In this work advanced nonlinear neural networks based control system design algorithms are adopted to control a mechanistic model for an ethanol fermentation process. The process model equations for such systems are highly nonlinear. A neural network strategy has been implemented in this work for capturing the dynamics of the mechanistic model for the fermentation process. The neural network achieved has been validated against the mechanistic model. Two neural network based nonlinear control strategies have also been adopted using the model identified. The performance of the feedback linearization technique was compared to neural network model predictive control in terms of stability and set point tracking capabilities. Under servo conditio...
In this work a SISO non-linear predictive controller was developed for an extractive alcoholic ferme...
This article investigates the design of linear and nonlinear model predictive controllers (MPCs) in ...
Most advanced computer-aided control applications rely on good dynamics process models. The performa...
this paper aims at combining powerful nonlinear modeling techniques with existing linear control tec...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Black-box modeling techniques based on artificial neural networks are opening new horizons for model...
This work provides a manual design space exploration regarding the structure, type, and inputs of a ...
This work provides a manual design space exploration regarding the structure, type, and inputs of a ...
This work provides a manual design space exploration regarding the structure, type, and inputs of a ...
This work provides a manual design space exploration regarding the structure, type, and inputs of a ...
This work provides a manual design space exploration regarding the structure, type, and inputs of a ...
In this work a SISO non-linear predictive controller was developed for an extractive alcoholic ferme...
This article investigates the design of linear and nonlinear model predictive controllers (MPCs) in ...
Most advanced computer-aided control applications rely on good dynamics process models. The performa...
this paper aims at combining powerful nonlinear modeling techniques with existing linear control tec...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Black-box modeling techniques based on artificial neural networks are opening new horizons for model...
This work provides a manual design space exploration regarding the structure, type, and inputs of a ...
This work provides a manual design space exploration regarding the structure, type, and inputs of a ...
This work provides a manual design space exploration regarding the structure, type, and inputs of a ...
This work provides a manual design space exploration regarding the structure, type, and inputs of a ...
This work provides a manual design space exploration regarding the structure, type, and inputs of a ...
In this work a SISO non-linear predictive controller was developed for an extractive alcoholic ferme...
This article investigates the design of linear and nonlinear model predictive controllers (MPCs) in ...
Most advanced computer-aided control applications rely on good dynamics process models. The performa...