10.27 10.21 10.10 10.19 0.08 10.13 -2.6 -2.0 11/05/14 12:15 4.25 4.50 4.82 4.96 4.76 0.24 4.44 -10.6 -4.1 03/05/15 12:00 6.47 6.42 6.42 6.42 6.42 0.002 6.50 0.7 -0.5 DO, Winkler water samples (mL/L) %Diff. of ODO from Avg. Winkler %Diff. of ODO from SBE43 Time DO, SBE37ODO DO, ref. SBE43 Date (PST) (mL/L) Rep. 1 Rep 2. Rep 3. AVG STD (mL/L) 11/14/13 12:30 4.33 4.75* 4.91* 4.92* 4.86* 0.10* 4.26 ND 1.4 12/18/13 11:45 4.69 4.77 4.78 4.80 4.78 0.02 4.60 -1.9 1.9 01/29/14 11:15 5.35 5.39 5.44 5.52 5.45 0.07 5.33 -2.0 0.4 05/22/14 10:46 6.34 6.40 6.40 6.38 6.39 0.01 6.39 -0.8 -0.7 07/02/14 12:17 6.36 6.51 6.50 6.46 6.49 0.02 6.56 -2.0 -3.1 07/17/14 11:16 5.75 5.87 5.86 5.86 5.87 0.01 ND -1.9 07/17/14 11:30 5.69 5.76 -1.2 * = Not used as poor water sample collected for Winkler analysis DO, Winkler water samples (mL/L) %Diff. of ODO from Avg. Winkler %Diff. of ODO from SBE43 Table 2. Station sampled while mooring (SBE37ODO; at 3 m depth) lies in a well-mixed water mass. Mooring DO data is ≤ 2% different than bottle samples. Table 1. Station sampled during vertical DO gradient through-out water column (~ 7 m total depth). Note discrepancy between mooring and bottle samples; likely due to sampling in different water masses. ODO Sensor Time DO, SBE37OD S/N: Date (UTC) Status (mL/L) 0265 06/25/14 21:15 Start interval 5.97 6.01 -0.61 0265 07/09/14 16:45 Mid-interval 4.94 4.97 -0.63 0265 07/09/14 20:45 Mid-interval 5.74 5.76 -0.29 0265 09/20/14 19:15 End of interval 5.32 5.32 0.08 0356 06/25/14 16:45 End of interval 5.43 5.56 -2.37 %Diff. of ODO from Bottle sample DO, Bottle water sample (mL/L) Discussion: What is the mechanism and type of sensor drift? • Drift characteristic of the SBE63 ODO observed by SBE across numerous factory calibrations indicates sensor drifts linearly low of correct. • Exact mechanism for drift in optical oxygen sensors is not well understood, and may be due to a combination of factors. • Bittig and Körtzinger (2015) suggest that reduction of oxygen sensitivity over time could be attributed to a physical change of the sensing membrane such as decreased oxygen accessibility of the luminophore or decreased oxygen diffusivity inside the membrane. • As with the SBE43, the instrument configuration with plumbing and anti- foulants clearly helps to protect the sensor from external biofouling growth. How does this compare to drift while in storage? Drift tests for optical oxygen sensors stored dry at room temperature, completed at Sea-Bird over a three year period, indicate that shelf drift can be on the order of -1.0 to -1.5% per year. 0 5 10 15 20 25 30 35 5 7 9 11 13 15 17 19 Salinity,PSU Temperature,degC Temp. Salinity 0 100 200 300 400 500 600 0 2 4 6 8 10 12 14 DO,umol/kg DissolvedOxygen,mL/L DO, SBE37-ODO OxSol DO, SBE43 on SBE19Plus DO, Winkler water sample usingmeansigma-t -0.2 -0.1 0 0.1 0.2 0 1 2 3 4 5 6 7 8 9 10 SBE 63 0497 - Oxygen (2 of 9) - 26-Jul-13 Residual(ml/l) Oxygen (ml/l) 26-Jul-13 1.0000 18-Aug-15 1.0115 Table 3. Comparison between discrete water samples collected at deployment depth and SBE37-ODO’s at Anacapa Island show good agreement (< 2.4% difference). (Data from Kapsenberg and Hofmann, 2016). Fig. 5 Pre and post calibrations completed at SBE from ODO sensors deployed in the Channel Islands. Post calibrations show -0.7% drift from ID 0265 and -1.8% drift from ID 0356 over the 1.5 year time period. Example of mooring in Channel Islands, CA Another example of ODO performance at a nearshore site, in this case with periodic cleaning, from Kapsenberg and Hofmann (2016). Deployment in a kelp forest in northern Channel Islands at Anacapa Island pier from May 2013 – Sept. 2014. Instruments rotated between sites, and cleaned every 2 – 3 months. Results indicate negligible drift in ODO sensors. -0.2 -0.1 0 0.1 0.2 0 1 2 3 4 5 6 7 8 9 10 SBE 63 0265 - Oxygen (2 of 10) - 09-Jan-13 Residual(ml/l) Oxygen (ml/l) 09-Jan-13 1.0000 29-Oct-14 1.0072 -0.2 -0.1 0 0.1 0.2 0 1 2 3 4 5 6 7 8 9 10 SBE 63 0356 - Oxygen (2 of 5) - 09-Jan-13 Residual(ml/l) Oxygen (ml/l) 09-Jan-13 1.0000 25-Jul-14 1.0176 ODO ID 0356 ODO ID 0265 Status indicates stage of a given deployment interval (each 2-3 months long).