Prediction Research Based on the Optimized BP Neural Network for Coal Calorific Value.

Autor: Jing, Yuan, Fu, Zhong-guang, Qi, Min-fang, Wang, JIan-xing
Zdroj: 2012 Spring Congress on Engineering & Technology; 1/ 1/2012, p1-4, 4p
Abstrakt: The calorific value of coal is an important factor for the economic operation of coal fired power plant. However calorific value is tremendous difference between the different coal, and even if coal is from the same mine. Restricted by the coal market, most of coal fired power plants can not burn the designed-coal by now in China. The properties of coal as received are changing so frequently that pulverized coal firing is always with the unexpected condition. Therefore, the researches on the on-line prediction of calorific value of coal has a profound significance for the economic operation of power plants. Aiming at the problem of uncertainty of calorific value of coal, a soft measurement model for calorific value of coal is proposed based on the BP neural network with appropriate optimization. It is shown by an example that the optimized model, which could be established at a high rate of speed, was at the higher training accuracy and with generalization ability. The model could provide a good guidance for the calculation of the calorific value of coal and optimization operation of coal fired power plants. [ABSTRACT FROM PUBLISHER]
Databáze: Complementary Index