Comparing regressors selection methods for the Soft Sensor design of a Sulfur Recovery Unit
Conference Paper
Publication Date:
2006
abstract:
The paper proposes a comparison of different strategies of regressors selection for the design of a Soft Sensor for a Sulfur Recovery Unit of a refinery. The Soft Sensor is designed to replace the on line analyzer during maintenance and it is designed by using nonlinear MA models implemented by a MLP neural network. A number of strategies for the automatic choice of influent input variables and regressors selection, on the basis of available experimental data, are compared with a strategy based on a trial and error approach, guided by the knowledge of the experts, both in terms of their performance and their computational complexity.
Iris type:
04.01 Contributo in Atti di convegno
List of contributors: