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Support vector regression modelling and optimization of energy consumption in carbon fiber production line

journal contribution
posted on 2018-01-04, 00:00 authored by G Golkarnarenji, Minoo NaebeMinoo Naebe, K Badii, A S Milani, R N Jazar, H Khayyam
The main chemical industrial efforts are to systematically and continuously explore innovative computing methods of optimizing manufacturing processes to provide better production quality with lowest cost. Carbon fiber industry is one of the industries seeks these methods as it provides high production quality while consuming a lot of energy and being costly. This is due to the fact that the thermal stabilization process consumes a considerable amount of energy. Hence, the aim of this study is to develop an intelligent predictive model for energy consumption in thermal stabilization process, considering production quality and controlling stochastic defects. The developed and optimized support vector regression (SVR) prediction model combined with genetic algorithm (GA) optimizer yielded a very satisfactory set-up, reducing the energy consumption by up to 43%, under both physical property and skin-core defect constraints. The developed stochastic-SVR-GA approach with limited training data-set offers reduction of energy consumption for similar chemical industries, including carbon fiber manufacturing.

History

Journal

Computers and chemical engineering

Volume

109

Pagination

276 - 288

Publisher

Elsevier

Location

Amsterdam, The Netherlands

ISSN

0098-1354

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2017, Elsevier