ISSN print edition: 0366-6352
ISSN electronic edition: 1336-9075
Registr. No.: MK SR 9/7

Published monthly
 

Prediction of gaseous emissions from industrial stacks using an artificial intelligence method

C. I. Anghel and A. Ozunu

Department of Chemical Engineering, Faculty of Chemistry and Chemical Engineering, University “Babes-Bolyai”, RO-3400 Cluj-Napoca, Romania

 

E-mail: canghel@chem.ubbcluj.ro

Received: 23 March 2006  Revised: 8 June 2006  Accepted: 4 July 2006

Abstract: A novel technique based on artificial intelligence methods able to predict pollutant emission concentrations from industrial stacks is presented. This procedure combines regression and classification problems into a unified technique, named minimax decision procedure. The core of this procedure is based on the minimax probability machine regression model. Using experimental databases, the trend of pollutant emissions and the level of pollution for one industrial thermal power station stack were presented. Based on this unified technique, numerical experiments provided the estimates of concentrations of CO, NOx, NO, and SO2 confirming the predictive power of this procedure.

Full paper is available at www.springerlink.com.

DOI: 10.2478/s11696-006-0075-z

 

Chemical Papers 60 (6) 410–415 (2006)

Sunday, November 24, 2024

IMPACT FACTOR 2023
2.1
SCImago Journal Rank 2023
0.381
SEARCH
Advanced
VOLUMES
© 2024 Chemical Papers