TY - JOUR
T1 - Multimode Monitoring of Oxy-Gas Combustion Through Flame Imaging, Principal Component Analysis, and Kernel Support Vector Machine
AU - Bai, Xiaojing
AU - Lu, Gang
AU - Hossain, Md Moinul
AU - Yan, Yong
AU - Liu, Shi
N1 - Publisher Copyright:
© 2017 Taylor & Francis.
PY - 2017/5/4
Y1 - 2017/5/4
N2 - This article presents a method for the multimode monitoring of combustion stability under different oxy-gas fired conditions based on flame imaging, principal component analysis (PCA), and kernel support vector machine (KSVM) techniques. The images of oxy-gas flames are segmented into premixed and diffused regions through the watershed transform method. The weighted color and texture features of the diffused and premixed regions are extracted and projected into two subspaces using the PCA to reduce the data dimensions and noises. The multi-class KSVM model is finally built based on the flame features in the principal component subspace to identify the operation condition. Two classic multivariate statistic indices, for example, Hotelling’s T2 and squared prediction error, are used to assess the normal and abnormal states for the corresponding operation condition. The experimental results obtained on a lab-scale oxy-gas rig show that the weighted color and texture features of the defined diffused and premixed regions are effective for detecting the combustion state and that the proposed PCA-KSVM model is feasible and effective to monitor a combustion process under variable operation conditions.
AB - This article presents a method for the multimode monitoring of combustion stability under different oxy-gas fired conditions based on flame imaging, principal component analysis (PCA), and kernel support vector machine (KSVM) techniques. The images of oxy-gas flames are segmented into premixed and diffused regions through the watershed transform method. The weighted color and texture features of the diffused and premixed regions are extracted and projected into two subspaces using the PCA to reduce the data dimensions and noises. The multi-class KSVM model is finally built based on the flame features in the principal component subspace to identify the operation condition. Two classic multivariate statistic indices, for example, Hotelling’s T2 and squared prediction error, are used to assess the normal and abnormal states for the corresponding operation condition. The experimental results obtained on a lab-scale oxy-gas rig show that the weighted color and texture features of the defined diffused and premixed regions are effective for detecting the combustion state and that the proposed PCA-KSVM model is feasible and effective to monitor a combustion process under variable operation conditions.
KW - Combustion stability
KW - Flame imaging
KW - Kernel support vector machine
KW - Multimode process monitoring
KW - Principal components analysis
UR - https://www.scopus.com/pages/publications/85013413527
U2 - 10.1080/00102202.2016.1250749
DO - 10.1080/00102202.2016.1250749
M3 - 文章
AN - SCOPUS:85013413527
SN - 0010-2202
VL - 189
SP - 776
EP - 792
JO - Combustion Science and Technology
JF - Combustion Science and Technology
IS - 5
ER -