This paper examines the underlying relationship between radial basis function artificial neural networks and a type of fuzzy controller. The major advantage of this relationship is that the methodology developed for training such networks can be used to develop 'intelligent' fuzzy controlers and an application in the field of robotics is outlined. An approach to rule extraction is also described. Much of Zadeh's original work on fuzzy logic made use of the MAX/MIN form of the compositional rule of inference. A trainable/adaptive network which is capable of learning to perform this type of inference is also developed
Dynamic control, including robotic control, faces both the theoretical challenge of obtaining accura...
Thesis (M.Ing. (Electrical and Electronic Engineering))--North-West University, Potchefstroom Campus...
This paper describes a neuro-control fuzzy critic design procedure based on reinforcement learning. ...
This paper examines the underlying relationship between radial basis function artificial neural netw...
This paper examines the underlying relationship between radial basis function artificial neural netw...
The goal of intelligent control is to achieve control objectives for complex systems where it is imp...
The goal of intelligent control is to achieve control objectives for complex systems where it is imp...
Abstract—Radial basis function (RBF) networks have advan-tages of easy design, good generalization, ...
Radial basis function networks and fuzzy rule systems are functionally equivalent under some mild co...
AbstractArtificial neural networks (ANNs) and fuzzy logic are complementary technologies. ANNs extra...
A three-step method for function approximation with a fuzzy system is proposed. First, the membershi...
AbstractArtificial neural networks (ANNs) and fuzzy logic are complementary technologies. ANNs extra...
A three-step method for function approximation with a fuzzy system is proposed. First, the membershi...
Described here is an architecture for designing fuzzy controllers through a hierarchical process of ...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
Dynamic control, including robotic control, faces both the theoretical challenge of obtaining accura...
Thesis (M.Ing. (Electrical and Electronic Engineering))--North-West University, Potchefstroom Campus...
This paper describes a neuro-control fuzzy critic design procedure based on reinforcement learning. ...
This paper examines the underlying relationship between radial basis function artificial neural netw...
This paper examines the underlying relationship between radial basis function artificial neural netw...
The goal of intelligent control is to achieve control objectives for complex systems where it is imp...
The goal of intelligent control is to achieve control objectives for complex systems where it is imp...
Abstract—Radial basis function (RBF) networks have advan-tages of easy design, good generalization, ...
Radial basis function networks and fuzzy rule systems are functionally equivalent under some mild co...
AbstractArtificial neural networks (ANNs) and fuzzy logic are complementary technologies. ANNs extra...
A three-step method for function approximation with a fuzzy system is proposed. First, the membershi...
AbstractArtificial neural networks (ANNs) and fuzzy logic are complementary technologies. ANNs extra...
A three-step method for function approximation with a fuzzy system is proposed. First, the membershi...
Described here is an architecture for designing fuzzy controllers through a hierarchical process of ...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
Dynamic control, including robotic control, faces both the theoretical challenge of obtaining accura...
Thesis (M.Ing. (Electrical and Electronic Engineering))--North-West University, Potchefstroom Campus...
This paper describes a neuro-control fuzzy critic design procedure based on reinforcement learning. ...