DocumentCode :
3589624
Title :
Online local learning soft-sensing method for ball mill load of power plant
Author :
Wei, Wang ; Hao, Chang ; Hang, Zhang ; Dayong, Luo
Author_Institution :
Huadian Electr. Power Res. Inst., Hangzhou, China
fYear :
2012
Firstpage :
6994
Lastpage :
6999
Abstract :
Based on the fact that the ball mill load in power plant is hard to detect effectively, an online local learning improved weighted least square support vector machine (WLSSVM) soft-sensing method is proposed form improving the prediction accuracy and adaptive ability of the soft-sensing model. Firstly, a similarity measurement criterion of data samples based on the samples distance and trend information is designed, and the modeling neighborhood dataset for local model is obtained by using two-step search strategy. Secondly, for the purpose of improving the prediction performance of the local model, an improved WLSSVM local model which can reflect the similarity and the error information of the modeling data is proposed, and the parameters of the local model is optimized by using improved differential evolution algorithm with mutation operation. Thirdly, in order to control the data size of the historical database, the active update strategy is adopted to realize the selective preservation of the new data. Finally, the simulation experiments are carried out based on the actual operation data of the coal pulverizing system. Simulation results show that compared with the standard LSSVM model, the proposed soft-sensing model has better prediction accurate and can predict the power plant ball mill load effectively.
Keywords :
ball milling; computerised instrumentation; evolutionary computation; learning (artificial intelligence); least squares approximations; power engineering computing; power system measurement; pulverised fuels; search problems; steam power stations; support vector machines; WLSSVM soft-sensing method; active update strategy; coal pulverizing system; historical database; improved WLSSVM local model; improved differential evolution algorithm; mutation operation; online local learning soft-sensing method; power plant ball mill load; similarity measurement criterion; two-step search strategy; weighted least square support vector machine; Adaptation models; Data models; Load modeling; Power generation; Predictive models; Silicon; Support vector machines; Active Update Strategy; Ball Mill Load; Improved Differential Evolution Algorithm; Improved Weighted Least Square Support Vector Machine; Online Local Learning; Samples Distance and Trend Information;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control Conference (CCC), 2012 31st Chinese
ISSN :
1934-1768
Print_ISBN :
978-1-4673-2581-3
Type :
conf
Filename :
6391173
Link To Document :
بازگشت