The manual design of con- trol systems for robotic devices can be challenging. Methods for the automatic synthesis of control systems, such as the evolution of artificial neural networks, are thus widely used in the robotics community. However, in many robotic tasks where multiple interdependent control problems have to be solved simultaneously, the performance of conventional neuroevolution techniques declines. In this paper, we identify interference between the adaptation of different parts of the control system as one of the key challenges in the evolutionary synthesis of artificial neural networks.As modular net- work architectures have been shown to reduce the effects of such interference, we propose a novel, implicit modular genetic r...
We study evolutionary robot systems where not only the robot brains but also the robot bodies are ev...
Jointly optimising both the body and brain of a robot is known to be a challenging task, especially ...
Many experiments have been performed that use evolutionary algorithms for learning the topology and ...
The manual design of adaptive controllers for robotic systems that face unpredictable environmental ...
The Artificial Neural Networks group at the Robert Gordon University has, over the last six years, b...
International audienceThis paper investigates the properties required to evolve Artificial Neural Ne...
Modular neural networks have a number of advantages when used to control robots. They reduce the num...
This thesis describes a novel approach to the evolution of Modular Artificial Neural Networks. Stand...
This thesis describes a novel approach to the evolution of Modular Artificial Neural Networks. Stand...
Neuromodulation is thought to be one of the underlying principles of learning and memory in biologic...
A modular approach to neural behavior control of autonomous robots is presented. It is based on the ...
Evolutionary Robotics is a research field focused on autonomous design of robots based on evolutiona...
Neural networks that learn the What and Where task perform better if they possess a modular architec...
Several attempts have been made in the past to construct encoding schemes that allow modularity to ...
In general, complex control tasks can be solved by dividing them into simpler ones which are easier ...
We study evolutionary robot systems where not only the robot brains but also the robot bodies are ev...
Jointly optimising both the body and brain of a robot is known to be a challenging task, especially ...
Many experiments have been performed that use evolutionary algorithms for learning the topology and ...
The manual design of adaptive controllers for robotic systems that face unpredictable environmental ...
The Artificial Neural Networks group at the Robert Gordon University has, over the last six years, b...
International audienceThis paper investigates the properties required to evolve Artificial Neural Ne...
Modular neural networks have a number of advantages when used to control robots. They reduce the num...
This thesis describes a novel approach to the evolution of Modular Artificial Neural Networks. Stand...
This thesis describes a novel approach to the evolution of Modular Artificial Neural Networks. Stand...
Neuromodulation is thought to be one of the underlying principles of learning and memory in biologic...
A modular approach to neural behavior control of autonomous robots is presented. It is based on the ...
Evolutionary Robotics is a research field focused on autonomous design of robots based on evolutiona...
Neural networks that learn the What and Where task perform better if they possess a modular architec...
Several attempts have been made in the past to construct encoding schemes that allow modularity to ...
In general, complex control tasks can be solved by dividing them into simpler ones which are easier ...
We study evolutionary robot systems where not only the robot brains but also the robot bodies are ev...
Jointly optimising both the body and brain of a robot is known to be a challenging task, especially ...
Many experiments have been performed that use evolutionary algorithms for learning the topology and ...