In this paper, an interactively recurrent functional neural fuzzy network (IRFNFN) with fuzzy differential evolution (FDE) learning method was proposed for solving the control and the prediction problems. The traditional differential evolution (DE) method easily gets trapped in a local optimum during the learning process, but the proposed fuzzy differential evolution algorithm can overcome this shortcoming. Through the information sharing of nodes in the interactive layer, the proposed IRFNFN can effectively reduce the number of required rule nodes and improve the overall performance of the network. Finally, the IRFNFN model and associated FDE learning algorithm were applied to the control system of the water bath temperature and the foreca...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
A genetic algorithm (GA) based recurrent fuzzy neural network modeling method for dynamic nonlinear ...
A novel learning algorithm for recurrent neurofuzzy networks is introduced in this paper. The learni...
This paper presents a novel recurrent fuzzy neural network, called an interactively recurrent self-e...
Abstract—This paper proposes a recurrent fuzzy neural net-work (RFNN) structure for identifying and ...
A hardware implementation of the Takagi-Sugeno-Kan (TSK)-type recurrent fuzzy network (TRFN-H) for w...
This paper presents a Takagi-Sugeno type recurrent fuzzy-neural network with a global feedback. To i...
This paper introduces a neural fuzzy network approach for evolving system modeling. The approach use...
The paper introduces a new type of evolving fuzzy neural networks (EFuNNs), denoted as mEFuNNs, for ...
Besides the feedforward neural networks, there are the recurrent networks, where the impulses can be...
Besides the feedforward neural networks, there are the recurrent networks, where the impulses can be...
This paper presents the development of recurrent neural network based fuzzy inference system for ide...
© 2017 IEEE. The age of online data stream and dynamic environments results in the increasing demand...
[[abstract]]In this paper, a recurrent perturbation fuzzy neural network (RPFNN) is used to online a...
The paper introduces one paradigm of neuro-fuzzy techniques and an approach to building on-line, ada...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
A genetic algorithm (GA) based recurrent fuzzy neural network modeling method for dynamic nonlinear ...
A novel learning algorithm for recurrent neurofuzzy networks is introduced in this paper. The learni...
This paper presents a novel recurrent fuzzy neural network, called an interactively recurrent self-e...
Abstract—This paper proposes a recurrent fuzzy neural net-work (RFNN) structure for identifying and ...
A hardware implementation of the Takagi-Sugeno-Kan (TSK)-type recurrent fuzzy network (TRFN-H) for w...
This paper presents a Takagi-Sugeno type recurrent fuzzy-neural network with a global feedback. To i...
This paper introduces a neural fuzzy network approach for evolving system modeling. The approach use...
The paper introduces a new type of evolving fuzzy neural networks (EFuNNs), denoted as mEFuNNs, for ...
Besides the feedforward neural networks, there are the recurrent networks, where the impulses can be...
Besides the feedforward neural networks, there are the recurrent networks, where the impulses can be...
This paper presents the development of recurrent neural network based fuzzy inference system for ide...
© 2017 IEEE. The age of online data stream and dynamic environments results in the increasing demand...
[[abstract]]In this paper, a recurrent perturbation fuzzy neural network (RPFNN) is used to online a...
The paper introduces one paradigm of neuro-fuzzy techniques and an approach to building on-line, ada...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
A genetic algorithm (GA) based recurrent fuzzy neural network modeling method for dynamic nonlinear ...
A novel learning algorithm for recurrent neurofuzzy networks is introduced in this paper. The learni...