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Development and characterization of glass/polyester composites filled with industrial wastes using statistical techniques

机译:使用统计技术开发和表征充满工业废料的玻璃/聚酯复合材料

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A new class of polyester composites reinforced with E-glass fiber and filled with different weight proportions of granite and fly ash are fabricated. Mechanical and tribological properties of the composites are evaluated and compared. Between the two fillers chosen, fly ash filled composites shows better tensile, flexural, impact and erosion resistance than that of granite filled composites. Erosion wear experiments are conducted as per Taguchi design of experiment. The results indicate that impact velocity, filler content and impingement angle influence the wear rate significantly. Steady-state erosion experiment indicates improvement in erosion resistance of the unfilled samples with filler addition. Two predictive models, one based on artificial neural network and the other on mathematical approach are suggested. The predicted and experimental values of erosion rate are showing good agreement, and are confirming the remarkable ability of a well-trained neural network.
机译:制备了一类新型的用玻璃纤维增​​强的聚酯复合材料,并填充了不同重量比的花岗岩和粉煤灰。对复合材料的机械和摩擦学性能进行了评估和比较。在选择的两种填料之间,粉煤灰填充的复合材料比花岗岩填充的复合材料具有更好的拉伸,挠曲,冲击和侵蚀性能。侵蚀磨损实验是根据田口设计的实验进行的。结果表明,冲击速度,填料含量和冲击角对磨损率有显着影响。稳态腐蚀实验表明,添加填料可改善未填充样品的耐蚀性。提出了两种预测模型,一种基于人工神经网络,另一种基于数学方法。侵蚀速率的预测值和实验值显示出良好的一致性,并证实了训练有素的神经网络的卓越能力。

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