摘要
The combustion behavior of two single coals and three coal blends in a 300 kW coal-fired furnace under variableoperating conditions was monitored by a flame monitoring system based on image processing and spectral analysis. A similaritycoefficient was defined to analyze the similarity of combustion behavior between two different coal types. A total of 20 flamefeatures, extracted by the flame monitoring system, were ranked by weights of their importance estimated using ReliefF, a featureselection algorithm. The mean of the infrared signal was found to have by far the highest importance weight among the flamefeatures. Support vector machine (SVM) was used to identify the coal types. The number of flame features used to build the SVMmodel was reduced from 20 to 12 by combining the methods of ReliefF and SVM, and computational precision was guaranteedsimultaneously. A threshold was found for the relationship between the error rate and similarity coefficient, which were positivelycorrelated. The success rate decreased with increasing similarity coefficient. The results obtained demonstrate that the system canachieve the online" identification of coal blends in industry.
The combustion behavior of two single coals and three coal blends in a 300 kW coal-fired furnace under variable operating conditions was monitored by a flame monitoring system based on image processing and spectral analysis. A similarity coefficient was defined to analyze the similarity of combustion behavior between two different coal types. A total of 20 flame features, extracted by the flame monitoring system, were ranked by weights of their importance estimated using Relief F, a feature selection algorithm. The mean of the infrared signal was found to have by far the highest importance weight among the flame features. Support vector machine(SVM) was used to identify the coal types. The number of flame features used to build the SVM model was reduced from 20 to 12 by combining the methods of Relief F and SVM, and computational precision was guaranteed simultaneously. A threshold was found for the relationship between the error rate and similarity coefficient, which were positively correlated. The success rate decreased with increasing similarity coefficient. The results obtained demonstrate that the system can achieve the online identification of coal blends in industry.
基金
supported by the National Basic Research Program(973 Program)of China(No.2015CB251501)