This paper draws on three different sets of ideas from computer science to develop a self-learning system capable of delivering an obstacle avoidance decision tree for simple mobile robots. All three topic areas have received considerable attention in the literature but their combination in the fashion reported here is new. This work is part of a wider initiative on problems where human reasoning is currently the most commonly used form of control. Typical examples are in sense and avoid studies for vehicles – for example the current lack of regulator approved sense and avoid systems is a key road-block to the wider deployment of uninhabited aerial vehicles (UAVs) in civil airspaces.The paper shows that by using well established ideas from ...
Automated ground vehicles are being used increasingly in automation of factories for material transm...
This project concerns the design and fabrication of the Automated Guided Robot (AGR) prototype, uti...
Abstract- This paper presents results of our work in development of a genetic algorithm based path-p...
This paper describes how soft computing technology as Genetic Algorithms (GAs) can be applied for pa...
Abstract:- The obstacle avoidance and path planning is one of the most important problem in mobile r...
AbstractThis paper presents a learning method which automatically designs fuzzy logic controllers (F...
Fuzzy logic and evolutionary computation have proven to be convenient tools for handling realworld u...
ABSTRACT- An Autonomous Mobile Robot (AMR) is a machine able to extract information from its environ...
This thesis applies genetic algorithms to computationally design control strategies for a simulated ...
This paper describes a design method for mobile robot behaviours that employs a variety of soft comp...
In this paper, a genetic-fuzzy approach is developed for solving the motion planning problem of a mo...
This paper explores the application of genetic algorithms to the learning of local robot navigation ...
This paper presents an approach to mobile robot path planning using case-based reasoning together wi...
Mobile robots have been widely used in various sectors in the last decade. A mobile robot could auto...
AbstractIn this paper, a genetic-fuzzy approach is developed for solving the motion planning problem...
Automated ground vehicles are being used increasingly in automation of factories for material transm...
This project concerns the design and fabrication of the Automated Guided Robot (AGR) prototype, uti...
Abstract- This paper presents results of our work in development of a genetic algorithm based path-p...
This paper describes how soft computing technology as Genetic Algorithms (GAs) can be applied for pa...
Abstract:- The obstacle avoidance and path planning is one of the most important problem in mobile r...
AbstractThis paper presents a learning method which automatically designs fuzzy logic controllers (F...
Fuzzy logic and evolutionary computation have proven to be convenient tools for handling realworld u...
ABSTRACT- An Autonomous Mobile Robot (AMR) is a machine able to extract information from its environ...
This thesis applies genetic algorithms to computationally design control strategies for a simulated ...
This paper describes a design method for mobile robot behaviours that employs a variety of soft comp...
In this paper, a genetic-fuzzy approach is developed for solving the motion planning problem of a mo...
This paper explores the application of genetic algorithms to the learning of local robot navigation ...
This paper presents an approach to mobile robot path planning using case-based reasoning together wi...
Mobile robots have been widely used in various sectors in the last decade. A mobile robot could auto...
AbstractIn this paper, a genetic-fuzzy approach is developed for solving the motion planning problem...
Automated ground vehicles are being used increasingly in automation of factories for material transm...
This project concerns the design and fabrication of the Automated Guided Robot (AGR) prototype, uti...
Abstract- This paper presents results of our work in development of a genetic algorithm based path-p...