Title: Ecological Nowcasting in Chesapeake Bay
1Ecological Nowcasting in Chesapeake Bay
- Christopher Brown
- NOAA Satellite Climate Studies Branch
- CICS - ESSIC
- University of Maryland, College Park
2Importance of Coastal Ocean Monitoring
Prediction
- National Goal
- Congress initiated efforts to establish a coastal
monitoring system and develop coastal
hydrodynamic models - NOAA Goal
- VADM Lautenbacher stated that an ecosystem
assessment and prediction capability was a
critical NOAA to provide information on coastal
and marine ecosystems - He also wrote that by 2011 NOAA should be able
to forecast routinely the extent and impact of
critical ecosystem events, such as harmful algal
blooms - Biological Oceanography Goal
- Develop the understanding and the means to detect
and predict distribution pattern of organisms
3Motivation for Study
- Detect and predict distribution pattern of
organisms that affect society, both beneficial
and harmful - Few existing methods work well and in near-real
time
Bloom of the coccolithophorid Emiliania huxleyi
in the Barents Sea in July 2003 in SeaWiFS
imagery. Image courtesy of NASA SeaWiFS Project
and OrbImage.
4Approaches for Predicting Organisms
- Process-Oriented or Mechanistic Modeling
- Empirical or Statistical Modeling
5Mechanistic Modeling
6Statistical Modeling
- Develop multi-variate empirical habitat models
- Quantitatively define the preferred environmental
conditions of the organism - Based on Concept of Ecological Niche
- Identify the geographic locations where ambient
conditions coincide with the preferred habitat of
target organism
7Hybrid Statistical Mechanistic Approach
- Develop multi-variate empirical habitat models
- Drive habitat models using real-time data
acquired from a variety of sources
8Hybrid Statistical Mechanistic Ecological
Approach
- Old technique employed in new way
- GAP Analysis retrospective analysis
- Ecological Nowcasting near-real time
9Ecological Nowcasting In Chesapeake Bay
- Currently generate nowcasts of two species in
Chesapeake Bay - Sea Nettles, Chrysaora quinquecirrha
- Dinoflagellate Karlodinium micrum
Chance of encountering sea nettle, C.
quinquecirrha, on August 15, 2004
Relative abundance of the harmful algal bloom K.
micrum on May 27, 2004
10Nowcasting Sea Nettle Distributionsin Chesapeake
Bay An Overview
- C. W. Brown1, R. R. Hood2, T. Gross3, Z. Li3,
M.-B. Decker2, J. Purcell2 and H. Wang4 - 1NOAA/NESDIS Office of Research Applications
- 2Horn Point Laboratory, UMCES
- 3NOAA/NOS Coast Survey Development Laboratory
- 4VIMS, College of William and Mary
- Funded by NORS Grant, Maryland SeaGrant, NCCOS
EcoFore 04
Chrysaora quinquecirrha (Photo by Rob Condon)
11Introduction Sea Nettles
- Chrysaora ephyra and medusa seasonally populate
Chesapeake Bay - Chrysaora is biologically important and impacts
recreational activities - Knowing the distribution of Chrysaora would
provide valuable information
12Sea Nettle Nowcasting Procedure
- Estimate current surface salinity and temperature
fields - Georeference salinity and SST fields
- Apply habitat model
- Generate image illustrating the likelihood of
encounter of Chrysaora
13Surface Salinity
- Generated using hydrodynamic model developed for
the Chesapeake Bay - Model forced using near-real time input
- Model attributes
- Horizontal Resolution 1-5 kilometers
- Vertical Resolution 1.52 meters
- Error 2 - 3 ppt
Model generated surface salinity in Chesapeake
Bay for April 20, 2005
14Sea-Surface Temperature
- Two Sources
- Generated by hydrodynamic model
- Error 2 - 3 C
- Derived from NOAA AVHRR satellite imagery
- Resolution 1 km
- Weekly composite
- Bias 0.5 C STD 1.0C
Sea-surface Temperature (ºC)
Model generated sea-surface temperature in
Chesapeake Bay for April 20, 2005
15Sea Nettle Habitat Model
- Models developed to predict
- Probability of encountering Chrysaora
- Density of Chrysaora
- Analyzed relationship between Chrysaora, salinity
and sea-surface temperature - Samples collected in surface waters (0 10 m) of
Chesapeake Bay (n 1064) - 2/3 model training
- 1/3 model testing
16Sea Nettle Habitat
Nettle medusa occupy narrow temperature (26-31
C) and salinity (10-16 PSU) range. Salinity
optimum 13.5 PSU.
17Probability of Encountering Sea Nettles
- Combination of salinity and SST is a good
predictor of Chrysaora presence - If SST lt 34C
- p elogit / (elogit 1),
- where,
- logit -8.120 (0.351SST) - (0.572 SAL -
13.5) - Hosmer-Lemeshow Goodness of Fit P 0.493
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20Nowcasting the Relative Abundance of Karlodinium
micrum in Chesapeake Bay
- Christopher W. Brown1, Douglas L. Ramers2, Thomas
F. Gross3, Raleigh R. Hood4, Peter J. Tango5 and
Bruce D. Michael5
1NOAA, 2University Of Evansville, 3NOAA
Chesapeake Research Consortium, 4University of
Maryland Center for Environmental Science Horn
Point Laboratory, 5Maryland Department of Natural
Resources
Project Funded by NOS MERHAB Program
21Karlodinium micrum
- A common estuarine dinoflagellate found along the
U.S. East Coast - Seasonally abundant in Chesapeake Bay
- Contributed to several fish kills in Chesapeake
Bay - Significant blooms confined to a relatively
narrow range of salinity and temperature
Photomicrograph of the dinoflagellate Karlodinium
micrum.
22K. micrum Nowcasting Procedure
- Estimate current surface salinity and temperature
fields - Georeference salinity and SST fields
- Apply habitat model
- Generate image illustrating the relative
abundance of K. micrum
Relative Abundance of K. micrum
23Habitat Model
- Neural Network (NN) employs sea surface
temperature, salinity and month to predict the
relative abundance of K. micrum at low, medium
and high or bloom concentrations - NN trained with samples (n 151) of in-situ K.
micrum abundance and various environmental
variables - A test data set (n 81) was extracted from the
available data to assess the models performance
24Schematic Representation ofNeural Network
Hidden Layer
Output Layer
Input Layer
25Issues and Advantages of Neural Networks
- Issues
- Black Box
- Advantages Uses
- Useful for representing and processing inexact
and sparse data and for performing approximate
reasoning over uncertain knowledge and
ill-defined problems - Useful in discerning patterns and relationships
- No a-priori distribution assumed
26K. micrum Neural Network Performance
27Nowcast vs. In-Situ Comparison
May 23-26, 2004 - In-situ
May 27, 2004 - Nowcast
0-10 cells/ml 10-2000 cells/ml gt2000 cells/ml
28Nowcast WWW Sites
Sea Nettle and K. micrum nowcasts are generated
daily and are available on the World Wide Web.
http//coastwatch.noaa.gov/seanettles http//coast
watch.noaa.gov/cbay_hab/index.html
29Future Directions and Work
- Continue nowcast validation and refine habitat
models of Chrysaora and Karlodinium - Develop habitat models for additional HAB species
in Chesapeake Bay - Incorporate additional environmental variables
into habitat models and nowcast system to enhance
HAB prediction capability - Generate historical distribution patterns of
occurrence and relative abundance from
retrospective salinity and temperature to
document interannual variability
30Issues With Empirical Approach
- Empirical models are specific for each location
and population - Development of empirical models require
sufficient number of samples - Species acclimate to environment, i.e. habitat
model may change
31Regional Ecosystem Modeling
- Objective Develop a fully integrated,
bio-physical model of Chesapeake Bay and its
watershed that assimilates in-situ and
satellite-derived data. - Purpose
- Near-Real Time Applications Nowcasting and
forecasting of marine organisms, ocean health,
and coastal conditions - Climate Research Estimating effect of climate
change on the health of coastal marine ecosystems - Partners NOAA, CICS-ESSIC, other UMD
departments, Meteorology, and programs, e.g.
UMCES.
SeaWiFS True-Color Image of Mid-Atlantic
Region from April 12, 1998. Image provided by
the SeaWiFS Project, NASA/Goddard Space Flight
Center and ORBIMAGE
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35Regional Ecosystem ModelPlans Objectives
- Develop transportable modeling system that can be
modified for other regions - Chesapeake Bay used as test bed site due to
extensive in-situ data for verification - Employ satellite imagery in system for
monitoring, model forcing and data assimilation
to permit use in locations where in-situ assets
are limited
36Advanced Study Institute for Environmental
Prediction
- Institute dedicated to research on environmental
prediction and monitoring - Perform research and provide core support to
determine what present and future observations
need to be sustained beyond numerical weather
prediction in support of Earth system predictive
models, crops models, and predictive disease
models -
- Staffed by personnel from NOAA, NASA Goddard, and
the University of Maryland - 1.5M budgeted for Institute in FY06 2006
Science, State, Justice and Commerce
Appropriations conference report
37Thank You!
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39Interannual Variability
Probability of Encountering C. quinquecirrha
July 29, 1999
July 25, 1996
Likelihood of Encountering C. quinquecirrha in
July 1996 and 1999
40Vibrio cholerae
- Presence predicted as function of water
temperature and salinity (Louis et al., 2003) - Association with plankton
Electron photomicrograph of Vibrio cholerae
curved rods with polar flagellum.
http//microvet.arizona.edu/Courses/MIC420/lecture
_notes/vibrio/em.html