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Continuation of global bifurcations using collocation technique George van Voorn 3 th March 2006 Schoorl In cooperation with: Bob Kooi, Yuri Kuznetsov (UU), Bas Kooijman
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Overview Recent biological experimental examples of: Local bifurcations (Hopf) Chaotic behaviour Role of global bifurcations (globif’s) Techniques finding and continuation global connecting orbits Find global bifurcations
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Bifurcation analysis Tool for analysis of non-linear (biological) systems: bifurcation analysis By default: analysis of stability of equilibria (X(t), t ∞) under parameter variation Bifurcation point = critical parameter value where switch of stability takes place Local: linearisation around point
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Biological application Biologically local bifurcation analysis allows one to distinguish between: Stable (X = 0 or X > 0) Periodic (unstable X ) Chaotic Switches at bifurcation points
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Hopf bifurcation Switch stability of equilibrium at α = α H But stable cycle persistence of species time Biomass α < α H α > α H
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Hopf in experiments Fussman, G.F. et al. 2000. Crossing the Hopf Bifurcation in a Live Predator-Prey System. Science 290: 1358 – 1360. a: Extinction food shortage b: Coexistence at equilibrium c: Coexistence on stable limit cycle d: Extinction cycling Measurement point Chemostat predator-prey system
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Chaotic behaviour Chaotic behaviour: no attracting equilibrium or stable periodic solution Yet bounded orbits [X(t) min, X(t) max ] Sensitive dependence on initial conditions Prevalence of species (not all cases!)
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Experimental results Becks, L. et al. 2005. Experimental demonstration of chaos in a microbial food web. Nature 435: 1226 – 1229. 0.90 0.75 0.50 0.45 Dilution rate d (day -1 ) Brevundimonas Pedobacter Tetrahymena (predator) Chaotic behaviour Chemostat predator- two-prey system
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Boundaries of chaos Example: Rozenzweig-MacArthur next-minimum map unstable equilibrium X 3 Minima X 3 cycles
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Boundaries of chaos Example: Rozenzweig-MacArthur next-minimum map X3X3 No existence X 3 Possible existence X 3
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Boundaries of chaos Chaotic regions bounded Birth of chaos: e.g. period doubling Flip bifurcation (manifold twisted) Destruction boundaries Unbounded orbits No prevalence of species
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Global bifurcations Chaotic regions are “cut off” by global bifurcations (globifs) Localisation globifs by finding orbits that: Connect the same saddle equilibrium or cycle (homoclinic) Connect two different saddle cycles and/or equilibria (heteroclinic)
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Global bifurcations Minima homoclinic cycle-to-cycle Example: Rozenzweig-MacArthur next-minimum map
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Global bifurcations Minima heteroclinic point-to-cycle Example: Rozenzweig-MacArthur next-minimum map
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Localising connecting orbits Difficulties: Nearly impossible connection Orbit must enter exactly on stable manifold Infinite time Numerical inaccuracy
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Shooting method Boer et al., Dieci & Rebaza (2004) Numerical integration (“trial-and-error”) Piling up of error; often fails Very small integration step required
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Shooting method X3X3 X2X2 X1X1 d 1 = 0.26, d 2 = 1.25·10 -2 Example error shooting: Rozenzweig-MacArthur model Default integration step
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Collocation technique Doedel et al. (software AUTO) Partitioning orbit, solve pieces exactly More robust, larger integration step Division of error over pieces
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Collocation technique Separate boundary value problems (BVP’s) for: Limit cycles/equilibria Eigenfunction linearised manifolds Connection Put together
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Equilibrium BVP v = eigenvector λ = eigenvalue f x = Jacobian matrix In practice computer program (Maple, Mathematica) is used to find equilibrium f(ξ,α) Continuation parameters: Saddle equilibrium, eigenvalues, eigenvectors
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Limit cycle BVP T = period of cycle, parameter x(0) = starting point cycle x(1) = end point cycle Ψ = phase
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Eigenfunction BVP T = same period as cycle μ = multiplier (FM) w = eigenvector Ф = phase Finds entry and exit points of stable and unstable limit cycles w(0) w(0) μ WuWu
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Margin of error ε Connection BVP ν T 1 = period connection +/– ∞ Truncated (numerical)
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Case 1: RM model X3X3 X2X2 X1X1 d 1 = 0.26, d 2 = 1.25·10 -2 Saddle limit cycle X3X3
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Case 1: RM model X3X3 X2X2 X1X1 WuWu Unstable manifold μ u = 1.5050
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Case 1: RM model WsWs X3X3 X2X2 X1X1 Stable manifold μ s = 2.307·10 -3
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Case 1: RM model Heteroclinic point-to-cycle connection X3X3 X2X2 X1X1 WsWs
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Case 2: Monod model X3X3 X2X2 X1X1 X r = 200, D = 0.085 Saddle limit cycle
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Case 2: Monod model X3X3 X2X2 X1X1 WuWu μ s too small
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Case 2: Monod model X3X3 X2X2 X1X1 Heteroclinic point-to-cycle connection
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Case 2: Monod model X3X3 X2X2 X1X1 Homoclinic cycle-to-cycle connection
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Case 2: Monod model X3X3 X2X2 X1X1 Second saddle limit cycle
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Case 2: Monod model X3X3 X2X2 X1X1 WuWu
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X3X3 X2X2 X1X1 Homoclinic connection
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Future work Difficult to find starting points Recalculate global homoclinic and heteroclinic bifurcations in models by M. Boer et al. Find and continue globifs in other biological models (DEB, Kooijman)
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Thank you for your attention! george.van.voorn@falw.vu.nl Primary references: Boer, M.P. and Kooi, B.W. 1999. Homoclinic and heteroclinic orbits to a cycle in a tri-trophic food chain. J. Math. Biol. 39: 19-38. Dieci, L. and Rebaza, J. 2004. Point-to-periodic and periodic-to-periodic connections. BIT Numerical Mathematics 44: 41–62. Supported by
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Case 1: RM model X3X3 X2X2 X1X1 Integration step 10 -3 good approximation, but: Time consuming Not robust
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