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Open AccessProceedings ArticleDOI

Automatic creation of an autonomous agent: genetic evolution of a neural-network driven robot

Dario Floreano, +1 more
- pp 421-430
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TLDR
The paper describes the results of the evolutionary development of a real, neural-network driven mobile robot, and shows a number of emergent phenomena that are characteristic of autonomous agents.
Abstract
The paper describes the results of the evolutionary development of a real, neural-network driven mobile robot. The evolutionary approach to the development of neural controllers for autonomous agents has been successfully used by many researchers, but most - if not all - studies have been carried out with computer simulations. Instead, in this research the whole evolutionary process takes places entirely on a real robot without human intervention. Although the experiments described here tackle a simple task of navigation and obstacle avoidance, we show a number of emergent phenomena that are characteristic of autonomous agents. The neural controllers of the evolved best individuals display a full exploitation of non-linear and recurrent connections that make them more efficient than analogous man-designed agents. In order to fully understand and describe the robot behavior, we have also employed quantitative ethological tools [13], and showed that the adaptation dynamics conform to predictions made for animals.

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Citations
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Dissertation

Online evolution of robot behaviour

TL;DR: Tese de mestrado em Engenharia Informatica (Interacao e Conhecimento), apresentada a Universidade de Lisboa, atraves da Faculdade de Ciencias, 2012.
Journal Article

Efficient reward functions for adaptive multi-rover systems

TL;DR: In this paper, the authors focus on deriving reward functions that allow multiple agents to co-evolve efficient control policies that maximize a system level reward in noisy and dynamic environments.
Dissertation

Approches évolutionnaires pour la robotique modulaire et anticipatoire

TL;DR: Nolfi et Parisi as discussed by the authors proposed Action, Anticipation, Adaptation (AAA) architecture, which is based on the Action-Anticipation-Adaptation (AA) architecture.

Evolving minimalistic control for complex behavior

Zhou Fang
TL;DR: In contrast to expectations, many evolved networks did not evolve hidden units, indicating that the task may not be difficult enough, supporting the theory that natural control systems are minimalistic in nature.
Book ChapterDOI

Behavior Emergence in Autonomous Robot Control by Means of Evolutionary Neural Networks

TL;DR: This work studies the emergence of intelligent behavior of a simple mobile robot and demonstrates the performance of evolutionary algorithm on selected problems, namely maze exploration and discrimination of walls and cylinders.
References
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Book

Genetic algorithms in search, optimization, and machine learning

TL;DR: In this article, the authors present the computer techniques, mathematical tools, and research results that will enable both students and practitioners to apply genetic algorithms to problems in many fields, including computer programming and mathematics.
Book

Adaptation in natural and artificial systems

TL;DR: Names of founding work in the area of Adaptation and modiication, which aims to mimic biological optimization, and some (Non-GA) branches of AI.

Intelligence without Representation

TL;DR: Brooks et al. as mentioned in this paper decompose an intelligent system into independent and parallel activity producers which all interface directly to the world through perception and action, rather than interface to each other particularly much.
Journal ArticleDOI

Intelligence without representation

TL;DR: Brooks et al. as discussed by the authors decompose an intelligent system into independent and parallel activity producers which all interface directly to the world through perception and action, rather than interface to each other particularly much.