1 / 52

Embedding population dynamics models in inference

Embedding population dynamics models in inference. S.T. Buckland, K.B. Newman, L. Thomas and J Harwood (University of St Andrews) Carmen Fern á ndez (Oceanographic Institute, Vigo, Spain).

makoto
Download Presentation

Embedding population dynamics models in inference

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Embedding population dynamics models in inference S.T. Buckland, K.B. Newman, L. Thomas and J Harwood (University of St Andrews) Carmen Fernández (Oceanographic Institute, Vigo, Spain)

  2. AIMA generalized methodology for defining and fitting matrix population models that accommodates process variation (demographic and environmental stochasticity), observation error and model uncertainty

  3. Hidden process models Special case: state-space models (first-order Markov)

  4. States We categorize animals by their state, and represent the population as numbers of animals by state. Examples of factors that determine state: age; sex; size class; genotype; sub-population (metapopulations); species (e.g. predator-prey models, community models).

  5. States Suppose we have m states at the start of year t. Then numbers of animals by state are: NB: These numbers are unknown!

  6. Intermediate states The process that updates nt to nt+1 can be split into ordered sub-processes. e.g. survival ageing births: This makes model definition much simpler

  7. Survival sub-process Given nt: NB a model (involving hyperparameters) can be specified for or can be modelled as a random effect

  8. Survival sub-process Survival

  9. Ageing sub-process No first-year animals left! Given us,t: NB process is deterministic

  10. Ageing sub-process Age incrementation

  11. Birth sub-process Given ua,t: New first-year animals NB a model may be specified for

  12. Birth sub-process Births

  13. The BAS model where

  14. The BAS model

  15. Leslie matrix The product BAS is a Leslie projection matrix:

  16. Other processes Growth:

  17. The BGS model with m=2

  18. Lefkovitch matrix The product BGS is a Lefkovitch projection matrix:

  19. Sex assignment New-born Adult female Adult male

  20. Genotype assignment

  21. Movement e.g. two age groups in each of two locations

  22. Movement: BAVS model

  23. Observation equation e.g. metapopulation with two sub-populations, each split into adults and young, unbiased estimates of total abundance of each sub-population available:

  24. Fitting models to time series of data • Kalman filter Normal errors, linear models or linearizations of non-linear models • Markov chain Monte Carlo • Sequential Monte Carlo methods

  25. Elements required for Bayesian inference Prior for parameters pdf (prior) for initial state pdf for state at time t given earlier states Observation pdf

  26. Bayesian inference Joint prior for and the : Likelihood: Posterior:

  27. Types of inference Filtering: Smoothing: One step ahead prediction:

  28. Generalizing the framework Model prior Prior for parameters pdf (prior) for initial state pdf for state at time t given earlier states Observation pdf

  29. Generalizing the framework by Replace where and is a possibly random operator

  30. Example: British grey seals

  31. British grey seals • Hard to survey outside of breeding season: 80% of time at sea, 90% of this time underwater • Aerial surveys of breeding colonies since 1960s used to estimate pup production • (Other data: intensive studies, radio tracking, genetic, counts at haul-outs) • ~6% per year overall increase in pup production

  32. Estimated pup production

  33. Questions • What is the future population trajectory? • What types of data will help address this question? • Biological interest in birth, survival and movement rates

  34. Empirical predictions

  35. Population dynamics model • Predictions constrained to be biologically realistic • Fitting to data allows inferences about population parameters • Can be used for decision support • Framework for hypothesis testing (e.g. density dependence operating on different processes)

  36. Grey seal state model:states • 7 age classes • pups (n0) • age 1 – age 5 females (n1-n5) • age 6+ females (n6+) = breeders • 48 colonies – aggregated into 4 regions

  37. survival age movement breeding na,c,t-1 us,a,c,t ui,a,c,t um,a,c,t na,c,t Grey seal state model: processes • a “year” starts just after the breeding season • 4 sub-processes • survival • age incrementation • movement of recruiting females • breeding

  38. Grey seal state model: survival • density-independent adult survivalus,a,c,t ~ Binomial(na,c,t-1,φadult) a=1-6 • density-dependent pup survivalus,0,c,t ~ Binomial(n0,c,t-1, φjuv,c,t)where φjuv,c,t= φjuv.max/(1+βcn0,c,t-1)

  39. Grey seal state model:age incrementation and sexing • ui,1,c,t ~Binomial (us,0,c,t , 0.5) • ui,a+1,c,t = us,a,c,t a=1-4 • ui,6+,c,t = us,5,c,t + us,6+,c,t

  40. Grey seal state model:movement of recruiting females • females only move just before breeding for the first time • movement is fitness dependent • females move if expected survival of offspring is higher elsewhere • expected proportion moving proportional to • difference in juvenile survival rates • inverse of distance between colonies • inverse of site faithfulness

  41. Grey seal state model:movement • (um,5,c→1,t, ... , um,5,c→4,t) ~ Multinomial(ui,5,c,t, ρc→1,t, ... , ρc→4,t) • ρc→i,t=θc→i,t / Σjθc→j,t • θc→i,t = • γsf when c=i • γddmax([φjuv,i,t-φjuv,c,t],0)/exp(γdistdc,i) when c≠i

  42. Grey seal state model:breeding • density-independent • ub,0,c,t ~ Binomial(um,6+,c,t , α)

  43. Grey seal state model: matrix formulation • E(nt|nt-1, Θ) ≈ BMtAStnt-1

  44. Grey seal state model:matrix formulation • E(nt|nt-1, Θ) ≈ Ptnt-1

  45. Grey seal observation model • pup production estimates normally distributed, with variance proportional to expectation: y0,c,t~ Normal(n0,c,t , ψ2n0,c,t)

  46. Grey seal model: parameters • survival parameters: φa, φjuv.max, β1 ,..., βc • breeding parameter: α • movement parameters: γdd, γdist, γsf • observation variance parameter: ψ • total 7 + c (c is number of regions, 4 here)

  47. Grey seal model: prior distributions

  48. Posterior parameter estimates

  49. Smoothed pup estimates

  50. Predicted adults

More Related