Title: Dynamic Global Vegetation Models DGVMs
1Dynamic Global Vegetation ModelsDGVMs
- Jed O. Kaplan and Stephen SitchEuropean
Commission Joint Research Centre, Ispra,
ItalyMet Office (JCHMR), Wallingford, U.K.
2Acknowledgments
- TERACC
- Colin Prentice
- Marie Curie Fellowships program
3Overview
- History and development
- Fundamentals and model design
- Evaluation
- Example applications
- Future research perspectives
4History and development of DGVMs
- Impetus for the development of a DGVM
- Terrestrial biosphere provides critical services
to humanity food, water, shelter, psychological
benefits - Biosphere plays a major role in the global carbon
cycle with a timescale relevant to human
activities (mean residence time of 20yr) - Anthropogenic alteration of the atmosphere and
biosphere has have been very large since
industrialization
5History and development of DGVMs
- DGVM development integrated four groups of
processes
Plant geography
D G V M
Köppen, Box, MAPSS
Biogeochemistry
Miami, TEM, Century
Biophysics
SiB, BATS, LSM
Vegetation Dynamics
JABOWA, Foret, FORSKA
6History and development of DGVMs
- Plant geography
- First observations of relationship between
vegetation and climate from von Humboldt and
Schimper (19th century) - Empirical schemes from Köppen, Holdridge followed
by the works of Shugart and Emanuel (1980s,
including the first 2xCO2 scenario). - The PFT concept outlined by Raunkiaer (1st half
of 20th century) and developed by Box (1981) into
the first predictive biogeography models - Woodward, Prentice, Nielson et al. all developed
biogeography models at the end of the 80s
7History and development of DGVMs
- Plant Physiology and Biogeochemistry
- First global relationships between environment
and productivity 1960s - IBP, Walter, and Lieth (Miami Model)
- TBMs to simulate NPP beginning early 90s
- TEM, Century, Forest/BIOME-BGC, CASA, DOLY
- Hybrid models (BIOME2-3-4)
8History and development of DGVMs
- Vegetation dynamics
- Exposition of the gap/mosaic idea (early 20th
century) - Development of Gap models JABOWA, FORET,
LINKAGES, FORSKA, SORTIE - Challenge for computational efficiency in order
to look at larger spatial scales - Development of statistical representation for
individual dynamics (e.g. ED model)
9History and development of DGVMs
- Biophysics
- Climate modelling called for a realistic
representation of the land surface, particularly
roughness, albedo, heat and water transfer - Led to the development of SVAT (80s, 90s)
- SiB, BATS first explicit SVAT, followed by many
others with higher complexity - DGVMs as a SVAT IBIS, Triffid
- Later included carbon feedbacks
10Fundamentals and design of DGVMs
- Model architecture
- NPP
- Plant growth and vegetation dynamics
- Hydrology
- Heterotrophic respiration and SOM dynamics
- Nitrogen cycling
- Disturbance
11DGVM architecture
Bonan et al. 2003
Daily
Annual
Minutes to day
12NPP
- Leaf-level photosynthesis using Farquhar et al.
or derivatives (Collatz et al., Haxeltine
Prentice, etc.) - C uptake is optimized relative to water
availability through canopy conductance,
incorporating photosynthesis, canopy biophysics,
and hydrology - Light uptake and nutrient distribution simplified
to one canopy level (exceptionally more) - Autotrophic respiration function of temperature
(Q10 or Arrehenius function) or canopy CN ratio
13Growth and dynamics
- Driven by NPP
- Allocated to leaves, stems, roots
- Establishment and mortality are parameterized
boundary conditions - Use the population average
- Expressed through allocation to state variables
of fractional coverage, individual size, density - Flexible allocation in response to changing
environmental conditions
14Mediterranean evergreen forest
15Crown area
16Individual density
17Southern boreal forest
18Hydrology
- One, two or multi-layered soil characterization
(reliable data is a limitation) - Two layers is usually minimum for bringing out
distinctions between trees and grass - Parameterizations for saturated vertical flow,
runoff, and drainage - Exceptionally, DGVMs may explicitly simulate
snow, frost, and permafrost, wetlands, and
horizontal transport of water (among others)
19SOM dynamics
- Dead organic matter partitioned into
rate-specific pools based on litter quality - Two to three pools for simpler models, eight or
more for DGVMs with Century scheme - Respiration often represented as a function of
temperature and moisture (Q10 or Arrhenius)
20N cycling
- N content (or CN ratio) carried as a state
variable in each biomass compartment - Simple scaling of gross uptake based on
optimization hypothesis - Or simulation of actual soil N mineralization and
immobilization (Century-based schemes) - N-fixation generally not considered
21Disturbance
- Major natural disturbances are fire, windthrow,
disease, insects - Most models only consider fire
- Fire modeled as a probability function of fuel
availability, moisture, and stochastic processes - Human-induced fire may be included
22Evaluating DGVMs through obeservation and
experiment
- NPP
- Remotely sensed greenness
- Atmospheric CO2 concentrations
- Runoff
- CO2 and water flux measurements
- FACE experiments
23Remotely sensed greenness
Sitch et al. 2003
24Atmospheric CO2 concentrations
Sitch et al. 2003
25Runoff
Sitch et al. 2003
26Widespread applications
- Holocene changes in atmospheric CO2
- Boreal greening and contemporary carbon cycle
- Future carbon cycle projections
- Carbon-climate feedbacks to future climate change
- Land-use change effects
27Holocene carbon dynamics
Ridgwell et al. 2003
Kaplan et al. 2002
28Future C cycle projections
Cramer et al. 2001
29Global wetland methane emissions 1991-2000
Kaplan et al., in prep.
30Future research perspectives and priorities
- Plant functional types
- To now, PFT classification has been arbitrary,
without a standard parameter set - More PFTs may help to better simulate ecosystem
response to change - Nitrogen cycle
- Much more can be done
- Plant dispersal and migration
- Not considered, yet a common criticism
31Future research perspectives and priorities
- Multiple nutrient limitations
- Going beyond N - deposition and cycling of P,K,S
- Agricultural crops and forest management
- Crop models (PFTs) may be incoporated into a DGVM
- Forest management can be prescribed
- Grazers and pests
- Insect outbreaks are major source of disturbance
- Grazers natural and anthropogenic
32Future research perspectives and priorities
- Simulating total atmospheric composition
- Wetlands
- Wetland PFTs
- Modified hydrology schemes
- Horizontal routing of water
- Biogenic trace gases and aerosols
- Emissions of BVOC, black carbon, aerosols
- Models exist which may be incorporated into DGVMs
33Thank you
34Interannual variability