Bio-Inspired Comp.Machine
Daniel Mange
Sold by Ammareal, Morangis, France
AbeBooks Seller since August 29, 2016
Used - Soft cover
Condition: Used - Near fine
Ships from France to U.S.A.
Quantity: 1 available
Add to basketSold by Ammareal, Morangis, France
AbeBooks Seller since August 29, 2016
Condition: Used - Near fine
Quantity: 1 available
Add to basketAncien livre de bibliothèque. Légères traces d'usure sur la couverture. Salissures sur la tranche. Edition 1998. Ammareal reverse jusqu'à 15% du prix net de cet article à des organisations caritatives. ENGLISH DESCRIPTION Book Condition: Used, Good. Former library book. Slight signs of wear on the cover. Stains on the edge. Edition 1998. Ammareal gives back up to 15% of this item's net price to charity organizations.
Seller Inventory # E-612-005
This volume, written by experts in the field, gives a modern, rigorous and unified presentation of the application of biological concepts to the design of novel computing machines and algorithms. While science has as its fundamental goal the understanding of Nature, the engineering disciplines attempt to use this knowledge to the ultimate benefit of Mankind. Over the past few decades this gap has narrowed to some extent. A growing group of scientists has begun engineering artificial worlds to test and probe their theories, while engineers have turned to Nature, seeking inspiration in its workings to construct novel systems. The organization of living beings is a powerful source of ideas for computer scientists and engineers. This book studies the construction of machines and algorithms based on natural processes: biological evolution, which gives rise to genetic algorithms, cellular development, which leads to self-replicating and self-repairing machines, and the nervous system in living beings, which serves as the underlying motivation for artificial learning systems, such as neural networks.
This book is unique for the following reasons: It follows a unified approach to bio-inspiration based on the so-called POE model: phylogeny (evolution of species), ontogeny (development of individual organisms), and epigenesis (life-time learning). It is largely self-contained, with an introduction to both biological mechanisms (POE) and digital hardware (digital systems, cellular automata). It is mainly applied to computer hardware design.
Undergraduate and graduate students, researchers, engineers, computer scientists, and communication specialists.
An Introduction to Bio-Inspired Machines - An Introduction to Digital Systems - An Introduction to Cellular Automata - Evolutionary Algorithms and their Applications - Programming Cellular Machines by Cellular Programming - Multiplexer-Based Cells - Demultiplexer-Based Cells - Binary Decision Machine-Based Cells - Self-Repairing Molecules and Cells - L-hardware: Modeling and Implementing Cellular Development - Using L-systems - Artificial Neural Networks: Algorithms and Hardware Implementation - Evolution and Learning in Autonomous Robotic Agents - Bibliography - Index.
This volume, written by experts in the field, gives a modern, rigorous and unified presentation of the application of biological concepts to the design of novel computing machines and algorithms. While science has as its fundamental goal the understanding of Nature, the engineering disciplines attempt to use this knowledge to the ultimate benefit of Mankind. Over the past few decades this gap has narrowed to some extent. A growing group of scientists has begun engineering artificial worlds to test and probe their theories, while engineers have turned to Nature, seeking inspiration in its workings to construct novel systems. The organization of living beings is a powerful source of ideas for computer scientists and engineers. This book studies the construction of machines and algorithms based on natural processes: biological evolution, which gives rise to genetic algorithms, cellular development, which leads to self-replicating and self-repairing machines, and the nervous system in living beings, which serves as the underlying motivation for artificial learning systems, such as neural networks.
This book is unique for the following reasons: It follows a unified approach to bio-inspiration based on the so-called POE model: phylogeny (evolution of species), ontogeny (development of individual organisms), and epigenesis (life-time learning). It is largely self-contained, with an introduction to both biological mechanisms (POE) and digital hardware (digital systems, cellular automata). It is mainly applied to computer hardware design.
Undergraduate and graduate students, researchers, engineers, computer scientists, and communication specialists.
An Introduction to Bio-Inspired Machines - An Introduction to Digital Systems - An Introduction to Cellular Automata - Evolutionary Algorithms and their Applications - Programming Cellular Machines by Cellular Programming - Multiplexer-Based Cells - Demultiplexer-Based Cells - Binary Decision Machine-Based Cells - Self-Repairing Molecules and Cells - L-hardware: Modeling and Implementing Cellular Development - Using L-systems - Artificial Neural Networks: Algorithms and Hardware Implementation - Evolution and Learning in Autonomous Robotic Agents - Bibliography - Index.
"About this title" may belong to another edition of this title.
| Order quantity | 5 to 7 business days | 5 to 7 business days |
|---|---|---|
| First item | US$ 23.73 | US$ 23.73 |
Delivery times are set by sellers and vary by carrier and location. Orders passing through Customs may face delays and buyers are responsible for any associated duties or fees. Sellers may contact you regarding additional charges to cover any increased costs to ship your items.