Title :
GM-PSO based dynamically forecasting and compensation of liquid steel temperature
Author :
Li, Guizhi ; Yang, Zhenshan
Author_Institution :
Yingkou Univ. Zone, Yingkou, China
Abstract :
Accurately forecasting the temperature of liquid steel directly affects the quality of steel and continuous casting operation. To solve the problem of real time temperature forecasting and compensation of dynamic liquid steel temperature measuring system, a forecasting model based on the over-damped second-order system theory is developed applying the collected raw data of the liquid steel´s temperature, in which a grey model based particle swarm optimization (GM-PSO) is presented for solving both the small size samples problem of the raw data and excluding the unreliable data. Then both the raw data and the generated data are employed to conduct the model parameter identification. Simulation results show that the proposed method performance better than the traditional genetic algorithms based ones in considerably improving both the forecasting accuracy for small sample and compensation accuracy.
Keywords :
casting; compensation; forecasting theory; grey systems; liquid alloys; particle swarm optimisation; quality control; steel; temperature; temperature measurement; GM-PSO algorithm; continuous casting operation; dynamic liquid steel temperature measuring system; genetic algorithms; grey model based particle swarm optimization; model parameter identification; over-damped second order system theory; realtime temperature forecasting model; steel quality; temperature compensation accuracy; Accuracy; Electrostatic discharges; Equations; Predictive models; Size measurement; Steel; Temperature measurement; continuous temperature measuring; grey forecasting model; particle swarm optimization; temperature compensation;
Conference_Titel :
Electrical & Electronics Engineering (EEESYM), 2012 IEEE Symposium on
Conference_Location :
Kuala Lumpur
Print_ISBN :
978-1-4673-2363-5
DOI :
10.1109/EEESym.2012.6258716