1 / 16

A biodiversity-inspired approach to marine ecosystem modelling

A biodiversity-inspired approach to marine ecosystem modelling. Jorn Bruggeman Bas Kooijman Theoretical biology Vrije Universiteit Amsterdam. It used to be so simple…. nitrogen. phytoplankton. Le Quére et al. (2005): 10 plankton types. NO 3 -. NH 4 +. assimilation. DON.

lerato
Download Presentation

A biodiversity-inspired approach to marine ecosystem modelling

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. A biodiversity-inspired approach to marine ecosystem modelling Jorn Bruggeman Bas Kooijman Theoretical biology Vrije Universiteit Amsterdam

  2. It used to be so simple… nitrogen phytoplankton Le Quére et al. (2005): 10 plankton types NO3- NH4+ assimilation DON mineralization death predation zooplankton detritus labile death stable

  3. Step 1The “omnipotent” population • Standardization: one model for all species • Dynamic Energy Budget theory (Kooijman 2000) • Species differ in allocation to metabolic strategies • Allocation parameters: traits phototrophy heterotrophy biomass predation calcification N2 fixation

  4. Step 2Continuity in traits Phototrophs and heterotrophs: a section through diversity bact 1 heterotrophy bact 2 bact 3 ? ? ? mix 1 mix 2 mix 3 ? phyt 1 mix 4 ? phyt 2 ? phyt 2 phyt 3 phototrophy

  5. Step 3“Everything is everywhere; the environment selects” • Every possible species present at all times • implementation: continuous immigration of trace amounts of all species • similar to: minimum biomass (Burchard et al. 2006), constant variance of trait distribution (Wirtz & Eckhardt 1996) • The environment changes because of • external forcing, e.g. periodicity of light, mixing • ecosystem dynamics, e.g. depletion of nutrients • Changing environment drives succession • niche presence = time- and space-dependent • trait value combinations define species & niche • trait distribution will change in space and time

  6. Trait 1: investment in light harvesting Trait 2: investment in organic matter harvesting In practice: mixotroph nutrient maintenance + light harvesting nutrient + structural biomass + organic matter harvesting organic matter death + organic matter

  7. Setting • General Ocean Turbulence Model (GOTM) • 1D water column • depth- and time-dependent turbulent diffusivity • k-ε turbulence model • Scenario: Bermuda Atlantic Time-series Study (BATS) • surface forcing from ERA-40 dataset • initial state: observed depth profiles temperature/salinity • Parameter fitting • fitted internal wave parameterization to temperature profiles • fitting biological parameters to observed depth profiles of chlorophyll and DIN simultaneously

  8. Result: evolving trait distribution

  9. Results: nutrient, biomass, detritus

  10. Results: autotrophy & heterotrophy

  11. Simpler trait distributions • Before: “brute-force” • 2 traits  20 x 20 grid = 400 state variables (‘species’) • flexible: any distribution shape (multimodality) possible • high computational cost • Now: simplify via assumptions on distribution shape • characterize trait distribution by moments: mean, variance, etc. • express higher moments in terms of first moments (moment closure) • evolve first moments E.g. 2 traits  2 x (mean, variance) = 4 state variables

  12. Moment-based mixotroph variance of allocation to autotrophy mean allocation to autotrophy nitrogen biomass detritus mean allocation to heterotrophy variance of allocation to heterotrophy

  13. Approximation visualized

  14. Results: data assimilation DIN chlorophyll

  15. Conclusions • Simple mixotroph + biodiversity model shows • Time-dependent species composition: autotrophic species (e.g. diatoms) replaced by mixotrophic/heterotrophic species (e.g. dinoflagellates) • Depth-dependent species composition: subsurface chlorophyll maximum • Good description of BATS chlorophyll and DIN • Modeled biodiversity adds flexibility “in a good way”: • Moments represent biodiversity  mechanistic derivation, not ad-hoc • Direct (measurable) implications for mass- and energy balances

  16. Outlook • Selection of traits, e.g. • Metabolic strategies • Individual size • Biodiversity-based ecosystem models • Rich dynamics through succession rather than physiological detail • Use of biodiversity indicators (variance of traits) • Effect of biodiversity on ecosystem functioning • Effect of external factors (eutrophication, toxicants) on diversity

More Related