The automatic design of controllers for mobile robots usually requires two stages. In the first stage, sensorial data are preprocessed or transformed into high level and meaningful values of variables which are usually defined from expert knowledge. In the second stage, a machine learning technique is applied to obtain a controller that maps these high level variables to the control commands that are actually sent to the robot. This paper describes an algorithm that is able to embed the preprocessing stage into the learning stage in order to get controllers directly starting from sensorial raw data with no expert knowledge involved. Due to the high dimensionality of the sensorial data, this approach uses Quantified Fuzzy Rules (QFRs), that ...
Conventional fuzzy logic controller is applicable when there are only two fuzzy inputs with usually ...
Fuzzy control has shown to be a very useful tool in the eld of autonomous mobile robotics, character...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...
The automatic design of controllers for mobile robots usually requires two stages. In the first stag...
Abstract—Learning controllers in mobile robotics usually re-quires expert knowledge to define the in...
AbstractThis paper presents a learning method which automatically designs fuzzy logic controllers (F...
Basic tasks for navigation of autonomous vehicles can be performed as reactive behaviors, that direc...
This paper presents an automatic design method for fuzzy systems using genetic algorithms. A flexibl...
© 2015, Springer-Verlag Berlin Heidelberg. The majority of machine learning techniques applied to le...
In this paper we describe a supervised robot learning method which enables a mobile robot to ac-quir...
An autonomous mobile robot operating in an unstructured environment must be able to learn with dynam...
This paper describes a design method for mobile robot behaviours that employs a variety of soft comp...
Three soft computing paradigms for automated learning in robotic systems are briefly described. The ...
Fuzzy logic and evolutionary computation have proven to be convenient tools for handling realworld u...
Abstract — In complex systems it often occurs that relevant infor-mation about the system state and ...
Conventional fuzzy logic controller is applicable when there are only two fuzzy inputs with usually ...
Fuzzy control has shown to be a very useful tool in the eld of autonomous mobile robotics, character...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...
The automatic design of controllers for mobile robots usually requires two stages. In the first stag...
Abstract—Learning controllers in mobile robotics usually re-quires expert knowledge to define the in...
AbstractThis paper presents a learning method which automatically designs fuzzy logic controllers (F...
Basic tasks for navigation of autonomous vehicles can be performed as reactive behaviors, that direc...
This paper presents an automatic design method for fuzzy systems using genetic algorithms. A flexibl...
© 2015, Springer-Verlag Berlin Heidelberg. The majority of machine learning techniques applied to le...
In this paper we describe a supervised robot learning method which enables a mobile robot to ac-quir...
An autonomous mobile robot operating in an unstructured environment must be able to learn with dynam...
This paper describes a design method for mobile robot behaviours that employs a variety of soft comp...
Three soft computing paradigms for automated learning in robotic systems are briefly described. The ...
Fuzzy logic and evolutionary computation have proven to be convenient tools for handling realworld u...
Abstract — In complex systems it often occurs that relevant infor-mation about the system state and ...
Conventional fuzzy logic controller is applicable when there are only two fuzzy inputs with usually ...
Fuzzy control has shown to be a very useful tool in the eld of autonomous mobile robotics, character...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...