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Back Propagation Neural Network
Data Model
Data Preprocessing
Mathematical Model
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Neural Network Soft Sensor Application in Cement Industry: Prediction of Clinker Quality Parameters
Neural Network Soft Sensor Application in Cement Industry: Prediction of Clinker Quality Parameters,10.1109/PACC.2011.5979038,Ajaya Kumar Pani,Vamsi V
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Neural Network Soft Sensor Application in Cement Industry: Prediction of Clinker Quality Parameters
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Ajaya Kumar Pani
,
Vamsi Vadlamudi
,
R. J. Bhargavi
,
Hare Krishna Mohanta
A soft sensor tries to estimate difficult to measure quality parameters from the knowledge of easy to measure online process variables. Empirical approach of soft sensor development has gained much popularity recently due to availability of huge quantity of actual process data stored in the industrial database. In this work a soft sensor based on
back propagation neural network
has been developed for rotary cement kiln. For this purpose, data for all variables associated with rotary cement kiln were collected over a period of one month from a cement industry having a capacity of 10000 tons of clinker production per day.
Data preprocessing
of the raw data has been performed to remove the anomalies present in the original data. The processed data was used to develop the
neural network model
of the kiln.
Model simulation
produced quite satisfactory prediction of free lime, C3S, C2S and C3A.
Conference:
International Conference on Process Automation, Control and Computing - PACC
, 2011
DOI:
10.1109/PACC.2011.5979038
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