A central aim of robotics research is to design robots that can perform in the real world; a real world that is often highly changeable in nature. An important challenge for researchers is therefore to produce robots that can improve their performance when the environment is stable, and adapt when the environment changes. This paper reports on experiments which show how evolutionary methods can provide lifelong adaptation for robots, and how this evolutionary process was embodied on the robot itself. A unique combination of training and lifelong adaptation are used, and this paper highlights the importance of training to this approach
We use genetic algorithms to evolve behavioral properties of simulated autonomous vehicles. The trai...
This master thesis investigates the principal capability of artificial evolution to produce tool use...
A review is given on the use of evolutionary techniques for the automatic design of adaptive robots....
A central aim of robotics research is to design robots that can perform in the real world; a real wo...
This paper investigates a system that uses a genetic algorithm to train a robot for a generalised te...
For many years, researchers in the field of mobile robotics have been investigating the use of genet...
In this paper an evolutionary method con-sisting of encoding a set of local adapta-tion rules that s...
This paper is concerned with adaptation capabilities of evolved neural controllers. A method consist...
After reviewing current approaches in Evolutionary Robotics, we point to directions of research that...
Inspired by animals’ ability to learn and adapt to changes in their environment during life, hybrid ...
Abstract Our experiences with a range of evolutionary robotic experiments have resulted in major cha...
Recently, a new approach that involves a form of simulated evolution has been proposed for the build...
This paper is concerned with adaptation capabilities of evolved neural controllers. We propose to ev...
Building robots is a tough job because the designer has to predict the interactions between the robo...
Title: Evolution and Learning of Virtual Robots Author: RNDr. Peter Krčah Department: Department of ...
We use genetic algorithms to evolve behavioral properties of simulated autonomous vehicles. The trai...
This master thesis investigates the principal capability of artificial evolution to produce tool use...
A review is given on the use of evolutionary techniques for the automatic design of adaptive robots....
A central aim of robotics research is to design robots that can perform in the real world; a real wo...
This paper investigates a system that uses a genetic algorithm to train a robot for a generalised te...
For many years, researchers in the field of mobile robotics have been investigating the use of genet...
In this paper an evolutionary method con-sisting of encoding a set of local adapta-tion rules that s...
This paper is concerned with adaptation capabilities of evolved neural controllers. A method consist...
After reviewing current approaches in Evolutionary Robotics, we point to directions of research that...
Inspired by animals’ ability to learn and adapt to changes in their environment during life, hybrid ...
Abstract Our experiences with a range of evolutionary robotic experiments have resulted in major cha...
Recently, a new approach that involves a form of simulated evolution has been proposed for the build...
This paper is concerned with adaptation capabilities of evolved neural controllers. We propose to ev...
Building robots is a tough job because the designer has to predict the interactions between the robo...
Title: Evolution and Learning of Virtual Robots Author: RNDr. Peter Krčah Department: Department of ...
We use genetic algorithms to evolve behavioral properties of simulated autonomous vehicles. The trai...
This master thesis investigates the principal capability of artificial evolution to produce tool use...
A review is given on the use of evolutionary techniques for the automatic design of adaptive robots....