Title: Modelling complex communities
1Modelling complex communities measuring what
matters?
- Jim Bown, Janine Illian and John Crawford
- University of Abertay Dundee
- j.bown_at_tay.ac.uk
2The soil microbial system
- More diversity in the palm of your hand than in
the mammalian kingdom - Most important and abused ecosystem in the world
- Essential features
- Species concept not useful
- Feedback and feedforward coupling to dynamic
environment is central - Functionality
- Cant measure much (anything)
3The soil microbial system
Any ecosystem
- More diversity in the palm of your hand than in
the mammalian kingdom - Most important and abused ecosystem in the world
- Essential features
- Species concept not useful
- Feedback and feedforward coupling to dynamic
environment is central - Functionality
- Cant measure much (anything)
Most ecological theory ignores individual
variation within species groups
4The soil microbial system
Any ecosystem
- More diversity in the palm of your hand than in
the mammalian kingdom - Most important and abused ecosystem in the world
- Essential features
- Species concept not useful
- Feedback and feedforward coupling to dynamic
environment is central - Functionality
- Cant measure much (anything)
The fact that individuals both affect and are
affected by their local environment is often
ignored
5The soil microbial system
Any ecosystem
- More diversity in the palm of your hand than in
the mammalian kingdom - Most important and abused ecosystem in the world
- Essential features
- Species concept not useful
- Feedback and feedforward coupling to dynamic
environment is central - Functionality
- Cant measure much (anything)
Diversity measures do not link dynamics to
function
6The soil microbial system
Any ecosystem
- More diversity in the palm of your hand than in
the mammalian kingdom - Most important and abused ecosystem in the world
- Essential features
- Species concept not useful
- Feedback and feedforward coupling to dynamic
environment is central - Functionality
- Cant measure much (anything)
What are the key measurables and what is the
consequence of missing knowledge?
7Plant community modelling
- Our thinking on where to start
- Individual plants characterised by physiological
traits what they do - Model parameters identified through
experimentation - Individuals should exist in real space with at
least one limiting resource at differing levels - Spatial mixing is crucial
- The model should relate the behaviour of the
individuals to each other and the environment - Feed-back and feed-forward
8The most important pattern in ecology (?)
- The abundance curve is a community diagnostic
- Log-normal form
- Shape of curve remarkably conserved across
communities - Most diversity in rare species
- Most individuals belong to a few species groups
- Can we identify a link between individuals
properties and community structure?
Number of species
rare
common
Individuals per species
9Our ecosystem model
- Define individuals in terms of functional traits
describing - how environment affects growth and reproduction
- how the individual affects its environment
- Parameters that describe these traits form a
multi-dimensional trait space
10Biodiversity as a distribution in trait space
Diversity characterised by shape of
trait-space over time
11Model structure
- Spatially explicit
- individuals interact with neighbours over
resource base - resource substrate may be spatially heterogeneous
- Process-based
- generic physiological processes parameterised by
traits - Competition for resource and space in time
- resource through uptake strategies
- space through survival/ reproductive strategies
- Limitations clonal reproduction, no seed bank
- Later
12Sample parameterisation
- Here, Scottish grassland species -
- Rumex Acetosa
- could be anything
- Currently working with OSR
13Process of estimating trait distributions from
data
Species suite of trait distributions Individual
in a species assigned trait values from
corresponding distribution randomly - genuine
ibm
Fitting a distribution
14Some results
- Predict the same form for individuals as is
observed for species - Relative abundance is governed by individual
behaviour
15Evolution of the abundance curve
t - time cycle in the model simulation
- System moves from log-normal indicative of
short-term dynamics to power-law associated with
long-term
16Evolution of ranks of plant types in time
- Ranking of plant types is not constant in time
17Simplified model via sensitivity analysis
Full set of traits 1. Essential uptake 2.
Spatial distribution of uptake 3.
Requested/essential uptake ratio 4. Structural
store ratio 5. Surplus store release rate 6.
General store release rate 7. Development
dependent reproduction relation 8. Time dependent
reproduction relation 9. Dispersal pattern 10.
Fecundity/store relation 11. Survival threshold
and period 12. Probability of death due to
external factors
- Simplified set
- Time to reproduction
- Fecundity vs. time to reproduction relation
- Random death
The fecundity vs. time to reproduction
relationship from model Fecundity slope(time
to reproduction) C
18What is it that promotes diversity?
- Compromise
- individuals arent good at everything
- traits are traded-off
- Form of trade-offs
- dictates shape of abundance distribution
- governs the stability of ecosystems
- Trade-offs link individual to community
E. Pachepsky et al., 2001. Nature, 410, 923-926
19Key points
- Model results consistent with general
experimental observations - Model operates in terms of individuals and
communities - link not blurred by pseudo-processes or spatial
averaging - e.g. population growth, birth rate
- transparency not without cost
- difficult to interpret
- sensitivity analysis allows collapse to driving
traits - in R. acetosa time to reproduction and fecundity
- Those driving traits are where to focus
subsequent measurements (iterative cycle) - They matter the most
20But
- What about more general, complex case
- Wider range in physiological form more types,
memory in the system, larger numbers - Raises key challenges
- We are trying to build a toolkit to address those
challenges - to work out via modelling what it is we should
concentrate on experimentally to better inform
our understanding to improve our models etc.
21Challenges in complexity
- Spatial analysis of functional types
- Spatial point process extension
- Parameter space
- AI search to link scales
- Individual and community
- Memory in the system
- Gene flow (in Oil Seed Rape)
- Seed banking (not covered here)
- Up-scaling and model abstraction
22Spatial analysis toy example
- consider two sets of artificial patterns
- clustered
- random
- method should group these accordingly
23toy example
- calculate pair correlation function
- smooth functions using b-splines
24toy example
- find 2 representative functions, i.e. PCs
- linear comb.
- group according to similarity to PCs using
hierarchical clustering
25A more typical data set
26Searching trait (parameter) space
- Bi-modal search algorithm developed
- identify combinations of individuals that
maintain diversity (community-scale) - compacted descriptions of spatial mixing
- Patterns across individuals ? trait trade-offs
- Also (in)sensitivities to parameter values
- Trait-space is
- 12 dimensional 1 dimension per trait
- Dont know which traits matter most a priori
- Large wide range of values per trait
- Complex interrelations amongst traits
- Two modes of search
- Genetic algorithm for rough mapping
- Hill climbing for hot spots
27Tentative results
- Search able to identify communities that maintain
biodiversity work in progress - Fine-grained search is needed for this
28Gene flow
29Field experiment and genetics
- All plants in sink and control genotyped
- Rates of gene flow
- Tracking of individuals
- All plants in sink and control phenotyped
- Time to germination
- Time to flowering
- Fecundity
- Known crosses studied in (physiological) detail
Source 30m x 30m
Control
Sink 3m x 30m
Prevailing wind
Phenotype profiling SCRI Genotype profiling CEH
Dorset
30Gene flow
P( a x, y)
T1
y
x
a
a
T2
T3
31Up-scaling and model abstraction
- Requirement
- Scale up from 104 to 106-109 individuals without
losing essential detail - Opportunities
- I-B-M characterises local dynamics
- Statistical representation of spatial mixing over
time - AI search to link individuals to emergent,
community scale behaviour - Patterns in those links (should) reveal trait
trade-offs - Sensitivities insensitivities in parameter sets
- Reformulate model as an abstraction wrt
trade-offs - Any ideas?
32Acknowledgements
- Prof. Geoff Squire
- Scottish Crop Research Institute
- Contributing work
- Alistair Eberst, Ruth Falconer, Michael Heron,
Claire Johnstone, SIMBIOS, UAD - Joanna Bond, Rebecca Mogg, Samantha Hughes, CEH
Dorset - BBSRC, NERC, EPSRC and DEFRA funding