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Chaos and Self-Organization in Spatiotemporal Models of Ecology J. C. Sprott Department of Physics University of Wisconsin - Madison Presented at the Eighth International Symposium on Simulation Science in Hayama, Japan on March 5, 2003
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Collaborators Janine Bolliger Swiss Federal Research Institute David Mladenoff University of Wisconsin - Madison
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Outline n Historical forest data set n Stochastic cellular automaton model n Deterministic cellular automaton model n Application to corrupted images
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Landscape of Early Southern Wisconsin (USA)
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Stochastic Cellular Automaton Model
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Cellular Automaton (Voter Model) r Cellular automaton: Square array of cells where each cell takes one of the 6 values representing the landscape on a 1-square mile resolution Evolving single-parameter model: A cell dies out at random times and is replaced by a cell chosen randomly within a circular radius r (1 < r < 10) Boundary conditions : periodic and reflecting Initial conditions : random and ordered Constraint: The proportions of land types are kept equal to the proportions of the experimental data
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Random Initial Conditions Ordered
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n A point is assumed to be part of a cluster if its 4 nearest neighbors are the same as it is. n CP (Cluster probability) is the % of total points that are part of a cluster. Cluster Probability
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Cluster Probabilities (1) Random initial conditions r = 1 r = 3 r = 10 experimental value
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Cluster Probabilities (2) Ordered initial conditions r = 1 r = 3 r = 10 experimental value
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Fluctuations in Cluster Probability r = 3 Number of generations Cluster probability
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Power Spectrum (1) Power laws ( 1 /f ) for both initial conditions; r = 1 and r = 3 Slope: = 1.58 r = 3 Frequency Power SCALE INVARIANT Power law !
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Power Spectrum (2) Power Frequency No power law ( 1 /f ) for r = 10 r = 10 No power law
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Fractal Dimension (1) = separation between two points of the same category (e.g., prairie) C = Number of points of the same category that are closer than Power law : C = D (a fractal) where D is the fractal dimension: D = log C / log
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Fractal Dimension (2) Simulated landscapeObserved landscape
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A Measure of Complexity for Spatial Patterns One measure of complexity is the size of the smallest computer program that can replicate the pattern. A GIF file is a maximally compressed image format. Therefore the size of the file is a lower limit on the size of the program. Observed landscape:6205 bytes Random model landscape: 8136 bytes Self-organized model landscape:6782 bytes ( r = 3)
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Simplified Model n Previous model u 6 levels of tree densities u nonequal probabilities u randomness in 3 places n Simpler model u 2 levels (binary) u equal probabilities u randomness in only 1 place
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Deterministic Cellular Automaton Model
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Why a deterministic model? n Randomness conceals ignorance n Simplicity can produce complexity n Chaos requires determinism n The rules provide insight
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Model Fitness 0 1 1 1 1 2 2 2 2 3 3 3 34 4 4 4 4 4 4 4 Define a spectrum of cluster probabilities (from the stochastic model): CP 1 = 40.8% CP 2 = 27.5% CP 3 = 20.2% CP 4 = 13.8% Require that the deterministic model has the same spectrum of cluster probabilities as the stochastic model (or actual data) and also 50% live cells.
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Update Rules 0 1 1 1 1 2 2 2 2 3 3 3 34 4 4 4 4 4 4 4 Truth Table 2 10 = 1024 combinations for 4 nearest neighbors 2 2250 = 10 677 combinations for 20 nearest neighbors Totalistic rule
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Genetic Algorithm Mom: 1100100101 Pop: 0110101100 Cross: 1100101100 Mutate: 1100101110 Keep the fittest two and repeat
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Is it Fractal? Deterministic ModelStochastic Model D = 1.666D = 1.685 00 00 33 -3 log log C( )
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Is it Self-organized Critical? Frequency Power Slope = 1.9
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Is it Chaotic?
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Conclusions A purely deterministic cellular automaton model can produce realistic landscape ecologies that are fractal, self-organized, and chaotic.
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Application to Corrupted Images
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Landscape with Missing Data Single 60 x 60 block of missing cells Replacement from 8 nearest neighbors OriginalCorruptedCorrected
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Image with Corrupted Pixels 441 missing blocks with 5 x 5 pixels each and 16 gray levels Replacement from 8 nearest neighbors OriginalCorruptedCorrected Cassie Kight’s calico cat Callie
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Multispecies Lotka- Volterra Model with Evolution
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Let S i ( x,y ) be density of the i th species (trees, rabbits, people, …) dS i / dt = r i S i (1 - S i - Σ a ij S j ) Choose r i and a ij from a Poisson random distribution (both positive) Replace species that die with new ones chosen randomly Multispecies Lotka-Volterra Model with Evolution jiji
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Evolution of Total Biomass Time Biomass
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Conclusions n Competitive exclusion eliminates most species. n The dominant species is eventually killed and replaced by another. n Evolution is punctuated rather than continual.
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Summary n Nature is complex n Simple models may suffice but
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References n http://sprott.physics.wisc.edu/ lectures/japan.ppt (This talk) http://sprott.physics.wisc.edu/ lectures/japan.ppt n J. C. Sprott, J. Bolliger, and D. J. Mladenoff, Phys. Lett. A 297, 267-271 (2002) J. C. Sprott, J. Bolliger, and D. J. Mladenoff, Phys. Lett. A 297, 267-271 (2002) n sprott@physics.wisc.edu sprott@physics.wisc.edu
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