Title :
Novel pattern recognition algorithm for real-time measuring coal dust with bimodal peak distribution
Author_Institution :
Inst. of Electr. Eng. & Autom., Shandong Polytech. Univ., Jinan, China
Abstract :
Real-time measurement of coal dust concentration is vital for colliery safety in production. To improve the precision, a novel inversion algorithm for dust distribution with bimodal peak is presented. A three-parameter was brought forward and the eigenvectors of 360 patterns are worked out. The pattern classification was performed according to diffraction angular with dust information. Simulation indicates the minimum recognition time is reduced to 0.05 times of that before. Thereupon, transitional patterns were supplemented and the precision increased markedly. But sometimes there was gross error. Therefore the pattern amendment function was introduced and the eigenvectors of amendment patterns were calculated. The normalized eigenvectors of amendment patterns ranked were stored in advance. During measurement the optimal patterns were recognized in the whole and amended in the local area according to the principle of the minimum of variance sum. Experiments proved the error of total dust and respiring dust declined from 6% to 2% and from 9% to 3%, respectively. It is concluded that the novel algorithm has improved the precision and real-time performance of dust sensor remarkably.
Keywords :
chemical sensors; chemical variables measurement; coal; disasters; dust; eigenvalues and eigenfunctions; mining industry; pattern classification; photoelectric devices; production engineering computing; safety; amendment pattern eigenvectors; bimodal peak distribution; colliery safety; diffraction angular; dust distribution; inversion algorithm; minimum recognition time; pattern amendment function; pattern classification; pattern recognition algorithm; photoelectric dust sensor; real-time coal dust concentration measurement; Classification algorithms; Coal; Diffraction; Pattern classification; Pattern recognition; Real-time systems; Time measurement; Coal dust sensor; Pattern amendment; Pattern classification; Pattern recognition; Respiring coal dust;
Conference_Titel :
Control Conference (CCC), 2012 31st Chinese
Conference_Location :
Hefei
Print_ISBN :
978-1-4673-2581-3