The main problem in efficiently building robust fuzzy-neural models of nonlinear systems lies in the difficulty to define a "meaningful" fuzzy rule-base. Our approach to the solution of such a problem is based on a hybrid method which integrates fuzzy systems with qualitative models. We introduce qualitative models to exploit the available, although incomplete, a priori physical knowledge on the system with the goal to infer, through qualitative simulation, all of its possible behaviors.We show here that a rule-base, which captures all of the distinctions in the system states, is automatically generated by encoding the knowledge of the system dynamics described by the outcomes of its qualitative simulation. Such a rule-base properly initial...
This paper presents a methodology for generating data for training a fuzzy relational model, one neu...
AbstractMultilayer neural networks with error back-propagation learning algorithms have the capabili...
This paper describes a novel idea for designing a fuzzy-neural network for modeling of nonlinear sys...
The main problem in efficiently building robust fuzzy-neural models of nonlinear systems lies in the...
The performance of neuro-fuzzy schemes strictly depends on the informative potential about the syst...
This article deals with simulation of approximate models of dynamic systems. We propose an approach ...
The most problematic issues in fuzzy modeling of nonlinear system dynamics deal with robustness and ...
This article deals with simulation of approximate models of dynamic systems. We propose an approach ...
This paper presents a method for the identification of the dynamics of non-linear systems by learnin...
Fuzzy systems have been proved to be excellent candidates for system dynamics identification. Howeve...
In previous papers, we presented an empirical methodology based on Neural Networks for obtaining fu...
Several mathematical formalisms can be exploited to model complex systems, in order to capture diffe...
We demonstrate the use of qualitative models in the DHP method of training neurocontrollers. Two Fuz...
Abstract: This short paper presents the overview of an ongoing project which goal is to obtain and s...
: Qualitative modeling may be applied when knowledge about a system is only available in linguistic ...
This paper presents a methodology for generating data for training a fuzzy relational model, one neu...
AbstractMultilayer neural networks with error back-propagation learning algorithms have the capabili...
This paper describes a novel idea for designing a fuzzy-neural network for modeling of nonlinear sys...
The main problem in efficiently building robust fuzzy-neural models of nonlinear systems lies in the...
The performance of neuro-fuzzy schemes strictly depends on the informative potential about the syst...
This article deals with simulation of approximate models of dynamic systems. We propose an approach ...
The most problematic issues in fuzzy modeling of nonlinear system dynamics deal with robustness and ...
This article deals with simulation of approximate models of dynamic systems. We propose an approach ...
This paper presents a method for the identification of the dynamics of non-linear systems by learnin...
Fuzzy systems have been proved to be excellent candidates for system dynamics identification. Howeve...
In previous papers, we presented an empirical methodology based on Neural Networks for obtaining fu...
Several mathematical formalisms can be exploited to model complex systems, in order to capture diffe...
We demonstrate the use of qualitative models in the DHP method of training neurocontrollers. Two Fuz...
Abstract: This short paper presents the overview of an ongoing project which goal is to obtain and s...
: Qualitative modeling may be applied when knowledge about a system is only available in linguistic ...
This paper presents a methodology for generating data for training a fuzzy relational model, one neu...
AbstractMultilayer neural networks with error back-propagation learning algorithms have the capabili...
This paper describes a novel idea for designing a fuzzy-neural network for modeling of nonlinear sys...