Title :
Predicting Post-rolling Flatness by Statistical Analysis
Author_Institution :
Orebro Univ., Vasteras
Abstract :
A concept to improve post-rolling flatness and offer flat products to the end customer would decrease substantially run-around scrap. This would mean lower energy consumption and lower environmental load per rolled strip. Part of the concept is advanced prediction tools. This paper reports current work in post-rolling flatness prediction of cold-rolled metal strip. The work was tested in an aluminium mill in Sweden where 8-series aluminium is produced. On-line measurements are made in a cold rolling mill and post-rolling measurements in a tension levelling line, using the same measurement technique in both processing lines. This allows measurements to be easily compared. There are too many thermal and mechanical parameters to make a reliable analytical model of the post-rolling flatness. Instead, two statistical methods to predict the post-rolling flatness are evaluated: multiple linear regression and artificial neural networks. Results show that both techniques are suitable for the purpose, but multiple linear regression is preferable.
Keywords :
cold rolling; neural nets; power consumption; production engineering computing; rolling mills; statistical analysis; artificial neural networks; cold rolling mill; energy consumption; environmental load; multiple linear regression; post-rolling flatness prediction; statistical analysis; tension levelling line; thermal mechanical parameters; Aluminum; Analytical models; Artificial neural networks; Energy consumption; Linear regression; Measurement techniques; Milling machines; Statistical analysis; Strips; Testing;
Conference_Titel :
Industrial Electronics and Applications, 2007. ICIEA 2007. 2nd IEEE Conference on
Conference_Location :
Harbin
Print_ISBN :
978-1-4244-0737-8
Electronic_ISBN :
978-1-4244-0737-8
DOI :
10.1109/ICIEA.2007.4318915