Self-Organization in Biological Systems: (Princeton Studies in Complexity)

Self-Organization in Biological Systems: (Princeton Studies in Complexity)

by ScottCamazine (Author), JamesSneyd (Author), EricBonabeau (Author), Jean-LouisDeneubourg (Author), NigelR.Franks (Author), Guy Theraula (Author)

Synopsis

The synchronized flashing of fireflies at night. The spiraling patterns of an aggregating slime mold. The anastomosing network of army-ant trails. The coordinated movements of a school of fish. Researchers are finding in such patterns--phenomena that have fascinated naturalists for centuries--a fertile new approach to understanding biological systems: the study of self-organization. This book, a primer on self-organization in biological systems for students and other enthusiasts, introduces readers to the basic concepts and tools for studying self-organization and then examines numerous examples of self-organization in the natural world. Self-organization refers to diverse pattern formation processes in the physical and biological world, from sand grains assembling into rippled dunes to cells combining to create highly structured tissues to individual insects working to create sophisticated societies. What these diverse systems hold in common is the proximate means by which they acquire order and structure. In self-organizing systems, pattern at the global level emerges solely from interactions among lower-level components. Remarkably, even very complex structures result from the iteration of surprisingly simple behaviors performed by individuals relying on only local information. This striking conclusion suggests important lines of inquiry: To what degree is environmental rather than individual complexity responsible for group complexity? To what extent have widely differing organisms adopted similar, convergent strategies of pattern formation? How, specifically, has natural selection determined the rules governing interactions within biological systems? Broad in scope, thorough yet accessible, this book is a self-contained introduction to self-organization and complexity in biology--a field of study at the forefront of life sciences research.

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More Information

Format: Paperback
Pages: 560
Publisher: Princeton University Press
Published: 28 Aug 2003

ISBN 10: 0691116245
ISBN 13: 9780691116242
Book Overview: The authors' lively yet scholarly account of the rapidly emerging new science of group behavior should captivate anyone who has an inquiring mind and a curiosity about what new directions biology is taking, including undergraduate and graduate students looking for an exciting new way to do biology. This book is a major contribution, not only to biology, but well beyond. -- Robert Jeanne, University of Wisconsin-Madison This ambitious volume has the potential to be a pivotal (even breakthrough) contribution to the biology of complex systems. It aims to facilitate both conceptual understanding and also correct application of the principles of self-organization in a biological context. -- Kern Reeve, Cornell University
Prizes: Winner of AAP/Professional and Scholarly Publishing Awards: Biological Science 2001. Commended for Choice Magazine Outstanding Reference/Academic Book Award 2002.

Media Reviews
One of Choice's Outstanding Academic Titles for 2002 Winner of the 2001 Award for Best Professional/Scholarly Book in Biological Science, Association of American Publishers We suspect that the ideas associated with self-organization will play an increasingly prominent role in biology for some time to come... Self-Organization in Biological Systems presents a unique opportunity to watch a group of active researchers apply these intriguing concepts to formerly mystifying feats of social organization in animals. We know of no better guide for those who wish to understand how modeling can be used to dissect the mechanisms of self-organized biological systems. --John W. Pepper and Guy Hoelzer, Science [An] exceptionally well organized and superbly illustrated volume. --Choice An important contribution to biology, and to complex systems research more generally, and certainly an enthralling subject. --Carl Anderson, Complexity This is a fascinating and thought-provoking book... The authors provide an excellent introduction to the main ideas underlying the theory of self-organization and also deal with some of the criticisms leveled at this emerging field... An eminently readable and stimulating book. --Jens Krause and Iain Couzin, The Quarterly Review of Biology This book is an entertaining and well-written introduction to the basics of self-organization... Given the clear prose and interesting examples, this book should have wide appeal. --Diane Lipscomb, Science Books & Film Considering the complexity of the subject, this account is surprisingly and pleasantly accessible and readable. It is one of the few biology books that will appeal equally to research workers and undergraduates. --Bulletin of the British Ecological Society Broad in scope, thorough yet accessible, this book is a self-contained introduction to self-organization and complexity in biology--at the forefront of life sciences research. --Zentralblatt MATH
Author Bio
Scott Camazine is the author of The Naturalist's Year and Velvet Mites and Silken Webs . Jean-Louis Deneubourg is Research Fellow at the Belgian Fund for Scientific Research and at the Centre for Non-Linear Phenomena and Complex Systems at the Universite Libre de Bruxelles, Belgium, where he is also Professor of Behavioral Ecology. Nigel R. Franks is Professor of Animal Behavior and Ecology at the University of Bristol and the coauthor of The Social Evolution of Ants (Princeton). James Sneyd is Associate Professor of Mathematics at Massey University, New Zealand and the coauthor of Mathematical Physiology . Guy Theraulaz is Research Fellow at the National Center for Scientific Research in Toulouse, France, and at Paul Sabatier University. Eric Bonabeau is Chief Scientist at EuroBios in Paris, France. Bonabeau and Theraulaz are coauthors of Swarm Intelligence: From Natural to Artificial Systems .