In this work, a study of the mapping capabilities of neuro-fuzzy networks in relation to conventional neural nets is carried out. Two representative systems, a time series model and an actual chemical process, are studied to analyze the ability of the empirical structure to capture complex nonlinear dynamics. The superiority of the neuro-fuzzy network in terms of its mapping ability is demonstrated. Performance enhancement of the empirical model is sought through incorporation of process knowledge into the identification procedure. The importance of appropriate choice of identification experiments and their role in model enhancement is highlighted through simulation studies. A nonlinear model predictive control scheme employing the neuro-fu...
In this research, the input/output data of a MIMO nonlinear system are used to create intelligent mo...
During the development of intelligent systems inspired by biological neural system, in the last two ...
AbstractMultilayer neural networks with error back-propagation learning algorithms have the capabili...
Nonlinearity is the rule rather than the exception in chemical processes. Neural networks are consid...
Modelling has become an invaluable tool in many areas of research, particularly in the control commu...
The analysis and control of complex plants often requires the principles of qualitative process mode...
The identification of nonlinear dynamical processes has become an important task in many different a...
Capturing the dynamics and control of fast complex nonlinear systems often requires the application ...
Capturing the dynamics and control of fast complex nonlinear systems often requires the application ...
Presenting current trends in the development and applications of intelligent systems in engineering,...
This paper presents a review on application of Artificial Neural Network and Fuzzy Logic in process ...
This paper presents a review on application of Artificial Neural Network and Fuzzy Logic in process ...
This paper presents a review on application of Artificial Neural Network and Fuzzy Logic in process ...
This paper reviews the architecture, representation capability, training and learning ability of a c...
This dissertation presents a new approach to the control of nonlinear dynamic systems with applicati...
In this research, the input/output data of a MIMO nonlinear system are used to create intelligent mo...
During the development of intelligent systems inspired by biological neural system, in the last two ...
AbstractMultilayer neural networks with error back-propagation learning algorithms have the capabili...
Nonlinearity is the rule rather than the exception in chemical processes. Neural networks are consid...
Modelling has become an invaluable tool in many areas of research, particularly in the control commu...
The analysis and control of complex plants often requires the principles of qualitative process mode...
The identification of nonlinear dynamical processes has become an important task in many different a...
Capturing the dynamics and control of fast complex nonlinear systems often requires the application ...
Capturing the dynamics and control of fast complex nonlinear systems often requires the application ...
Presenting current trends in the development and applications of intelligent systems in engineering,...
This paper presents a review on application of Artificial Neural Network and Fuzzy Logic in process ...
This paper presents a review on application of Artificial Neural Network and Fuzzy Logic in process ...
This paper presents a review on application of Artificial Neural Network and Fuzzy Logic in process ...
This paper reviews the architecture, representation capability, training and learning ability of a c...
This dissertation presents a new approach to the control of nonlinear dynamic systems with applicati...
In this research, the input/output data of a MIMO nonlinear system are used to create intelligent mo...
During the development of intelligent systems inspired by biological neural system, in the last two ...
AbstractMultilayer neural networks with error back-propagation learning algorithms have the capabili...