Title :
Soft-sensing model for flue gas oxygen content based on kernel fuzzy C-means clustering and local modeling method
Author :
Wang Wei ; Hang, Zhang ; Luo Dayong
Author_Institution :
Sch. of Inf. Sci. & Eng., Central South Univ., Changsha, China
Abstract :
Based on the fact that the flue gas oxygen content in power plant is hard to detect effectively, a soft-sensing model based on kernel fuzzy C-means clustering and local modeling method is proposed from improving the online self-adaptive ability of the soft-sensing model. Firstly, several sub-sample sets are formed by using kernel fuzzy C-means clustering algorithm to cluster analysis of the history database. Secondly, the modeling neighborhood dataset is obtained through traversal search in the sub-sample set, whose clustering center has the highest similarity with the current input data. Thirdly, the least square support vector machine based on multi-population hybrid optimization algorithm is used to build the local model for flue gas oxygen content. Finally, the simulation experiments are carried out based on the actual operation data. Simulation results show that compared with the standard LSSVM soft-sensing model, although the computing cost is increased, the proposed soft-sensing model has better prediction performance and can satisfy the real-time requirements for flue gas oxygen content in boiler combustion process.
Keywords :
flue gases; fuzzy set theory; gas sensors; least squares approximations; optimisation; oxygen; pattern clustering; power plants; support vector machines; flue gas oxygen content; kernel fuzzy c-means clustering; least square support vector machine; local modeling method; multipopulation hybrid optimization algorithm; neighborhood dataset modeling; online self-adaptive ability; power plant; soft-sensing model; traversal search; Adaptation models; Clustering algorithms; Computational modeling; Data models; Kernel; Predictive models; Support vector machines; Flue Gas Oxygen Content; Kernel Fuzzy C-means Clustering; Least Square Support Vector Machine; Local Modeling Method; Multi-population Hybrid Optimization Algorithm; Online Adaptive;
Conference_Titel :
Control Conference (CCC), 2011 30th Chinese
Conference_Location :
Yantai
Print_ISBN :
978-1-4577-0677-6
Electronic_ISBN :
1934-1768