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Modelling Marine Ecosystems Mick Follows Dept of Earth, Atmospheric and Planetary Sciences, Massachusetts Institute of Technology http://ocean.mit.edu/~mick/Downloads.html What is the marine ecosystem? • Food web • Focus on phytoplankton Bacteria, archaea Why model marine ecosystems? • To understand and quantify global carbon cycle and relationship to climate – e.g. how much carbon is sequestered in the ocean due to the formation of sinking organic particles? • To understand and describe fundamental ecological controls on marine ecosystem and its evolution – e.g. why do particular species or functional types of phytoplankton occupy particular ocean regions? Where is phytoplankton biomass in the oceans? • Satellite based observations of Chlorophyll-a, annual cycle 2005 (MODIS) Where is phytoplankton biomass in the oceans? • Upwelling regions of tropics and subpolar oceans bring nutrients to surface, sustaining high productivity Seasonal cycle of “plant pigment” at Georges Bank – in situ observations (Riley, 1946) Phytoplankton abundance month Modelling Marine Phytoplankton Riley (1946) dP = P μ−K r −gZ dt Modelling Marine Phytoplankton Riley (1946) dP = P μ−K r −gZ dt P = phytoplankton biomass (mol C m-3) Modelling Marine Phytoplankton Riley (1946) dP = P μ−K r −gZ dt Growth rate (s-1) P = phytoplankton biomass (mol C m-3) Modelling Marine Phytoplankton Riley (1946) dP = P μ−K r −gZ dt Growth rate (s-1) P = phytoplankton biomass (mol C m-3) Respiration rate (s-1) Modelling Marine Phytoplankton Riley (1946) dP = P μ−K r −gZ dt Growth rate (s-1) P = phytoplankton biomass (mol C m-3) Respiration rate (s-1) Grazing g = grazing rate Z = abundance of grazers Riley’s (1946) model of seasonal cycle at Georges Bank observed Phytoplankton abundance, P modelled dP = P μ−K r −gZ dt month Growth rate, μ , depends on environmental conditions • Information from laboratory cultures Growth rate (day-1) Chisholm lab, McCarthy (1981) Temperature light intensity nutrient Global marine ecosytem model • Embed a model like Riley’s in a description of ocean circulation, temperature, nutrient and light distributions • Capture broads regional and seasonal dynamics • Understand nutrient and light controls Captures regional and seasonal patterns of biomass and productivity modelled 0-50m biomass (uM N) Stephanie Dutkiewicz Model captures observed regional and seasonal patterns Remote Chl-a observations modelled biomass Reveals environmental regulation of primary production Iron limited Light limited Nitrogen limited Current Question: What regulates phytoplankton “community structure”? coccolithophores (CaCO3 plates) Prochlorococcus, Synechococcus 4 μm 20 μm diatoms (Silicate frustule) 0.5 μm Small, buoyant, locally recycled. Inefficient export of organic carbon Large, blooming, aggregating. Efficient export of organic carbon Observations of phytoplankton community structure • Pigment observations (Aiken et al, 2000) Diatoms, coccolithophores Prochlorococcus Global phytoplankton community structure (January) • Interpretations of remote ocean color observations (Alvain et al, 2006) January: dominant functional types from SeaWifS (Alvain et al, 2005) red Green yellow blue - diatoms - Prochlorococcus - Synechococcus-like - includes coccolithophores What determines phytoplankton community structure? physical and chemical environment genetics and physiology competition predation selection ecosystem structure and function How can we reflect this in mathematical model? • Seed model with many potentially viable phytoplankton types (c.f. Riley’s model with only one) • Competition for resources, ability to avoid predation, etc… determine “fitness” of each phytoplankton type • Model “self-organizes” selecting for phytoplankton with “fittest” physiological characteristics Follows,Dutkiewicz, Grant and Chisholm (Science, March 30th 2007) How can we reflect this in a model? DP j = P j μ j −k Rj −g j Z Dt • Represent a large variety of phytoplankton types (index j) • Provide characteristics (μ, KR, g) for each type by random draw from ranges determined in lab • Explicit “natural selection” in model brings to the fore the “fittest” types for model environment Follows, Dutkiewicz, Grant and Chisholm (Science, March 30th 2007) Modeled ecosystem structure Characterize dominant types in terms of real-world functional types Prochlorococcus analogs Synechococcus & small eukaryotes . Diatoms Other large eukaryotes January: dominant functional types from SeaWifS (Alvain et al, 2005) red green yellow blue MODEL: January dominant functional types red green blue brown - diatoms - Prochlorococcus - other “small” - other “large” - diatoms - Prochlorococcus - Synechococcus-like - haptophytes What now? • Use model ecosystem as platform to explore and test ecological theories • Explore relationships between ecosystem, nutrient cycles and climate change Summary and Outlook • Mathematical and numerical models of marine ecosystems are developed to help understand marine ecology and biogeochemical cycles • Recent models embrace complexity of ecosystem and help us understand relationship of “community structure” and environment • New, genetically based observations of marine ecosystems provide new opportunities and challenges