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A modeling approach for prediction of erosion behavior of glass fiber-polyester composites

机译:预测玻璃纤维-聚酯复合材料腐蚀行为的建模方法

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In recent years, a fairly good number of articles dealing in characterization of solid particle erosion of glass fiber reinforced composites are available but exhaustive study on this vital aspect leading to understand erosion phenomenon is hardly found in the literature. Therefore, in the present work, a theoretical model based on principle of conservation of particle kinetic energy is developed to determine wear rate of glass-polyester composites due to multiple impact erosion. Room temperature erosion tests are then carried out to study the effect of various control factors in an interacting environment on the erosion behavior of these composites. For this purpose, design of experiments approach utilizing Taguchi's orthogonal arrays is adopted to test the specimens on air jet type erosion test configuration. The results indicate that erodent size, fiber loading, impingement angle and impact velocity are the significant factors in the order of their influence on wear rate. Taguchi approach enables to determine optimal parameter settings that lead to minimization of erosion rate. Artificial neural network (ANN) approach is applied to the erosive wear data to reach at acceptable predictive models. Scanning electron microscopy of the eroded surface of the composites is performed for observation of the features such as crack formation, fiber fragmentation and matrix body deformation. Finally, popular evolutionary approach known genetic algorithm (GA) is used to generalize the method of finding out optimal factor settings for minimum wear rate.
机译:近年来,有大量关于玻璃纤维增​​强复合材料的固体颗粒腐蚀的表征的文章,但是在文献中几乎没有详尽地研究这一重要方面以了解腐蚀现象。因此,在本工作中,建立了基于颗粒动能守恒原理的理论模型,以确定由于多次冲击腐蚀引起的玻璃-聚酯复合材料的磨损率。然后进行室温腐蚀试验,以研究相互作用环境中各种控制因素对这些复合材料腐蚀行为的影响。为此,采用了田口正交阵列的实验方法设计,以空气喷射式侵蚀测试配置对试样进行测试。结果表明,侵蚀尺寸,纤维负载,冲击角和冲击速度是影响磨损率的重要因素。 Taguchi方法可以确定导致腐蚀速率最小化的最佳参数设置。人工神经网络(ANN)方法应用于腐蚀磨损数据,以达到可接受的预测模型。对复合材料的腐蚀表面进行扫描电子显微镜观察特征,例如裂纹形成,纤维断裂和基体变形。最后,使用流行的进化方法已知遗传算法(GA)来概括找出最小磨损率的最佳因子设置的方法。

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