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Regression modeling and particle swarm optimization of mechanical properties of potassium hydroxide pretreated Dharbai fiber-reinforced polyester composites

机译:氢氧化钾预处理的Dharbai纤维增强聚酯复合材料的力学模型回归建模和粒子群优化

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This paper aims at improving the mechanical properties of Dharbai fiber-reinforced polyester composites through surface modification of Dharbai fibers using potassium hydroxide alkali treatment. The fibers were subjected to alkali treatment as per full factorial design, and the composites were fabricated by reinforcing the treated fibers in polyester matrix. The response surface methodology was employed to study the effect of treatment parameters namely solution concentration (%) and soaking time (h) on the mechanical properties of Dharbai fiber-reinforced composites. The regression model was developed for correlating the interactions between solution concentrations and soaking time on the tensile, flexural, and impact strength of the composites. The results obtained confirmed that both solution concentration (%) and soaking time (h) play critical role in influencing the mechanical properties of Dharbai fiber-reinforced composites. The better treatment conditions for optimum mechanical properties were determined using heuristic optimization method called particle swarm optimization. The optimized value obtained using particle swarm optimization technique was validated using confirmation test, and the results were found to be significant.
机译:本文旨在通过使用氢氧化钾碱处理对Dharbai纤维进行表面改性来改善Dharbai纤维增强聚酯复合材料的机械性能。按照全因子设计对纤维进行碱处理,并通过在聚酯基质中增强处理过的纤维来制造复合材料。采用响应面方法研究了处理参数即溶液浓度(%)和浸泡时间(h)对Dharbai纤维增强复合材料力学性能的影响。开发了回归模型,用于将溶液浓度和浸泡时间之间的相互作用与复合材料的拉伸,弯曲和冲击强度相关联。获得的结果证实,溶液浓度(%)和浸泡时间(h)在影响Dharbai纤维增强复合材料的机械性能中都起着关键作用。使用启发式优化方法(称为粒子群优化)确定了最佳机械性能的更好处理条件。通过确认试验验证了使用粒子群优化技术获得的优化值,结果是有意义的。

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