Using statistical models to study climate-disturbance-plant interactions Andrew Latimer – Adam Wilson – Cory Merow –
Mediterranean climate Key features: warm temperate, with cool wet winters and hot dry summers.
Climate change effects? The obvious ones: Warmer winter -> more growth Hotter summer -> more fire
Complications May raise growth rate while hammering other parts of life cycle (e.g. survival) Fire-plant feedbacks can produce rapid shift -> fuel starvation -> flammability
Feedback example – Sierra forest When feedbacks positive, slight shift in disturbance regime can cause state change Moderate fire Less fuel, milder fire Intense fire More shrubs, intense fire (-) (+) e.g. Collins et al. (2009) Ecosystems Photos: Jens Stevens e.g. Stevens et al. (2013) Can.J.For.Res.
No fire (fire suppressed) No fire (plant growth suppressed) Fire-plant interaction example: South African fynbos Fire
More frequent fire can eliminate populations 8-year intervals4-year intervals Population size between fires Stevens & Beckage, Oecologia 2010
Fire Climate Plant species, communities Growth, Survival etc. Ignition and spread Disturbance Regrowth of Fuel, flammability
Challenges – ecological data Scales of process can be large – Field data collection is almost always not Interpolation and extrapolation (worse in projections) Environment Current Future
Challenges – environmental data Highly multivariate environmental measurements – Sensor outputs – Model outputs – Heterogeneous data sources Multivariate responses – Community: Many species, life stages – Individual: phenotypes, genotypes What’s important and why? – Q: Are the factors on both sides sparse?
Outline 1)A little more introduction 2)Fire return times 3)Biomass regrowth 4)Demography
Study system for this talk Cape Floristic Region of South Africa Fynbos shrubland interfacing with karroo desert Evolutionary radiation -> very high plant diversity and endemism Diversity concentrated in ~30 lineages over MY
CFR climate change Change per decade (mm) Historical patterns Recent change ( )
Climate change projections CMIP5 multimodel average RCP8.5 Stippling: ≥ 8/11 models agree on sign Downscaled projections: Adam Wilson
Thomas et al. (2004) Nature. Midgley et al. (2006). Diversity & Distributions.
Example 1: Fire occurrence What affects fire frequency? Fire Climate Plant species, communities Plant species, communities Growth, Survival etc. Ignition and spread Disturbance Regrowth of fuel
Cape region fire data Thanks to Helen DeKlerk
Fire data preparation Overlay ~2km x 2km grid on reserve areas Seasonal time resolution (3 months) Cell considered “burned” if >50% area burned Voxels of weather data: – 80 seasons x 2611 cells = 208,880 voxels
Issues… Very multivariate weather data Approach: reduce dimensionality by biological intuition, hypothesis Chris Wikle: “Sensible science-based parameterizations or dimension reductions”
Issue: highly multivariate environmental data Weather station data Daily, point locations Gridded weather data Daily, ~2km grid Indices -- i.e. hypotheses Seasonal to yearly Modeling Bayesian kriging with covariates (Adam Wilson) Meetings (many…) Soil moisture model Choice of methods
Fire history data Timeline for one grid cell 1980 (beginning of record) 2000 (end of record) 14 years 6 years ? ?. fires Other hypothetical fire histories:
Nonparametric survival model Z i = observed time between a pair of fires in cell I P it : P(Z i > t | Z i > t-1) i.e. probability of “surviving” season t without a fire Probit(P) = X T β + e Climate: Long-term mean Weather: anomalies in each grid cell * season Climate index (AAO) Random effects: season, sub-region Note Alan Gelfand’s 2013 paper adding spatial random effects
Dealing with censoring Left censoring: no previous fire observed in record Unobserved p it predicted from X T β {Unobserved fire times} ~ Multinom(1-p it, t in [ ]) Gives length distribution of unobserved fire intervals # Note may inflate fire frequency because a few cells will have failed to burn in these 30 years
Wilson et al. (2010) Ecological Modelling ?
Cumulative fire probabilities Wilson et al. (2010) Ecological Modelling
Expected fire return times Wilson et al. (2010) Ecological Modelling
Importance of large-scale atmospheric circulation patterns Importance of AAO brings us back to complex multivariate problem (why AAO??) But in this case pretty clear how it works
Note trends in ozone depletion (ozone hole) associated with positive AAO – Manatsa et al. (2013) Nature Geosci. Abram, et al. (2014) Nature Climate Change doi: /nclimate2235
Part 2: modeling postfire regrowth Fire Climate Plant species, communities Plant species, communities Growth, Survival etc. Ignition and spread Disturbance Regrowth of fuel
Remote sensing: Watching plants grow from space MODIS terra NDVI data
Model Functional form that can match recovery pattern Parameters – α i : minimum NDVI – γ i : difference between min and max NDVI – λ i : recovery rate parameter – Α i : amplitude of seasonal variation
Wilson et al. in prep Wet, coastal Dry, interior ~4 years ~8 years
Spatial variation in regrowth rates Wilson et al. in prep Regrowth rate based on Threshold NDVI value (95% of max NDVI)
Tying this back to demographic models Factors related to regrowth rate Wilson et al. in prep
Projected change in recovery time Years shorter longer
Comparing recovery time to observed fire return intervals Some correspondence Slowest growing areas may be burning too often
Conclusions on fire Climate change likely to shorten fire return times And also increase regrowth rates in many areas – But: Lower warm-season precipitation in the west, hotter summers Big shifts possible – Frequent fire in slow-recovery areas – Fuel starvation and fynbos contraction (?)
Example 3: Demography Fire Climate Plant species, communities Growth, Survival etc. Ignition and spread Disturbance Regrowth of fuel Tradeoff: -- More biological detail -- MUCH less data
Focal species: Protea repens Data: Protea Atlas Project Tony Rebelo of SANBI
Goal: model population performance across region Measure across gradients Demographic rates: – Growth & Fecundity – Mortality (dead adults) – Recruitment (seedlings per parent) Issue: recruitment sites limited by fire occurrence
Analysis issues Misalignment – Growth and seed production measured at different sites from seedling recruitment Missing some steps in life cycle – Seedling emergence and survival Scaling issues raised by Jim and Alan
Integral projection model (IPM) t = time z = size at t z' = size at t+1 n t (z)= size distribution of individuals at t n t+1 (z’)= size distribution of individuals at t+1 K(z’,z)= projection kernel
Life History: Perennial shrub P(z’,z) = (survival) * (growth) F(z’,z) = (mean # flowers/plant) * (mean # seeds/flower) (establishment probability)* (offspring size) “kernel” state vector
Vital Rate Regression: Growth
Maps of mean model-estimated demographic rates
Jump into the bog of elasticity Merow et al Ecography
Mean modeled pop growth rate Merow et al Ecography If we treat this as species distribution model And assume presence predicted where λ ≥ 1.0
Predictions
Forecasts Merow et al Ecography
Conclusions Multivariate data hard to escape – Not really enough to rely on intuitions – Still left with the question: what are the interesting parts of big data sets Building some mechanism into model isn’t enough to reliably get at key transitions – Problems of underfitting and extrapolation – Can get individual processes but not their interactions
Acknowledgments UC Davis: Jens Stevens, Melis Akman Other US: John Silander (Uconn) Alan Gelfand (Duke) South Africa Tony Rebelo (SANBI) Jasper Slingsby (SAEON) Helen de Klerk (CapeNature) Field crew members: Rene Wolmarans, Bianca Lopez, Lisa Nupen Funding Sources: NSF Dimensions of Biodiversity grant DEB UC Davis Dept of Plant Sciences IPM models: Danish Research Council (via Signe Normand)
Predicting community response to extreme drought event Resample 3 kinds of plots – Long environmental gradients (spatial variation) – Time series data (15 years in 80 plots at one site) – Experimental water manipulations What kinds of responses can we predict? – Abundance of different kinds of species – Shifts in plant type or function Which kinds of data predict best?
Vital rate models Growth Average growth/year ~ Environment Survival % Survival ~Size + Environment Fecundity Flowering Probability~Size + Environment # Flowers/Individual ~Size + Environment Seeds/Flower =74 Germination = 1.1% Offspring size Size~Environment
Forecasts Merow et al Ecography
Predictions – uncertainty
Map of collection sites Jane Carlson, Nicholls State U.
Common garden experiment Collected seed from 19 source populations across gradients for a widespread species (Protea repens) Planted ~800 seedlings in common garden Measured leaf traits, working on wood traits
Genetic variation in growth rate Mean daily minimum temperature in winter (C) Plant height (cm)
Photos: Adam Wilson Eight-year old P repens Anysberg, interior dry CFR Anysberg: small stature probably reflects both genetic and plastic responses
Big evolutionary questions What drives high diversity? – Ecological speciation – Isolation on habitat islands – archipelago-like patterns – Climatic and geological stability Photo: Adam Wilson
Wilson et al. in prep
Demographic model Germinant & seedling Pre-Repro Repro- ductive Large Repro Seed release Germination & first-year survival Seedling survival Growth & Juv. Surv. Adult survival Recruitment Adult success
Data Predictor variables fecundity/ Mean annual precip. Min. July temp. Max. January temp. Precipitation seasonality Winter soil moisture days % High fertility soil % Fine texture soil % Acidic soil
Feedback example – Sierra forest When feedbacks positive, slight shift in disturbance regime can cause state change Moderate fire Less fuel, milder fire Intense fire More shrubs, intense fire (-) (+) e.g. Collins et al. (2009) Ecosystems Photos: Jens Stevens e.g. Stevens et al. (2013) Can.J.For.Res.
Example vital rate model: seed production Seedheads i,j,t ~ Poisson(λ i,j,t ) log(λ i,j,t ) = β 0 + β 1 *size i,j,t + β 2 *size 2 i,j,t + β 3 *Precip j,t
Mediterranean climate features Very dry! Less dry temperature precipitation
Priors