Traitement en cours...
Fermer la notification

Le saviez-vous ?

SIDE a travaillé avec ses fournisseurs pour rendre ses colis respectueux de l'environnement.
Fini le plastique !
Le ruban adhésif qui sécurise la fermeture de nos colis et les chips de calage qui immobilisent les livres dans les cartons sont en matériaux recyclables et biodégradables.

Afficher la notification

Bio-Inspired Comp.Machine

Mange Daniel
Date de parution 01/05/1998
EAN: 9782880743710
Disponibilité Pas d'info de disponibilité
SubjectThis volume, written by experts in the field, gives amodern, rigorous and unified presentation of theapplication of biological concepts to the design of novelcomputing machines and algorithms. While science has as itsfundamental goal the under... Voir la description complète
Nom d'attributValeur d'attribut
Common books attribute
ÉditeurPU POLYTECHNIQU
Nombre de pages384
Langue du livreFrançais
AuteurMange Daniel
FormatPaperback / softback
Type de produitLivre
Date de parution01/05/1998
Poids704 g
Dimensions (épaisseur x largeur x hauteur)2,20 x 16,00 x 24,00 cm
SubjectThis volume, written by experts in the field, gives amodern, rigorous and unified presentation of theapplication of biological concepts to the design of novelcomputing machines and algorithms. While science has as itsfundamental goal the understanding of Nature, theengineering disciplines attempt to use this knowledge tothe ultimate benefit of Mankind. Over the past few decadesthis gap has narrowed to some extent. A growing group ofscientists has begun engineering artificial worlds to testand probe their theories, while engineers have turned toNature, seeking inspiration in its workings to constructnovel systems. The organization of living beings is apowerful source of ideas for computer scientists andengineers. This book studies the construction of machinesand algorithms based on natural processes: biologicalevolution, which gives rise to genetic algorithms, cellulardevelopment, which leads to self-replicating andself-repairing machines, and the nervous system in livingbeings, which serves as the underlying motivation forartificial learning systems, such as neural networks.OriginalityThis book is unique for the following reasons: Itfollows a unified approach to bio-inspiration based on theso-called POE model: phylogeny (evolution of species),ontogeny (development of individual organisms), andepigenesis (life-time learning). It is largelyself-contained, with an introduction to both biologicalmechanisms (POE) and digital hardware (digital systems,cellular automata). It is mainly applied to computerhardware design.PublicUndergraduate and graduate students, researchers,engineers, computer scientists, and communicationspecialists.ContentsAn Introduction to Bio-Inspired Machines - AnIntroduction to Digital Systems - An Introduction toCellular Automata - Evolutionary Algorithms and theirApplications - Programming Cellular Machines by CellularProgramming - Multiplexer-Based Cells - Demultiplexer-BasedCells - Binary Decision Machine-Based Cells -Self-Repairing Molecules and Cells - L-hardware: Modelingand Implementing Cellular Development - Using L-systems -Artificial Neural Networks: Algorithms and HardwareImplementation - Evolution and Learning in AutonomousRobotic Agents - Bibliography - Index.