<p>This volume comprises the proceedings of a NATO Advanced Study Institute (ASI) held at Geilo, Norway, 11-21 April 2005, the eighteenth ASI in a series held every two years since 1971. The objective of this ASI was to identify and discuss areas where synergism between modern physics and biology ma
Dynamics of Complex Interconnected Biological Systems
β Scribed by Michael A. B. Deakin (auth.), Thomas L. Vincent, Alistair I. Mees, Leslie S. Jennings (eds.)
- Publisher
- BirkhΓ€user Basel
- Year
- 1990
- Tongue
- English
- Leaves
- 344
- Series
- Mathematical Modelling 6
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This volume contains the proceedings of the U.S. Australia workshop on Complex Interconnected Biological Systems held in Albany, Western Australia January 1-5, 1989. The workshop was jointly sponsored by the Department of Industry, Trade and Commerce (Australia), and the NaΒ tional Science Foundation (USA) under the US-Australia agreement. Biological systems are typically hard to study mathematically. This is particularly so in the case of systems with strong interconnections, such as ecosystems or networks of neurons. In the past few years there have been substantial improvements in the mathematical tools available for studyΒ ing complexity. Theoretical advances include substantially improved unΒ derstanding of the features of nonlinear systems that lead to important behaviour patterns such as chaos. Practical advances include improved modelling techniques, and deeper understanding of complexity indicators such as fractal dimension. Game theory is now playing an increasingly important role in underΒ standing and describing evolutionary processes in interconnected systems. The strategies of individuals which affect each other's fitness may be incorΒ porated into models as parameters. Strategies which have the property of evolutionary stabilty result from particular parameter values which may be the main feature of living determined using game theoretic methods. Since systems is that they evolve, it seems appropriate that any model used to describe such systems should have this feature as well. Evolutionary game theory should lead the way in the development of such methods.
β¦ Table of Contents
Front Matter....Pages i-xii
Front Matter....Pages 1-1
Modelling Biological Systems....Pages 2-16
A Length-Structured Model of the Western Rock Lobster Fishery of Western Australia....Pages 17-39
Legumes at Loggerheads: Modelling Competition Between Two Strains of Sub-Clover....Pages 40-64
Two Dimensional Pattern Formation In a Chemotactic System....Pages 65-83
Mathematical Modelling of the Control of Blood Glucose Levels in Diabetics by Insulin Infusion....Pages 84-102
Front Matter....Pages 103-103
Modelling Complex Systems....Pages 104-124
Detecting Folds in Chaotic Processes By Mapping the Convex Hull....Pages 125-138
Chaos in Complex Systems....Pages 139-154
A Chaotic System: Discretization and Control....Pages 155-174
Impulsive Evolution Equations and Population Models....Pages 175-203
Scaling as a Tool for the Analysis of Biological Models....Pages 204-217
A Numerical Algorithm for Constrained Optimal Control Problems with Applications to Harvesting....Pages 218-234
Front Matter....Pages 235-235
Strategy Dynamics and the ESS....Pages 236-262
Community Organization Under Predator-Prey Coevolution....Pages 263-288
The Exploiters Conservationists Game: How to be an Effective Conservationist....Pages 289-305
Analyzing the Harvesting Game or Why are There So Many Kinds of Fishing Vessels in the Fleet?....Pages 306-332
Back Matter....Pages 333-333
β¦ Subjects
Mathematical and Computational Biology; Mathematical Modeling and Industrial Mathematics; Applications of Mathematics
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