Document Type : Review Article

Authors

1 Majlesi Branch, Islamic Azad University

2 Najafabad Branch, Islamic Azad University

Abstract

Rolling mill Industry is one of the most profitable industries in the world. Chatter phenomenon is one of the key issues in this industry. Chatter or rolling unwanted vibrations not only has an adverse effect on product quality, but also reduces considerably the efficiency with reduced rolling velocities of rolling lines.This paper is an attempt to simulate the phenomenon of Chatter more accurate than the previous performed simulations. In order to increase the production speed, it needs to avoid parameters which effect on the Chatter and varieties with the rolling lines condition. Actual values of these parameters were determined in the archives of the Mobarakeh two stand cold rolling mills and collected on the 210 case study of real chattering. To simulate the experiment, a neural network is trained and weights and bias values of the neural network with genetic optimization algorithm were used to get an optimal neural network which reduces bugs on the test data. So this model is capable to predict speed of Chatter threshold on rolling process of two stand cold rolling mill with the accuracy less than one percent. So it can be used in rolling process with the building intelligent recognition systems to prevent the creator conditions of the chatter frequency range.  

Keywords

[1] P.R. Hu, "Stability and Chatter in Rolling", Ph.D. Thesis, Northwestern University, Evanston, Illinois, 1998.
[2] P.R., Hu, K.F., Ehmann, “A dynamic model of the rolling process. Part I: homogeneous model”, Int. J. Machine Tools & Manufacture, Vol.40, pp. 1-19, 2000.
[3] M.R. Forouzan, I. Kiani, M.R. Niroomand and M. Salimi, “Analysis of chatter vibration in cold strip rolling, part II: optimization of the process parameters”, Journal of steel research international, No.79, pp.483-489 2008.
[4] I.Y. Prihod ,“Vibration monitoring system and the new methods of chatterearly diagnostics for tandem mill control,” Sheet
Rolling Mills Department, Iron and Steel Institute, Ukraine National Academy of Science,Dnipropetrovs’k, Ukraine.
[5] S. Yun., “Chatter in rolling”, Department of Mechanical Engineering Northwestern University Evnston, Illinois.
[6] K. Hyun Shin, Ch. Woo Lee, H. Kyoo Kang and Ch. Park,“ Fault diagnosis of roll shape under the speed change in hot rolling mill,” Dept. of Mechanical and Aerospace Eng., Konkuk University, Seoul, Korea,1995.
[7] P. Chung, H-Ch. Yang, Ch-Wu. Chen, and Ch. Chang, “A review of modeling errors and control for time-delaysystems utilizing the LDI criterion,” Scientific Research and Essays Vol.7, No.2, pp.244-259,January, 2012
[8] P. BallalYuvaraj, K.H. Inamdal and P.V. Patil, “Application of taguchi method for design of experiments in turning gray cast iron,” International Journal of Engineering Research and Applications (IJERA), Vol.2, No.3, pp.1391-1397, 2012.
[9] T.W.D. Farley, S. Rogers, and D. Nardini, “Understanding Mill Vibration Phenomena,” Innoval Technology Limited, 2008.
[10] M. Schlang, B. Feldkeller, B. Lang, T. Poppeand and T. Runkler, “Neural computation in steel industry,” Metals Mining and Paper Industries Group (ATD MP TM), 1997.
[11] J.M. GalvezI, E. Luis and H. ZarateII; “A model-based predictive control scheme for steal rolling mills using neural networks”, Journal of the Brazilian Society of Mechanical Science and Engineering, Vol.25, No.1, Rio de Jan, 2004.