Time series prediction can be considered as a function approximation problem whose inputs are determined by using past samples of the sequence to be predicted. ANFIS networks are neural models particularly suited to the solution of such problems, which usually require a data driven estimation technique. In this context, clustering procedures represent a straightforward approach to the synthesis of ANFIS networks. A novel use of clustering, working in the joint input-output data space, is proposed in the paper. It is intended to improve the ANFIS approximation accuracy by directly estimating the hyperplanes associated with the consequent parts of Sugeno first-order rules. Simulation tests and comparisons with other prediction techniques are ...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
Adaptive Neuro-Fuzzy Inference Systems (ANFIS) are one of the most popular type of fuzzy neural netw...
In this paper, the time series forecasting problem is approached by using a specific procedure to se...
ANFIS networks are neural models particularly suited to the solution of time series forecasting prob...
A useful neural network paradigm for the solution of function approximation problems is represented ...
Adaptive Neuro-Fuzzy Inference Systems (ANFIS) are one of the most popular type of fuzzy neural netw...
The application of machine learning and soft computing techniques for function approximation is a wi...
In the context of time series analysis, forecasting time series is known as an important sub-study f...
This paper proposes a method for clustering of time series, based upon the ability of deep Reservoir...
Abstract—This paper presents an improved adaptive Neuro-fuzzy inference system (ANFIS) for predictin...
Forecasting (prediction of) time series of chaotic systems is known as one of the most remarkable re...
A novel energy management system (EMS) synthesis procedure based on adaptive neurofuzzy inference sy...
Abstract—This paper describes how the clustering topology of an input space data distribution is uti...
The predictions for the original chaos patterns can be used to correct the distorted chaos pattern w...
In this paper, we consider some different aspects involved in the prediction of biological time seri...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
Adaptive Neuro-Fuzzy Inference Systems (ANFIS) are one of the most popular type of fuzzy neural netw...
In this paper, the time series forecasting problem is approached by using a specific procedure to se...
ANFIS networks are neural models particularly suited to the solution of time series forecasting prob...
A useful neural network paradigm for the solution of function approximation problems is represented ...
Adaptive Neuro-Fuzzy Inference Systems (ANFIS) are one of the most popular type of fuzzy neural netw...
The application of machine learning and soft computing techniques for function approximation is a wi...
In the context of time series analysis, forecasting time series is known as an important sub-study f...
This paper proposes a method for clustering of time series, based upon the ability of deep Reservoir...
Abstract—This paper presents an improved adaptive Neuro-fuzzy inference system (ANFIS) for predictin...
Forecasting (prediction of) time series of chaotic systems is known as one of the most remarkable re...
A novel energy management system (EMS) synthesis procedure based on adaptive neurofuzzy inference sy...
Abstract—This paper describes how the clustering topology of an input space data distribution is uti...
The predictions for the original chaos patterns can be used to correct the distorted chaos pattern w...
In this paper, we consider some different aspects involved in the prediction of biological time seri...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
Adaptive Neuro-Fuzzy Inference Systems (ANFIS) are one of the most popular type of fuzzy neural netw...
In this paper, the time series forecasting problem is approached by using a specific procedure to se...