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Artificial Neural Network and Response Surface Methodology Based Analysis on Solid Particle Erosion Behavior of Polymer Matrix Composites

机译:基于人工神经网络和响应面方法的聚合物基复合材料固体颗粒侵蚀行为分析

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摘要

Polymer-based fibrous composites are gaining popularity in marine and sports industries because of their prominent features like easy to process, better strength to weight ratio, durability and cost-effectiveness. Still, erosive behavior of composites under cyclic abrasive impact is a significant concern for the research fraternity. In this paper, the S type woven glass fibers reinforced polymer matrix composites (PMC ) are used to analyze the bonding behavior of reinforcement and matrix against the natural abrasive slurry. The response surface methodology is adopted to analyze the effect of various erosion parameters on the erosion resistance. The slurry pressure, impingement angle and nozzle diameter, were used as erosion parameters whereas erosion loss, i.e., weight loss during an erosion phenomenon was considered as a response parameter. The artificial neural network model was used to validate the attained outcomes for an optimum solution. The comparative analysis of response surface methodology (RSM) and artificial neural network (ANN) models shows good agreement with the erosion behavior of glass fiber reinforced polymer matrix composites.
机译:聚合物基纤维复合材料因其突出的特征(例如易于加工,更好的强度重量比,耐用性和成本效益)而在海事和体育行业中越来越受欢迎。尽管如此,复合材料在循环磨料冲击下的腐蚀行为仍是研究界关注的重点。本文采用S型玻璃纤维增​​强聚合物基复合材料(PMC)分析增强材料与基体对天然磨料的粘结性能。采用响应面法分析了各种腐蚀参数对耐蚀性的影响。浆液压力,冲击角和喷嘴直径被用作腐蚀参数,而腐蚀损失,即腐蚀现象期间的重量损失被认为是响应参数。人工神经网络模型用于验证所获得的结果,以获得最佳解决方案。响应面方法(RSM)和人工神经网络(ANN)模型的比较分析表明,其与玻璃纤维增​​强聚合物基复合材料的腐蚀行为具有良好的一致性。

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