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Experimental investigation and prediction of wear behavior of cotton fiber polyester composites

机译:棉纤维聚酯复合材料磨损性能的实验研究与预测

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Abstract The cotton fiber reinforced polyester composites were fabricated with varying amount of graphite fillers (0, 3, 5 wt.%) with a hand lay-up technique. Wear tests were planned by using a response surface (Box Behnken method) design of experiments and conducted on a pin-on-disc machine (POD) test setup. The effect of the weight percentage of graphite content on the dry sliding wear behavior of cotton fiber polyester composite (CFPC) was examined by considering the effect of operating parameters like load, speed, and sliding distance. The wear test results showed the inclusion of 5 wt.% of graphite as fillers in CFPC increase wear resistance compared to 3 wt.% of graphite fillers. The graphite fillers were recommended for CFPC to increase the wear resistance of the material. A scanning electron microscope (SEM) was used to study the wear mechanism. To predict the wear behavior of the composite material, comparisons were made between the general regression technique and an artificial neural network (ANN). The conformation test results revealed the predicted wear with the ANN was acceptable when compared with the actual experimental results and the regression mathematical models.
机译:摘要采用手工铺层技术,用不同含量的石墨填料(0、3、5 wt。%)制备棉纤维增强聚酯复合材料。通过使用响应面(Box Behnken方法)设计实验来计划磨损测试,并在针式光盘机(POD)测试装置上进行磨损测试。通过考虑操作参数(如载荷,速度和滑动距离)的影响,研究了石墨含量的重量百分比对棉纤维聚酯复合材料(CFPC)的干式滑动磨损行为的影响。磨损测试结果显示,与3 wt%的石墨填料相比,CFPC中包含5 wt。%的石墨作为填料可提高耐磨性。推荐将石墨填料用于CFPC,以提高材料的耐磨性。使用扫描电子显微镜(SEM)研究磨损机理。为了预测复合材料的磨损行为,在一般回归技术和人工神经网络(ANN)之间进行了比较。构象测试结果表明,与实际实验结果和回归数学模型相比,使用ANN预测的磨损是可以接受的。

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