Production of Low Cost Carbon-Fiber through Energy Optimization of Stabilization Process

Materials (Basel). 2018 Mar 5;11(3):385. doi: 10.3390/ma11030385.

Abstract

To produce high quality and low cost carbon fiber-based composites, the optimization of the production process of carbon fiber and its properties is one of the main keys. The stabilization process is the most important step in carbon fiber production that consumes a large amount of energy and its optimization can reduce the cost to a large extent. In this study, two intelligent optimization techniques, namely Support Vector Regression (SVR) and Artificial Neural Network (ANN), were studied and compared, with a limited dataset obtained to predict physical property (density) of oxidative stabilized PAN fiber (OPF) in the second zone of a stabilization oven within a carbon fiber production line. The results were then used to optimize the energy consumption in the process. The case study can be beneficial to chemical industries involving carbon fiber manufacturing, for assessing and optimizing different stabilization process conditions at large.

Keywords: Artificial Neural Network; complex manufacturing systems; intelligent optimization techniques; limited data; support vector machines; system identification.