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Frontiers in Evolutionary Robotics

ISBN 978-3-902613-19-6
hard cover, 596 pages
Edited by: Hitoshi Iba
Publisher: I-Tech Education and Publishing, Vienna, Austria
Publication date: April 2008
Price: 80 Euro incl. package & postage

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About the Book

This book presented techniques and experimental results which have been pursued for the purpose of evolutionary robotics. Evolutionary robotics is a new method for the automatic creation of autonomous robots. When executing tasks by autonomous robots, we can make the robot learn what to do so as to complete the task from interactions with its environment, but not manually pre-program for all situations. Many researchers have been studying the techniques for evolutionary robotics by using Evolutionary Computation (EC), such as Genetic Algorithms (GA) or Genetic Programming (GP). Their goal is to clarify the applicability of the evolutionary approach to the real-robot learning, especially, in view of the adaptive robot behavior as well as the robustness to noisy and dynamic environments. For this purpose, authors in this book explain a variety of real robots in different fields.
For instance, in a multi-robot system, several robots simultaneously work to achieve a common goal via interaction; their behaviors can only emerge as a result of evolution and interaction. How to learn such behaviors is a central issue of Distributed Artificial Intelligence (DAI), which has recently attracted much attention. This book addresses the issue in the context of a multi-robot system, in which multiple robots are evolved using EC to solve a cooperative task. Since directly using EC to generate a program of complex behaviors is often very difficult, a number of extensions to basic EC are proposed in this book so as to solve these control problems of the robot.

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Table of Contents

01A Comparative Evaluation of Methods for Evolving a Cooperative Team
Takaya Arita and Yasuyuki Suzuki

02An Adaptive Penalty Method for Genetic Algorithms in Constrained Optimization Problems
Helio J. C. Barbosa and Afonso C. C. Lemonge

03Evolutionary-Based Control Approaches for Multirobot Systems
Jekanthan Thangavelautham, Timothy D. Barfoot and Gabriele M.T. D'Eleuterio

04Learning by Experience and by Imitation in Multi-Robot Systems
Dennis Barrios-Aranibar, Luiz M. G. Gonáalves and Pablo Javier Alsina

05Cellular Non-linear Networks as a New Paradigm for Evolutionary Robotics
Eleonora Bilotta and Pietro Pantano

06Optimal Design of Mechanisms for Robot Hands
J.A. Cabrera, F. Nadal and A. Simon

07Evolving Humanoids:  Using Artificial Evolution as an Aid in the Design of Humanoid Robots
Malachy Eaton

08Real-Time Evolutionary Algorithms for Constrained Predictive Control
Mario Luca Fravolini, Antonio Ficola and Michele La Cava

09Applying Real-Time Survivability Considerations in Evolutionary Behavior Learning by a Mobile Robot
Wolfgang Freund, Tomas Arredondo V. and Cesar Munoz

10An Evolutionary MAP Filter for Mobile Robot Global Localization
L. Moreno, S. Garrido, M. L. Munoz and D. Blanco

11Learning to Walk with Model Assisted Evolution Strategies
Matthias Hebbel and Walter Nistici

12Evolutionary Morphology for Polycube Robots
Takahiro Tohge and Hitoshi Iba

13Mechanism of Emergent Symmetry Properties on Evolutionary Robotic System
Naohide Yasuda, Takuma Kawakami, Hiroaki Iwano, Katsuya Kanai, Koki Kikuchi and Xueshan Gao

14A Quantitative Analysis of Memory Usage for Agent Tasks
DaeEun Kim

15Evolutionary Parametric Identification of Dynamic Systems
Dimitris Koulocheris and Vasilis Dertimanis

16Evolutionary Computation of Multi-robot/agent Systems
Philippe Lucidarme

17Embodiment of Legged Robots Emerged in Evolutionary Design: Pseudo Passive Dynamic Walkers
Kojiro Matsushita and Hiroshi Yokoi

18Action Selection and Obstacle Avoidance using Ultrasonic and Infrared Sensors
Fernando Montes-Gonzalez, Daniel Flandes-Eusebio and Luis Pellegrin-Zazueta

19Multi-Legged Robot Control Using GA-Based Q-Learning Method With Neighboring Crossover
Tadahiko Murata and Masatoshi Yamaguchi

20Evolved Navigation Control for Unmanned Aerial Vehicles
Gregory J. Barlow and Choong K. Oh

21Application of Artificial Evolution to Obstacle Detection and Mobile Robot Control
Olivier Pauplin and Arnaud de La Fortelle

22Hunting in an Environment Containing Obstacles: A Combinatory Study of Incremental Evolution and Co-evolutionary Approaches
Ioannis Mermigkis and Loukas Petrou

23Evolving Behavior Coordination for Mobile Robots using Distributed Finite-State Automata
Pavel Petrovic

24An Embedded Evolutionary Controller to Navigate a Population of Autonomous Robots
Eduardo do Valle Simoes

25Optimization of a 2 DOF Micro Parallel Robot Using Genetic Algorithms
Sergiu-Dan Stan, Vistrian Maties and Radu Balan

26Progressive Design through Staged Evolution
Ricardo A. Tellez and Cecilio Angulo

27Emotional Intervention on Stigmergy Based Foraging Behaviour of Immune Network Driven Mobile Robots
Diana Tsankova

28Evolutionary Distributed Control of a Biologically Inspired Modular Robot
Sunil Pranit Lal and Koji Yamada

29Evolutionary Motion Design for Humanoid Robots
Toshihiko Yanase and Hitoshi Iba