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Evolution of dispersal in heterogeneous environments Ace North, Stephen Cornell & Otso Ovaskainen All species disperse (=move) at some part of their life-cycle. The ability to disperse influences the demographic dynamics of especially those species that live in fragmented landscapes. In turn, the structure of the landscape is expected to impose selection on dispersal. How does evolution of dispersal depend on the interplay between landscape structure and species properties? An example of a species living in fragmented landscapes – the Glanville fritillary metapopulation One of the most studied systems in population biology, with >100 papers and several books American Naturalist, Analytica Chimica Acta , Analytical And Bioanalytical Chemistry, Annales Zoologici Fennici, Annals Of The Entomological Society Of America, Basic And Applied Ecology, Behavioral Ecology, Biological Conservation, Biological Journal Of The Linnean Society, Biological Reviews, Bulletin Of Mathematical Biology, Conservation Biology, Ecography, Ecological Applications, Ecological Entomology, Ecological Modelling, Ecology, Ecology Letters, Entomologica Fennica, European Physical Journal B, Evolution, Evolutionary Ecology, Journal Of Animal Ecology, Journal Of Applied Ecology, Journal Of Applied Probability, Journal Of Chemical Ecology, Journal Of Differential Equations, Journal Of Natural History, Journal Of Theoretical Biology, Landscape Ecology, Mathematical Biosciences, Molecular Ecology Notes, Nature, New Zealand Journal Of Ecology, Nucleic Acids Research, Oecologia, Oikos, Plos Biology, PNAS, Proceedings Of The Royal Society B-biological Sciences, Sexually Transmitted Diseases, Science, Theoretical Population Biology, … Variation among individuals is raw material for selection - There is great variation in movement behaviour Ålandnew new Åland 5,460 5,460 mm 2,300mm 2,300 6:13:37 6:13:37 PgiAC AC Pgi 2/52 2/52 R2 R2 R3 R4 Estonia Estonia 590mm 590 480mm 480 6:05:24 6:05:24 PgiAA AA Pgi 33/52 33/52 Tracking butterfly movements with harmonic radar Ovaskainen et al. PNAS 2008 R4 R5 Ålandold old Åland 110mm 110 100mm 100 6:16:22 6:16:22 PgiAC AC Pgi 31/52 31/52 R1 R1 Ålandnew new Åland 2,110mm 2,110 1,050mm 1,050 5:10:02 5:10:02 PgiAC AC Pgi 3/52 3/52 200 m m 200 Mobility in the field is correlated with metabolic performance, and it is heritable (partly genetically controlled) Measuring the flight metabolism (CO2 production during flight) PGI (phosphoglucose isomerase) genotype: AA homozygote AC heterozygote Niitepold et al. Ecology 2009 Does landscape structure matter for the evolution of dispersal? Key finding from the empirical and modelling studies: rapid evolutionary changes in space and time • Isolated patches are colonized mainly by the most mobile • • females After colonization the local population evolves towards a less mobile one: mobile individuals emigrate out while sedentary individuals stay At the network level, small networks with high turnover rate have on average more mobile individuals Patch level New Network level pop ulat ions ons pulati Old po Zheng et al. Phil. Trans. B 2009 More generally, how does environmental heterogeneity affect evolution of dispersal? Incorporating environmental heterogeneity into continuous-space models Landscape structure controlled by patch density, size, quality and turnove • Distribution of patches p = ∑ δ ( xi ) i∈P • Patches appear at random locations at rate θσ (per unit area) • Patches disappear at rate σ (per patch) • Landscape quality ω = ΨP ∗ p • The kernel controls patch size (length scale) and patch quality (integral) Evolutionary model of dispersal Individual with short-ranged dispersal kernel • Parameters at low density: fecundity f, establishment e, death d. • Density-dependence affects death rate. Countour lines: local density of individuals • Landscape quality affects fecundity Individual with long-ranged dispersal kernel f = f 0ω dN dt Mean-field model: logistic population growth: = rN (1 − N / K ) Methods: ESS and ESFD Evolutionary Stable Strategy and Evolutionary Stable Frequency Distribution Residents, one realization Mutants, one realization Eigenvalue from perturbation analysis Mutants, average over realizations h2=1-10-5 h2=0.75 h2= 0 h2=1-10-4 h2=1-10-3 Results I: effect of landscape structure STATIC LANDSCAPES, TOTAL AMOUNT OF HABITAT CONSTANT DYNAMIC LANDSCAPES, TOTAL AMOUNT OF HABITAT CONSTANT STATIC LANDSCAPES DYNAMIC LANDSCAPES UNDERGOING HABITAT LOSS UNDERGOING HABITA LOSS Structural stability of the results? ESS versus ESFD Alternative assumptions on life-history ESS and ESFD approaches tell the same story Alternative assumptions on life-history Density-depence can... • increase death rate • reduce fecundity • reduce establishment Landscape quality can affect... • death rate (at low density) • fecundity (at low density) • establishment (at low density) • carrying capacity All 12 models tell the same qualitative story... DYNAMIC LANDSCAPES, TOTAL AMOUNT OF HABITAT CONSTANT ...but they differ in their quantitative predictions Density-depence affects: Habitat quality affects: STATIC LANDSCAPES, TOTAL AMOUNT OF HABITAT CONSTANT DYNAMIC LANDSCAPES, TOTAL AMOUNT OF HABITAT CONSTANT Challenges for the future Methods • Extinction thresholds & other phase transitions Applications • Local adaptation (poster by Ace North) Connection to reality • Testing the predictions!