Optimization of rubber mixture production using a validated technological sequence of methods

IF 3.2 4区 工程技术 Q2 ENGINEERING, CHEMICAL Polymer Engineering and Science Pub Date : 2024-08-24 DOI:10.1002/pen.26926
Zeynep Uruk, Alper Kiraz, Bağdagül Karaağaç
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Abstract

In this study, a combination of Plackett–Burman and Box–Behnken designs is applied to discover the relationships between the components of rubber compounds and technical specifications. Optimization of rubber compound formulation is realized by support vector regression integrated genetic algorithm to minimize compound cost. Twelve components potentially affecting the technical specifications of rubber compound, which are natural rubber, carbon black, white filler, stearic acid, zinc oxide, antiozonant, antioxidant, process oil, curing retarder, curing agent, and accelerator, are screened through Plackett–Burman design to decide the significant variables. Afterwards, four significant parameters, including carbon black, process oil, curing agent, and accelerator are analyzed using Box–Behnken design to minimize the number of experiments while obtaining the correlation between formulation and specifications. Lastly, a support vector regression integrated genetic algorithm is implemented to predict optimum compound formulation at minimum cost.Highlights Optimization of rubber compound to reduce the mixture and curing cost. Combination of Plackett–Burman and Box–Behnken designs. Integration of support vector regression to genetic algorithm. Correlations between the amounts of components and technical specifications.
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使用经过验证的技术序列方法优化橡胶混合物生产
本研究结合普拉克特-伯曼(Plackett-Burman)设计和方框-贝肯(Box-Behnken)设计来发现橡胶复合物成分与技术规格之间的关系。通过支持向量回归集成遗传算法实现橡胶复合物配方的优化,使复合物成本最小化。通过 Plackett-Burman 设计筛选出可能影响橡胶复合物技术指标的 12 种成分,即天然橡胶、炭黑、白填料、硬脂酸、氧化锌、抗偶氮剂、防老剂、工艺油、硫化缓凝剂、硫化剂和促进剂,以确定重要变量。然后,采用盒-贝肯设计对炭黑、工艺油、固化剂和促进剂等四个重要参数进行分析,以尽量减少实验次数,同时获得配方与规格之间的相关性。最后,采用支持向量回归集成遗传算法,以最低成本预测最佳胶料配方。 亮点 优化橡胶胶料,降低混合物和硫化成本。将 Plackett-Burman 和 Box-Behnken 设计相结合。将支持向量回归与遗传算法相结合。成分数量与技术规格之间的相关性。
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来源期刊
Polymer Engineering and Science
Polymer Engineering and Science 工程技术-高分子科学
CiteScore
5.40
自引率
18.80%
发文量
329
审稿时长
3.7 months
期刊介绍: For more than 30 years, Polymer Engineering & Science has been one of the most highly regarded journals in the field, serving as a forum for authors of treatises on the cutting edge of polymer science and technology. The importance of PE&S is underscored by the frequent rate at which its articles are cited, especially by other publications - literally thousand of times a year. Engineers, researchers, technicians, and academicians worldwide are looking to PE&S for the valuable information they need. There are special issues compiled by distinguished guest editors. These contain proceedings of symposia on such diverse topics as polyblends, mechanics of plastics and polymer welding.
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