A real-time model based on least squares support vector machines and output bias update for the prediction of NOx emission from coal-fired power plant

被引:1
|
作者
Faisal Ahmed
Hyun Jun Cho
Jin Kuk Kim
Noh Uk Seong
Yeong Koo Yeo
机构
[1] Hanyang University,Department of Chemical Engineering
来源
关键词
NOx Prediction; Real-time Model; Least Squares Support Vector Machine; Partial Least Squares; Output Bias Update;
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学科分类号
摘要
The accurate and reliable real-time estimation of NOx emission is indispensable for the implementation of successful control and optimization of NOx emission from a coal-fired power plant. We apply a real-time update scheme to least squares support vector machines (LSSVM) to build a real-time version for real-time prediction of NOx. Incorporation of LSSVM in the update scheme enhances its generalization ability for long-term predictions. The proposed real-time model based on LSSVM (LSSVM-scheme) is applied to NOx emission process data from a coal-fired power plant in Korea to compare the prediction performance of NOx emission with real-time model based on partial least squares (PLS-scheme). Prediction results show that LSSVM-scheme predicts robustly for a long passage of time with higher accuracy in comparison with PLS-scheme. We also present a user friendly and sophisticated graphical user interface to enhance the convenience to approach the features of real-time LSSVM-scheme.
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页码:1029 / 1036
页数:7
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