As a result of good modeling capabilities, neural networks have been used extensively for a number of chemical engineering applications such as sensor data analysis, fault detection and nonlinear process identification. However, only in recent years, with the upsurge in the research on nonlinear control, has its use in process control been widespread. This paper intend to provide an extensive review of the various applications utilizing neural networks for chemical process control, both in simulation and online implementation. We have categorized the review under three major control schemes; predictive control, inverse-model-based control, and adaptive control methods, respectively. In each of these categories, we summarize the major applic...
Artificial neural networks (ANN) provide a range of powerful new techniques for solving problems in ...
This paper discusses the application of artificial neural networks in the area of process monitoring...
AbstractAlthough the neural inverse model controllers have demonstrated high potential in the non-co...
As a result of good modeling capabilities, neural networks have been used extensively for a number o...
International audienceThe purpose of this chapter is to review the main applications of neural netwo...
International audienceThe purpose of this chapter is to review the main applications of neural netwo...
During the development of intelligent systems inspired by biological neural system, in the last two ...
this paper aims at combining powerful nonlinear modeling techniques with existing linear control tec...
In recent years there has been a significant increase in the number of control system techniques tha...
Reactor temperature control is very important as it affects chemical process operations and the prod...
A pilot scaled chemical reactor is constructed and commissioned to study various conventional and ad...
A pilot scaled chemical reactor is constructed and commissioned to study various conventional and ad...
Although nonlinear inverse and predictive control techniques based on artificial neural networks hav...
Although nonlinear inverse and predictive control techniques based on artificial neural networks hav...
Chemical processes are systems that include complicated network of material, energy and process flow...
Artificial neural networks (ANN) provide a range of powerful new techniques for solving problems in ...
This paper discusses the application of artificial neural networks in the area of process monitoring...
AbstractAlthough the neural inverse model controllers have demonstrated high potential in the non-co...
As a result of good modeling capabilities, neural networks have been used extensively for a number o...
International audienceThe purpose of this chapter is to review the main applications of neural netwo...
International audienceThe purpose of this chapter is to review the main applications of neural netwo...
During the development of intelligent systems inspired by biological neural system, in the last two ...
this paper aims at combining powerful nonlinear modeling techniques with existing linear control tec...
In recent years there has been a significant increase in the number of control system techniques tha...
Reactor temperature control is very important as it affects chemical process operations and the prod...
A pilot scaled chemical reactor is constructed and commissioned to study various conventional and ad...
A pilot scaled chemical reactor is constructed and commissioned to study various conventional and ad...
Although nonlinear inverse and predictive control techniques based on artificial neural networks hav...
Although nonlinear inverse and predictive control techniques based on artificial neural networks hav...
Chemical processes are systems that include complicated network of material, energy and process flow...
Artificial neural networks (ANN) provide a range of powerful new techniques for solving problems in ...
This paper discusses the application of artificial neural networks in the area of process monitoring...
AbstractAlthough the neural inverse model controllers have demonstrated high potential in the non-co...