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Proceedings of the International Conference on Technology Management and InnovationAvailable to Purchase
By
ISBN:
9780791859612
No. of Pages:
612
Publisher:
ASME Press
Publication date:
2010
eBook Chapter
41 Optimization Model for Smelting Metallic Magnesium by Siliconthermic Reducing Method Based on BP Neural Networks Available to Purchase
By
Feng Gao
,
Feng Gao
College of Chemical Engineering
Shenyang University of Chemical Technology
Shenyang
, China
; [email protected]
Search for other works by this author on:
Guosheng Wang
,
Guosheng Wang
College of Chemical Engineering
Shenyang University of Chemical Technology
Shenyang
, China
; [email protected]
Search for other works by this author on:
Yunyi Liu
Yunyi Liu
College of Chemical Engineering
Shenyang University of Chemical Technology
Shenyang
, China
; [email protected]
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Page Count:
3
-
Published:2010
Citation
Gao, F, Wang, G, Ge, Y, & Liu, Y. "Optimization Model for Smelting Metallic Magnesium by Siliconthermic Reducing Method Based on BP Neural Networks." Proceedings of the International Conference on Technology Management and Innovation. Ed. Xie, H. ASME Press, 2010.
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A new optimization model for smelting metallic magnesium by siliconthermic reducing method based on BP neural network is proposed. And the three-layer BP neural network model is established to metallic magnesium smelting process. According to relative error to evaluate the model performance, results indicate that relative errors of unknown experiments simulated data are 10% below. The optimization model has a good reference and guide to the actual industrial production.
I. Introduction
II. Materials and Methods
III. Result and Discussion
IV. Conclusion
References
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