DocumentCode :
2946067
Title :
Neural networks for boiler emission prediction
Author :
Baines, Glenn
Author_Institution :
Fisher-Rosemount Syst., USA
Volume :
1
fYear :
1999
fDate :
1999
Firstpage :
435
Abstract :
In the USA and throughout the world, Pulp and Paper mills face increasingly stringent regulations, regarding air emissions from their power boilers. Mill managers must select the proper methods and technologies to meet environmental regulations. The most common technique for measuring emissions is a combination of hardware analyzers known as continuous emissions monitoring systems (GEMS). Predictive emissions monitoring systems (PEMS) are an alternative air monitoring method now gaining wide acceptance in the USA. These systems use neural network modeling techniques that are applied in powerful software engines which infer emission measurements through relationships with other known process limits. PEMS therefore can determine stack contaminants in real time by correlating emissions with key combustion unit parameters like fuel type, air and fuel flows, combustion temperatures, etc. Most of this data is available from the process control system, but for training the net there must also be simultaneous collection of the stack emissions information that can be provided with portable monitoring equipment. Predictive emissions monitoring systems based on neural networks can now be considered a viable way to combine accurate and reliable monitoring, with low purchase, installation, and maintenance costs. The paper discusses steps required to implement a neural network model for this application, as well as the issues to consider in verifying the final output from the model. Furthermore, a comparison of using a neural net PEMS system versus the traditional GEMS technology for emission monitoring is presented
Keywords :
air pollution measurement; boilers; computerised monitoring; learning (artificial intelligence); neural nets; paper industry; prediction theory; Predictive emissions monitoring; USA; air; air emission; air monitoring; boiler emission prediction; combustion temperature; continuous emissions monitoring systems; fuel flow; fuel type; hardware analyzers; neural network modeling; portable monitoring equipment; process control; stack emission; training; Boilers; Combustion; Environmental management; Fuels; Milling machines; Monitoring; Neural networks; Paper mills; Pollution measurement; Technology management;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Instrumentation and Measurement Technology Conference, 1999. IMTC/99. Proceedings of the 16th IEEE
Conference_Location :
Venice
ISSN :
1091-5281
Print_ISBN :
0-7803-5276-9
Type :
conf
DOI :
10.1109/IMTC.1999.776790
Filename :
776790
Link To Document :
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