Hybrid fuzzy-first principles models can be a good alternative if a complete physical model is difficult to derive. These hybrid models consist of a framework of dynamic mass and energy balances, supplemented by fuzzy submodels describing additional equations, such as mass transformation and transfer rates. Identification of these fuzzy submodels is one of the main issues in constructing hybrid models. In this paper, a new approach to constructing hybrid fuzzy-first principles models is presented, which uses a Kalman filter for parameter estimation. In addition, a comparison between three classes of identification techniques for fuzzy submodels is presented: fuzzy cluster-ing, genetic algorithms and neuro-fuzzy methods. The comparison is il...
Abstract — In this paper, we introduce a new evolutionary methodology to design fuzzy inference syst...
Abstract: The application of fuzzy clustering techniques has recently become in a very useful altern...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
Hybrid fuzzy-first principles models can be a good alternative if a complete physical model is diffi...
Hybrid fuzzy-first principles models can be a good alternative if a complete physical model is diffi...
Hybrid fuzzy-first principles models can be attractive if a complete physical model is difficult to ...
Recent applications of fuzzy control have created an urgent demand for fuzzy modelling techniques. S...
[[abstract]]In this paper, a hybrid clustering and gradient descent approach is proposed for automat...
This paper introduces a hybrid genetic algorithm that uses fuzzy c-means clustering technique as a m...
A recursive approach for adaptation of fuzzy rule-based model structure has been developed and teste...
A model of power demand represents the foundation of any intelligent Energy Management System, and i...
Abstract — This paper presents different approaches to the problem of fuzzy rules extraction by usin...
Major assumptions in computational intelligence and machine learning consist of the availability of ...
In this work an evolutionary fuzzy system (EFS) is presented and applied to an environmental problem...
Abstract — In this paper, we introduce a new evolutionary methodology to design fuzzy inference syst...
Abstract: The application of fuzzy clustering techniques has recently become in a very useful altern...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
Hybrid fuzzy-first principles models can be a good alternative if a complete physical model is diffi...
Hybrid fuzzy-first principles models can be a good alternative if a complete physical model is diffi...
Hybrid fuzzy-first principles models can be attractive if a complete physical model is difficult to ...
Recent applications of fuzzy control have created an urgent demand for fuzzy modelling techniques. S...
[[abstract]]In this paper, a hybrid clustering and gradient descent approach is proposed for automat...
This paper introduces a hybrid genetic algorithm that uses fuzzy c-means clustering technique as a m...
A recursive approach for adaptation of fuzzy rule-based model structure has been developed and teste...
A model of power demand represents the foundation of any intelligent Energy Management System, and i...
Abstract — This paper presents different approaches to the problem of fuzzy rules extraction by usin...
Major assumptions in computational intelligence and machine learning consist of the availability of ...
In this work an evolutionary fuzzy system (EFS) is presented and applied to an environmental problem...
Abstract — In this paper, we introduce a new evolutionary methodology to design fuzzy inference syst...
Abstract: The application of fuzzy clustering techniques has recently become in a very useful altern...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...