This paper concerns with implementation of support vector machine algorithm for developing improved models capable of predicting the solubility of CO2 in five different polymers namely polystyrene (PS), poly vinyl acetate (PVAC), polypropylene (PP), poly butylene succinate-co-adipate (PBSA) and poly butylene succinate (PBS). Validity of the presented models has been evaluated by utilizing several statistical parameters. The predictions of the developed models for polymers of PS, PVAC, PP, PBSA, PBS are in excellent agreement with corresponding experimental data with the average absolute relative deviation percent (%AARD) equal to %0.151, %0.500, %1.381, %0.158, %0.239 and R2 values of greater than 0.999. Furthermore, the estimation capability of the proposed models has been compared to a well- known equation of state (EOS) as well as artificial neural network (ANN) and adaptive neuro-fuzzy inference system (ANFIS) models. According to the results of comparative studies, it was found that the developed models are more robust, reliable and efficient than other existing techniques for improved analysis and design of polymer processing technology.
Journal article
Prediction of solubility of carbon dioxide in different polymers using support vector machine algorithm
Journal of the Taiwan Institute of Chemical Engineers, Vol.46, pp.205-213
2014
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Abstract
Details
- Title
- Prediction of solubility of carbon dioxide in different polymers using support vector machine algorithm
- Creators
- Hossein Ziaee - Islamic Azad UniversitySeyyed Mohsen Hosseini - Petroleum University of TechnologyAbdolmajid Sharafpoor - Iran University of Science & TechnologyMohammad Fazavi - Petroleum University of TechnologyMohammad Mahdi Ghiasi - National Iranian Gas CompanyAlireza Bahadori - Southern Cross University
- Publication Details
- Journal of the Taiwan Institute of Chemical Engineers, Vol.46, pp.205-213
- Identifiers
- 3460; 991012822077602368
- Academic Unit
- School of Environment, Science and Engineering; Faculty of Science and Engineering
- Resource Type
- Journal article