
Swarm Intelligence
From Social Bacteria to Humans
Andrew Schumann(Editor)
CRC Press
1st Edition
Published on 15. May 2022
Book
Paperback/Softback
184 pages
978-0-367-53595-7 (ISBN)
Description
The notion of swarm intelligence was introduced for describing decentralized and self-organized behaviors of groups of animals. Then this idea was extrapolated to design groups of robots which interact locally to cumulate a collective reaction. Some natural examples of swarms are as follows: ant colonies, bee colonies, fish schooling, bird flocking, horse herding, bacterial colonies, multinucleated giant amoebae Physarum polycephalum, etc. In all these examples, individual agents behave locally with an emergence of their common effect.
An intelligent behavior of swarm individuals is explained by the following biological reactions to attractants and repellents. Attractants are biologically active things, such as food pieces or sex pheromones, which attract individuals of swarm. Repellents are biologically active things, such as predators, which repel individuals of swarm. As a consequence, attractants and repellents stimulate the directed movement of swarms towards and away from the stimulus, respectively.
It is worth noting that a group of people, such as pedestrians, follow some swarm patterns of flocking or schooling. For instance, humans prefer to avoid a person considered by them as a possible predator and if a substantial part of the group in the situation of escape panic (not less than 5%) changes the direction, then the rest follows the new direction, too. Some swarm patterns are observed among human beings under the conditions of their addictive behavior such as the behavior of alcoholics or gamers.
The methodological framework of studying swarm intelligence is represented by unconventional computing, robotics, and cognitive science. In this book we aim to analyze new methodologies involved in studying swarm intelligence. We are going to bring together computer scientists and cognitive scientists dealing with swarm patterns from social bacteria to human beings. This book considers different models of simulating, controlling, and predicting the swarm behavior of different species from social bacteria to humans.
An intelligent behavior of swarm individuals is explained by the following biological reactions to attractants and repellents. Attractants are biologically active things, such as food pieces or sex pheromones, which attract individuals of swarm. Repellents are biologically active things, such as predators, which repel individuals of swarm. As a consequence, attractants and repellents stimulate the directed movement of swarms towards and away from the stimulus, respectively.
It is worth noting that a group of people, such as pedestrians, follow some swarm patterns of flocking or schooling. For instance, humans prefer to avoid a person considered by them as a possible predator and if a substantial part of the group in the situation of escape panic (not less than 5%) changes the direction, then the rest follows the new direction, too. Some swarm patterns are observed among human beings under the conditions of their addictive behavior such as the behavior of alcoholics or gamers.
The methodological framework of studying swarm intelligence is represented by unconventional computing, robotics, and cognitive science. In this book we aim to analyze new methodologies involved in studying swarm intelligence. We are going to bring together computer scientists and cognitive scientists dealing with swarm patterns from social bacteria to human beings. This book considers different models of simulating, controlling, and predicting the swarm behavior of different species from social bacteria to humans.
More details
Language
English
Place of publication
London
United Kingdom
Publishing group
Taylor & Francis Ltd
Target group
College/higher education
Illustrations
56 s/w Abbildungen, 11 farbige Abbildungen, 5 s/w Photographien bzw. Rasterbilder, 8 Farbfotos bzw. farbige Rasterbilder, 51 s/w Zeichnungen, 3 farbige Zeichnungen, 7 s/w Tabellen
7 Tables, black and white; 3 Line drawings, color; 51 Line drawings, black and white; 8 Halftones, color; 5 Halftones, black and white; 11 Illustrations, color; 56 Illustrations, black and white
Dimensions
Height: 234 mm
Width: 156 mm
Thickness: 11 mm
Weight
301 gr
ISBN-13
978-0-367-53595-7 (9780367535957)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
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Person
Andrew Schumann obtained his MSc (1998) and PhD (2003) degrees in Philosophy from Belarusian State University, Minsk, Belarus. After graduating, he was an Associate Professor at the Belarusian State University, Belarus, and is currently the Head of the Department of Cognitive Science and Mathematical Modeling, University of Information Technology and Management, Rzeszow, Poland. He participated in the project Physarum Chip: Growing Computers from Slime Mould supported by the Seventh Framework Programme (FP7-ICT-2011-8). He has authored books such as Behaviourism in Studying Swarms (2019) and Talmudic Logic (2012) as well as numerous papers.
Editor
Head of Department of Cognitive Science, University of Information Technology and Management in Rzeszow, Poland
Content
1 Introduction 2 Swarm Intelligence for Morphogenetic Engineering 3 Ant Cemeteries as a Cluster or as an Aggregate Pile 4 Robust Swarm of Soldier Crabs, Mictyris guinotae, Based on Mutual Anticipation 5 Swarm intelligence in Cybersecurity 6 Emergence of Complex Phenomena in a Simple Reversible Cellular Space 7 Rough Sets over Social Networks 8 Logical Functions as an Idealization of Swarm Basic Reactions 9 On the Motion of Agents with Directional Antennae 10 Induction and Physical Theory Formation as well as Universal Computation by Machine Learning