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首页> 外文期刊>Journal of Reinforced Plastics and Composites >Application of probablistic neural network for the development of wear mechanism map for glass fiber reinforced plastics
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Application of probablistic neural network for the development of wear mechanism map for glass fiber reinforced plastics

机译:概率神经网络在玻璃纤维增​​强塑料磨损机理图开发中的应用

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摘要

Glass fiber reinforced plastic composite materials are finding increased applications due to their excellent properties. Fiber reinforced plastic (FRP) composite materials comprise soft matrix and fiber elements. This article presents the tribological aspects of glass fiber reinforced plastic composites. The wear test is carried out for FRP in a pin-on-roller wear tester. The wear rate obtained from different sliding speeds and normal pressure are plotted as a contour map. The scanning electron microscopy images are taken to study the deformations that occurred in the wear zone. The regions of different wear mechanisms are identified using scanning electron microscopy. The regions of wear mechanisms are classified using probabilistic neural networks and superimposed over wear rate contours. The wear mechanisms observed using scanning electron microscopy, along with wear rate data, are used for the construction of wear mechanism maps.
机译:玻璃纤维增​​强塑料复合材料由于其优异的性能而得到越来越多的应用。纤维增强塑料(FRP)复合材料包含软质基质和纤维元素。本文介绍了玻璃纤维增​​强塑料复合材料的摩擦学方面。 FRP的磨损测试是在销轴磨损测试仪中进行的。从不同的滑动速度和正常压力获得的磨损率绘制为轮廓图。拍摄扫描电子显微镜图像以研究在磨损区中发生的变形。使用扫描电子显微镜识别不同磨损机制的区域。磨损机制的区域使用概率神经网络进行分类,并叠加在磨损率轮廓上。使用扫描电子显微镜观察到的磨损机理以及磨损率数据,可用于构建磨损机理图。

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