This paper presents a comparison of two Evolutionary Artificial Neural Network (EANN) variants acting as the autonomous control system for instances of the-Consensus Avoidance Problem ( θ-CAP). A novel variant of EANN is proposed by adopting characteristics of a well-performing heuristic into the structural bias of the neurocontroller. Information theoretic landscape measures are used to analyze the problem space as well as variants of the EANN. The results obtained indicate that the two neurocontroller variants learn distinctly different approaches to the θ-CAP, however, the newly proposed variant demonstrates improvements in both solution quality and execution time. A rampeddifficulty evolution scheme is demonstrated to be effective at cr...
This thesis presents and discusses a potential method for solving the dynamic obstacle avoidance pro...
Abstract. The evolution of artificial neural networks (ANNs) is often used to tackle difficult contr...
In this paper, we study practical strategies for controlling the behaviour of a synthetic social net...
Abstract—Automated control of information diffusion in social networks is a difficult problem with p...
Control of the flow of information in large-scale non-deterministic social networks is a complex pro...
This paper describes a study of the evolution of distributed behavior, specifically the control of a...
This paper deals with the study of scaling up behaviors in evolutive robotics (ER). Complex behavior...
An evolutionary algorithm for the development of neural networks with arbitrary connectivity is pres...
An evolutionary algorithm for the development of neural networks with arbitrary connectivity is pres...
Abstract—This paper describes a study in the use of neuroevolution to discover controllers for a sim...
Evolutionary ensembles with negative correlation learning (EENCL) is an evolutionary learning system...
This paper is concerned with leader-following consensus problems for a class of heterogeneous linear...
The paper presents a neuro-evolutionary algorithm called Hill Climb Assembler Encoding (HCAE) which ...
This paper presents a multi-agent based evolutionary artificial neural network (ANN) for general nav...
Online evolution gives robots the capacity to learn new tasks and to adapt to changing environmental...
This thesis presents and discusses a potential method for solving the dynamic obstacle avoidance pro...
Abstract. The evolution of artificial neural networks (ANNs) is often used to tackle difficult contr...
In this paper, we study practical strategies for controlling the behaviour of a synthetic social net...
Abstract—Automated control of information diffusion in social networks is a difficult problem with p...
Control of the flow of information in large-scale non-deterministic social networks is a complex pro...
This paper describes a study of the evolution of distributed behavior, specifically the control of a...
This paper deals with the study of scaling up behaviors in evolutive robotics (ER). Complex behavior...
An evolutionary algorithm for the development of neural networks with arbitrary connectivity is pres...
An evolutionary algorithm for the development of neural networks with arbitrary connectivity is pres...
Abstract—This paper describes a study in the use of neuroevolution to discover controllers for a sim...
Evolutionary ensembles with negative correlation learning (EENCL) is an evolutionary learning system...
This paper is concerned with leader-following consensus problems for a class of heterogeneous linear...
The paper presents a neuro-evolutionary algorithm called Hill Climb Assembler Encoding (HCAE) which ...
This paper presents a multi-agent based evolutionary artificial neural network (ANN) for general nav...
Online evolution gives robots the capacity to learn new tasks and to adapt to changing environmental...
This thesis presents and discusses a potential method for solving the dynamic obstacle avoidance pro...
Abstract. The evolution of artificial neural networks (ANNs) is often used to tackle difficult contr...
In this paper, we study practical strategies for controlling the behaviour of a synthetic social net...