Methods for the identification of linear, nonlinear dependencies help models of fuzzy logic and neural network (NN), data preprocessing, design of a computational training scheme for a five-layer neuro fuzzy network (NFN) are proposed. A software and algorithmic complex has been implemented, including modules for computational circuits of the NFN, parametric and structural identification. The effectiveness of methods for forecasting random time series is shown using the example of numerical results
Complex fuzzy logic is an extension to traditional fuzzy logic where truth values are extended to co...
The model proposed in this paper, is a hybridization of fuzzy neural network (FNN) and a functional ...
In this paper, we introduce Random Weights Fuzzy Neural Networks as a suitable tool for solving pred...
This paper presents a training algorithm for regularized fuzzy neural networks which is able to gene...
Methodological bases for identification, data processing for forecasting technological time series b...
A novel fuzzy neural network, called FuNN, is applied here for time-series modeling. FuNN models hav...
Forecasting (prediction of) time series of chaotic systems is known as one of the most remarkable re...
Neuro-fuzzy system (NFS) has successfully been widely applied in solving problems across diverse fie...
Neuro-fuzzy system (NFS) has successfully been widely applied in solving problems across diverse fie...
The fuzzy cognitive map (FCM) has gradually emerged as a powerful paradigm for knowledge representat...
Researched and developed mechanisms for optimizing the identification of random time series based on...
Researched and developed mechanisms for optimizing the identification of random time series based on...
In this paper, we present a study on the use of fuzzy neural networks and their application to the p...
In this paper, a Meta-cognitive Recurrent Fuzzy Inference System is proposed where recurrence is bro...
Abslract. In this paper, the methods of time series for nonlinearity are briefly surveyed, with part...
Complex fuzzy logic is an extension to traditional fuzzy logic where truth values are extended to co...
The model proposed in this paper, is a hybridization of fuzzy neural network (FNN) and a functional ...
In this paper, we introduce Random Weights Fuzzy Neural Networks as a suitable tool for solving pred...
This paper presents a training algorithm for regularized fuzzy neural networks which is able to gene...
Methodological bases for identification, data processing for forecasting technological time series b...
A novel fuzzy neural network, called FuNN, is applied here for time-series modeling. FuNN models hav...
Forecasting (prediction of) time series of chaotic systems is known as one of the most remarkable re...
Neuro-fuzzy system (NFS) has successfully been widely applied in solving problems across diverse fie...
Neuro-fuzzy system (NFS) has successfully been widely applied in solving problems across diverse fie...
The fuzzy cognitive map (FCM) has gradually emerged as a powerful paradigm for knowledge representat...
Researched and developed mechanisms for optimizing the identification of random time series based on...
Researched and developed mechanisms for optimizing the identification of random time series based on...
In this paper, we present a study on the use of fuzzy neural networks and their application to the p...
In this paper, a Meta-cognitive Recurrent Fuzzy Inference System is proposed where recurrence is bro...
Abslract. In this paper, the methods of time series for nonlinearity are briefly surveyed, with part...
Complex fuzzy logic is an extension to traditional fuzzy logic where truth values are extended to co...
The model proposed in this paper, is a hybridization of fuzzy neural network (FNN) and a functional ...
In this paper, we introduce Random Weights Fuzzy Neural Networks as a suitable tool for solving pred...