Журналы →  CIS Iron and Steel Review →  2020 →  №2 →  Назад

Raw materials
Название Evaluation of bulk material behavior control method in technological units using DEM. Part 2
DOI 10.17580/cisisr.2020.02.01
Автор A. V. Boikov, R. V. Savelev, V. A. Payor, A. V. Potapov
Информация об авторе

St. Petersburg Mining University (St. Petersburg, Russia):

A. V. Boikov, Ph.D., Assistant Professor, Dept. of Automation of Technological Processes and Production, E-mail: boikov_av@mail.ru
R. V. Savelev, Student
V. A. Payor, Student

 

ESSS (Florianopolis, Brazil):
A. V. Potapov, Dr. Eng., Technical Director, ESSS Rocky DEM Chief Technology Officer

Реферат

The research is dedicated to the development of special devices (capsules) that can be used to control the mining ore behavior in the technological unit in order to increase processes efficiency. In the first part of the article, the choice of the discrete element method for generating various particle trajectories in the unit (drum pelletizer) was substantiated. This part describes the specific technologies that were used to recognize the pelletizing mode. In particular, conversation of paths to sensor readings is implemented using the Matlab Sensor Fusion and Tracking Toolbox. The obtained readings were processed using two neural network classifiers (DNN and LSTM). As a result, stable models for recognizing the pelletizing modes of the unit were obtained. LSTM recognition accuracy is greater than DNN. The developed approach can be used to recognize the operating modes of other technological units. In addition, data on particles trajectories can be used to improve DEM models of technological processes. Future work consists of the capsule physical implementation and testing the recognition algorithm on a real unit

Ключевые слова DEM-modeling, pelletizing drums, classification of motion modes, neural networks, RNN, LSTM, bulk materials
Библиографический список

1. Sizyakov V. M., Vlasov A. A., Bazhin V. Yu. Strategic tasks of Russian metallurgical complex. Tsvetnye metally. 2016. No. 1. pp. 32–38.
2. Matveev I. A., Kalmykov A. V., Bespalov E. N. Compacting as an efficient technique for upgrading the grinding swarf and ensuring environmental safety during its storage, transportation and metallurgical processing. Tsvetnye metally. 2019. No. 5. pp. 74–80.
3. Golubev V. O., Chistyakov D. G., Brichkin V. N., Postika M. F. Population balance of aluminate solution decomposition. Tsvetnye metally. 2019. No. 8, pp. 75–81.
4. Gospodarikov A. P., Vykhodtsev Y. N., Zatsepin M. A. Mathematical modeling of seismic explosion waves impact on rock mass with a working. Journal of Mining Institute. 2017. Vol. 226. pp. 405–411.
5. Boikov A. V., Savelev R. V., Payor V. A., Erokhina O. O. The control method concept of bulk material behaviour in the pelletizing drum for improving the results of DEM-modeling. CIS Iron and Steel Review. 2019. Vol. 17. pp. 10–13.
6. Grishchenkova E.N. Development of a Neural Network for Earth Surface Deformation Prediction. Geotechnical and Geological Engineering. 2018. Vol. 36. No. 4. pp. 1953–1957.
7. Gogolinskiy K. V., Syasko V. A., Prospects and challenges of the fourth industrial revolution for instrument engineering and metrology in the field of non-destructive testing and condition monitoring. Insight. Non-Destructive Testing and Condition Monitoring. 2019. Vol. 61. No. 8. pp. 434–439.
8. Bui X. N., Nguyen H. Le H. A., Bui H. B., Do N. H. Prediction of Blast-induced Air Over-pressure in Open-Pit Mine: Assessment of Different Artificial Intelligence Techniques. Natural Resources Research. 2019. Vol. 29 No. 2. p. 571–591
9. Ahmad N. et al. Reviews on various inertial measurement unit (IMU) sensor applications. International Journal of Signal Processing Systems. 2013. Vol. 1. No. 2. pp. 256–262.
10. Kabanov E. I. Korshunov G. I., Gridina E. B. Algorithmic provisions for data processing under spatial analysis of risk of accidents at hazardous production facilities. Naukovyi Visnyk Natsionalnoho Hirnychoho Universytetu. 2019. Vol. 6. No. 6 pp. 117–121.
11. Hasan A. M. et al. Automatic estimation of inertial navigation system errors for global positioning system outage recovery. Proceedings of the Institution of Mechanical Engineers, Part G. Journal of Aerospace Engineering. 2011. Vol. 225. No. 1. pp. 86–96.
12. Brlow J. S. Inertial navigation as a basis for animal navigation. Journal of Theoretical Biology. 1964. Vol. 6. No. 1. pp. 76–117.
13. Goshen-Meskin D., Bar-Itzhack I. Y. Unified approach to iner tial navigation system error modeling. Journal of Guidance, Control, and Dynamics. 1992. Vol. 15. No. 3. pp. 648–653.
14. Tikhonov A. A. Control Method for Angular Stabilization of an Electrodynamic Tether System. Automation and Remote Control. 2020. Vol. 81. No. 2. pp. 269–286.
15. Stauffer C., Grimson W. E. L. Learning patterns of activity using real-time tracking. IEEE Transactions on pattern analysis and machine intelligence. 2000. Vol. 22. No. 8. pp. 747–757.
16. Maung T. H. H. et al. Real-time hand tracking and gesture recognition system using neural networks. World Academy of Science, Engineering and Technology. 2009. Vol. 50. pp. 466–470.
17. Ciregan D., Meier U., Schmidhuber J. Multi-column deep neural networks for image classification. 2012 IEEE Conference on Computer Vision and Pattern Recognition, Providence, RI. 2012. pp. 3642-3649. DOI: 10.1109/CVPR.2012.6248110.
18. Graves A., Schmidhuber J. Framewise phoneme classification with bidirectional LSTM and other neural network architectures. Neural networks. 2005. Vol. 18. No. 5-6. pp. 602–610.
19. Mustafaev A. S., Sukhomlinov V. S. Analytical Theory of Energy Relaxation Upon Propagation of a High-Energy Electron Beam in Gas. High Temperature. 2018. Vol. 56. No. 1. pp. 10–19.
20. Olden J. D., Joy M. K., Death R. G. An accurate comparison of methods for quantifying variable importance in artificial neural networks using simulated data. Ecological Modelling. 2004. Vol. 178. No. 3-4. pp. 389–397.
21. Kiangi K., Potapov A., Moys M. DEM validation of media shape effects on the load behaviour and power in a dry pilot mill. Minerals Engineering. 2013. Vol. 46-47. pp. 52–59.

Полный текст статьи Evaluation of bulk material behavior control method in technological units using DEM. Part 2
Назад