Title: Modeling Bird Migration in Changing Habitats
1Modeling Bird Migration in Changing Habitats
- James A. Smith NASA GSFC
- Jill L. Deppe UMBC GEST
2Outline
- Where weve been -- Where we are now
Where were going - Some technical aspects of our work
- How were going about it
- Modeling
- Calibration
- Validation Approach
- Phenotypic plasticity scenario
- Wrap-up
3Where Weve Been
Spherical Birds
Myiarchus nasaii
4Where We Are Now
5Where Were Going
Use primarily a mechanistic approach to
understand how migrating organism respond to
changes in their environment
What are the impacts of resulting changes in the
quality, location, and quantity of
stopover habitat?
What is the coupling between timing of migration
and key environmental processes?
6 Technical challenge
- Our animals are completely mobile and free to
move anywhere -
- At 10 min resolution, there are over 100,000
candidate stopover locations in NA -
-
- (Previous research limited to few, fixed
- stopovers, e.g. 50)
-
7Scientific Aspect
- Were attacking the en-route migration problem
- Our organisms move through a changing
spatio-temporal environment - (Most research deals with spring migration, few
address winter we are model both) -
8Characteristics
- Individual based biophysical model
- Movement behavior and decision rules
- Daily time step
- Arbitrary geographic grid
- Simulate the migration routes, timing and energy
budgets of individual birds under dynamic weather
and land surface conditions - (Driving variables from satellite and numerical
weather prediction models)
9Changing habitat
- Exploring two avenues
- One is data driven using dynamic landscape layers
derived from remote sensing and bird location
records - Second is a functional Jarvis type approach
similar to how people model stomatal resistance
again using satellite/climate models
(Hybrid)
10Effective Fuel Deposition Rate (FDR)
- Ecological niche modeling
Max Ent
11Functional approach
- FDR Fopt Æ’(NDVI) f(soil moist)
- Scale between 0 and maximum observed in field
12Evolutionary learning
Initialize a population with random candidate
solutions and then repeatedly expose the
population to the environment, calculating
fitness of survivors, reproducing and
selecting individuals for the next population
Reproduction
Currently Pseudo Maybe Natural Later
Group
Stopover behavior
Endogenous direction
13Evolutionary learning
Fitness (50th percentile)
Generations
14Consistent and Plausible
Bird banding data Survey data at stopovers Stable
isototpe analysis Telemetry data
Bird Hydrographs
15Phenotypic Plasticity
- Migrate birds through a non-limiting landscape
- Then
- Fly them over more natural landscapes
- i) Without relearning
- ii) With ability to adapt their behavior
16Dynamic Habitat
- Monthly Landscape Features
- i) Maximum Number of Days with Ground Frost (10)
- ii) Effective FDR / Stop overs scaled to NDVI
- North American Topographic Barrier
- (2000 meters --- mainly impact in Rocky
Mountains) -
Average over dry years 1982-1988
Palmer Index
17Non Limiting Landscape
18 No Learning Adaptation
Shifts in Pattern
19 No Learning Adaptation
Change in Stop over Strategy
20 No Learning Adaptation
Increase in Fitness Distribution
21Wrap-Up
- Modeling and simulation test bed coming along
fine - Developing evidence of plausibility and
consistency - Have linkages with an AIST GMU project (Liping
Di) pragmatics for linking models to satellite
and data systems - ( 540 met files (3 dry years 3 wet years ) x
90 days for wetland study -
22Publications
M. Wikelski, R.W. Kays, N.J. Kasdin, K. Thorup,
J.A. Smith and G.W. Swenson, Jr.. 2007. Going
wild what a global small-animal tracking system
could do for experimental biologists. Journal
of Experimental Biology 210 181-186. J.A. Smith
and J.L. Deppe. 2007. Simulating bird migration
using satellites and Biophysics. Proc. Of the
IASTED Symposium on Environmental Modeling and
Simulation, 5096-11. J.L. Deppe, K. Wessels,
and J.A. Smith. 2007. Alaska at the crossroads of
migration Space-based ornithology. Alaska Park
Science, 653-58. J.A. Smith and J.L. Deppe.
2008. Simulating the effects of wetland loss and
inter-annual Variability of the fitness of
migratory bird species. IEEE IGARSS J.A. Smith
and J.L. Deppe. 2008. Space-based
ornithologystudying bird migration and
environmental change in North America. SPIE
ERS08, Remote sensing for agriculture, ecosystems,
and hydrology.