Simulation Experiment on Furnace Temperature Prediction for Supercritical CFB Units
In order to study the prediction of furnace temperature for CFB units,the PCC method was used to screen input variables,and a furnace temperature model was established using BP neural network theory.Simulation experiment was conducted on the prediction of furnace temperature for a 350 MW supercritical CFB unit.We introduced the overview of CFB supercritical variable pressure operation DC boiler,the basic theory of PCC method and BP neural network,processed the operating data of the unit and simplify 28 variables into 5 variables using the PCC method.A furnace temperature prediction model was established using BP neural network theory,and the prediction output,absolute error,and root mean square error of three different simulation experimental model structures were compared and analyzed.The results show that after simplification by the PCC method,the number of model inputs is reduced,and the temperature prediction effect of the BP network is good.This simulation experimental method is effective and conducive to cultivating students'innovative practical literacy and improving their ability to solve practical engineering problems.