Title of article :
Air pollutant emissions prediction by process modelling e Application
in the iron and steel industry in the case of a re-heating furnace
Author/Authors :
Anda Ionescu، نويسنده , , Yves Candau، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2007
Abstract :
Monitoring air pollutant emissions of large industrial installations is necessary to ensure compliance with environmental legislation. Most of
the available measurement techniques are expensive, and measurement conditions such as high-temperature emissions, difficulty of access, are
often difficult. That is why legislation can not impose a permanent emission monitoring in many countries. The possibility to replace it with
predictive models based on the routine measurements of the main control parameters of the installation is analysed in this paper. In order to
identify these models, a special measurement campaign of emissions must be performed or, alternatively, a deterministic modelling of the
process can be developed. This study was carried out in the case of a real installation in the steel industry i.e. a billet re-heating furnace. Physical
phenomena involved in combustion within the furnace were complex enough to prefer an empirical black-box modelling of the furnace over
a deterministic approach. A 3-week monitoring campaign of fume emissions at the stack was performed; furnace process parameters during
the same period were available. The relationship between CO2 emissions and furnace process parameters could successfully be expressed
linearly, while NO2 emission modelling required a non-linear model. Artificial neural networks modelling revealed a good ability to predict
NO2 and CO2 emissions.
Keywords :
Fume emissions , CO2 , NO2 , Multiple linear regression , Artificial neural networks , Correlation method , Steelworks process modelling
Journal title :
Environmental Modelling and Software
Journal title :
Environmental Modelling and Software