Title: Using Satellite Imagery to Analyze Lake Quality
1Using Satellite Imagery to Analyze Lake Quality
- Matthew J. Kucharski
- Under the direction of Stefan Falke
- And CAPITA
- Washington University in St. Louis
- REU Program
- August 6, 2004
2Idea behind the Project
- Monitoring of the earth has risen dramatically in
the last years allowing coverage of large regions
year round. - Purpose of Project
- SeaWiFS satellite imagery data processing
- Understand the processing of SeaWiFS data for
imaging - Convert raw data to usable formats for air and
water quality analysis - Application of satellite imagery to lake water
quality monitoring - Compare SeaWiFS and MODIS surface reflectance
(color) data to lake clarity monitoring data
3Spectral Characteristics of soil, vegetation, and
water
- Soil
- Reflects Red and wavelengths with higher
frequency - Vegetation
- High in green (555 nm) and infrared wavelengths
- Water
- Absorbs most of the light reflected upon it
- Reflects mostly the lower frequency wavelengths
i.e. blue
Visible Spectrum
Soil
Vegetation
Water
4Passive remote sensing from Satellite
- Use of the suns radiance
- Absorption and scattering of sunlight in the
atmosphere, on the land, and on the water
5CAPITA and Processing SeaWiFS data
- At Center for Air Pollution Impact and Trend
Analysis (CAPITA), SeaWiFS data is being
processed for optical thickness of aerosols
across the United States
6The SeaWiFS data Process
- Georeferencing
- Splicing and Mosaicing
- Rayleigh correction
- Scattering angle correction
- Process Created by Sean Raffuse at Washington
University
7Other Manipulations for SeaWiFS dataCreate Time
Series Plots and Color Time Series
Jan.
June
Nov.
8Previous attempts at using Satellite for Lake
monitoring
- Environment Remote Sensing Center at University
of Wisconsin - Uses Landsat and MODIS imagery to monitor Water
clarity i.e. Secchi Depth. - Correlation found between Secchi Depth and Blue
to Red ratio of the reflectance
9Using SeaWiFS imagery for Lake Monitoring
Missed Algae Event?
June
Apr.
Oct.
10Data Used
Fence Lake
- Wisconsin has well extensive monitoring of
Various size lakes by Wisconsin Department of
Natural Resources and the Self-Help Lake
Monitoring Volunteers
Wind Lake
North Twin Lake
Tomahawk
Shawano
Green Lake
Lake Koshkonong
- SeaWiFS surface reflectance data for 2000, 2001,
and 2002
11Results of Wisconsin Lakes
Fence Lake
Wind Lake
North Twin Lake
Tomahawk
Shawano
Green Lake
Lake Koshkonong
12Spectral Characteristics of Lakes
- No Two Lakes are the Same
- Lake size
- Lake chemistry
- Difficult to derive a universal model
13Problems and Potential with SeaWiFS for Lake
Monitoring
- One km Resolution creates a wide area to monitor
- Not functional with smaller or narrower lakes
- Temporal Alignment
- Atmosphere remaining after processing
- Haze, clouds ect.
- Possible to analyze seasonal changes of lakes
- Color time series gives visual aid to current
monitoring techniques
14MODIS vs. SeaWiFS ImageryTable Rock Lake
- SeaWiFS Image 1 km resolution
- MODIS Image 250m resolution
15Table Rock Lake
- Current research project involving Wash U.
- High phosphorus levels
- Creates Eutrophication
- Monitored using Secchi Disk Depth by the Lakes of
Missouri Volunteer Program every 20 days - Of eight time spans for gathering Lake data,
MODIS had only five Cloud-free days
16Results of Table Rock Lake
- At 250m resolution
- Examined relationships by day and by site
17500m Resolution
18Personal Secchi Depth Sampling
- On July 12-13 2004, I recorded my own Secchi
depth measurement. - Secchi disk provided by David Caseletto
- Boat Provided by Table Rock Lake Water Quality,
Inc. - Days were perfectly clear for Satellite
- Results
- Definite Human Error
- No longer just a place on a image
19Future research opportunities of Lake Monitoring
- Lake monitoring via satellite on regional or
individual scale - Explore other factors affecting the lakes
spectral characteristics - Extent MODIS imagery analysis with similar tools
as SeaWiFS
20Acknowledgements
- I would like to acknowledge Dr. Stefan Falke, Dr.
Rudolf Husar, and Erin Robinson at CAPITA. Dr.
Lars Angenent and Dr. Dan Giammar for valuable
insight about lake properties. Also, Gene Bulfin
with technical support.
21References
- Giammar, Daniel and Angenent, Lars, 2004.
Evaluation of Chemical and Biological Tracers
for Source Appointment of phosphorus in Table
Rock Lake, on the Missouri- Arkansas Border.
Proposal - Introduction to Remote Sensing Environment. 2004.
www.microimage.com. Lincoln MicroImages, Inc.
http//www.microimages.com/getstart/pdf/introrse.p
df - Kaufman, Y. J., Tanre, D., Gordon, H. R.,
Nakajima, T., Lenoble, J., Frouin, R., Grassl,
H., Herman, B. M., King, M. D., and Teillet,
P.M., (1997), Passive remote sensing of
tropospheric aerosol and atmospheric correction
for the aerosol effect, J. Geophys. Res.
10216,815-16,830. - Li, F., and Husar, R. B., (1999), Pre-processing
of SeaWiFS satellite data for aerosol retrieval
Online. Center for Air Pollution Impact and
Trend Analysis. Available from
http//capita.wustl.edu/capita/capitareports/CoRe
trieval/SeaWiFSPreProcessinghtm. Accessed 27
July 2004. - Lillesand, Thomas M. Combining Satellite Remote
Sensing and Volunteer Secchi Disk Measurement
for Lake Transparency Monitoring. University of
Wisconsin - Radiative Transfer Theory, Atmospheric
Correction, and Ocean Color. University of
Miami. June 25, 2004 http//www.physics.miami.ed
u/chris/envr_optics.html - Raffuse, Sean M. 2003. Estimation of Daily
Surface Reflectance over the United States from
the SeaWifS Sensor. Thesis. Washington
University In St. Louis - Schultz, Gert A. Ed., Engman, Edwin T., Ed.
Remote Sensing in Hydrology and Water
Management. Springer Heidelberg 2000 - Wisconsin Department of Natural Resources.
Self-Help Lake Monitoring. July 6, 2004
http//www.dnr.state.wi.us/org/water/fhp/lakes/se
lfhelp/index.htm