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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

Emergence of internal representations in evolutionary robotics : influence of multiple selective pressures

TL;DR: Cognitive science is the interdisciplinary field aiming at studying the control system of animals and their processes, with a particular emphasis on the human brain, and artificial intelligence is one of the fields targeted.
Proceedings ArticleDOI

Adaptation through a stochastic evolutionary neuron migration process (SENMP)

TL;DR: A phenomenological developmental model based on a stochastic evolutionary neuron migration process (SENMP) to gain new insights into the development, adaptation and plasticity in artificial neural networks and to evolve purposeful behavior for autonomous robots is proposed.

Adding Vision to Khepera: An Autonomous Robot Footballer

TL;DR: The success in evolving in simulation a robot controller incorporating distal visual environment input data and displaying the same behaviours in both simulation and the real world, goes some way to addressing the arguments that evolution in simulation is only suitable for toy problems.
Journal ArticleDOI

Aspects of non-cartesian robotics

TL;DR: The concept of non-Cartesian robotics as an antithesis to conventional (Cartesian) robotics is introduced and various aspects of this new way of running a robotic system are described.
Book ChapterDOI

Abstraction as a Mechanism to Cross the Reality Gap in Evolutionary Robotics

TL;DR: This article applies abstraction to the task of forming an asymmetric triangle with a homogeneous swarm of MAVs and shows that the evolved behavior is effective both in simulation and reality, suggesting that abstraction can be a useful tool in making evolved behavior robust to the reality gap.
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.