This paper presents three-phase evolution search methodology to automatically design fuzzy logic controllers (FLCs) that can work in a wide range of operating conditions. These include varying load, parameter variations, and unknown external disturbances. The three-phase scheme consists of an exploration phase, an exploitation phase and a robustness phase. The first two phases search for FLC with high accuracy performances while the last phase aims at obtaining FLC providing the best compromise between the accuracy and robustness performances. Simulations were performed for direct-drive two-axis robot arm. The evolved FLC with the proposed design technique found to provide a very satisfactory performance under the wide range of operation co...
Autonomous robots operating in unstructured environments clearly require some capacity for adaptive ...
Abstract: As the demand for robots to perform complex tasks grows, there is an increasing need to ut...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...
Evolutionary development of a fuzzy-logic controller is described and is evaluated in the context of...
Evolutionary development of a fuzzy logic controller is described and is evaluated in the context of...
In this study, a fuzzy logic controller (FLC) was designed to manipulate an articulated robot grippe...
Summarization: An important issue not addressed in the literature, is related to the selection of th...
AbstractDifferential Evolution (DE) and Genetic Algorithms (GA) are population based search algorith...
This thesis describes the use of the genetic algorithm to facilitate the design process of a fuzzy l...
application/pdfBehavior of a combination of a fuzzy logic controller (FLC) and genetic algorithms (G...
This paper presents the design of a Fuzzy Logic Controller (FLC) whose parameters are optimized by u...
AbstractThis paper presents a learning method which automatically designs fuzzy logic controllers (F...
Recently, there has been extensive work on the construction of fuzzy controllers for mobile robots b...
Summarization: Fuzzy logic is widely used for mobile robot navigation. The main draw back of this ap...
This thesis focuses on the development and implementation of a robust and knowledge-based control a...
Autonomous robots operating in unstructured environments clearly require some capacity for adaptive ...
Abstract: As the demand for robots to perform complex tasks grows, there is an increasing need to ut...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...
Evolutionary development of a fuzzy-logic controller is described and is evaluated in the context of...
Evolutionary development of a fuzzy logic controller is described and is evaluated in the context of...
In this study, a fuzzy logic controller (FLC) was designed to manipulate an articulated robot grippe...
Summarization: An important issue not addressed in the literature, is related to the selection of th...
AbstractDifferential Evolution (DE) and Genetic Algorithms (GA) are population based search algorith...
This thesis describes the use of the genetic algorithm to facilitate the design process of a fuzzy l...
application/pdfBehavior of a combination of a fuzzy logic controller (FLC) and genetic algorithms (G...
This paper presents the design of a Fuzzy Logic Controller (FLC) whose parameters are optimized by u...
AbstractThis paper presents a learning method which automatically designs fuzzy logic controllers (F...
Recently, there has been extensive work on the construction of fuzzy controllers for mobile robots b...
Summarization: Fuzzy logic is widely used for mobile robot navigation. The main draw back of this ap...
This thesis focuses on the development and implementation of a robust and knowledge-based control a...
Autonomous robots operating in unstructured environments clearly require some capacity for adaptive ...
Abstract: As the demand for robots to perform complex tasks grows, there is an increasing need to ut...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...