首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part B. Journal of engineering manufacture >Towards intelligent CFRP composite machining: Surface analysis methods and statistical data analysis of machined fibre laminate surfaces
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Towards intelligent CFRP composite machining: Surface analysis methods and statistical data analysis of machined fibre laminate surfaces

机译:致智能CFRP复合材料加工:表面分析方法和加工光纤层压表面的统计数据分析

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摘要

Many carbon fibre reinforced polymer composite parts need to be edged trimmed before use to ensure both geometry and mechanical performance of the part edge matches the design intent. Measurement and control of machining induced surface damage of composite material is key to ensuring the part retains its strength and fatigue properties. Typically, the overall surface roughness of the machined face is taken to be an indicator of the amount of damage to the surface, and it is important that the measurement and prediction of surface roughness is completed reliably. It is known that the surface damage is heavily dependent on the fibre orientation of the composite and cutting tool edge condition. This research has developed a new ply-by-ply surface roughness measurement methods using optical focus variation surface analysis and image segmentation for calculating areal surface roughness parameters of a machined carbon fibre composite laminate. Machining experiments have been completed using a polycrystalline diamond edge trimming tool at increasing levels of cutting edge radius. Optical surface measurement and μ-CT scanning have been used to assess machining induced surface and sub-surface defects on individual fibre orientations. Statistical analysis has been used to assess the significance of machining parameters on Sa (arithmetic mean height of area) and Sv (areal magnitude of maximum valley depth) areal roughness parameters, on both overall roughness and ply-by-ply fibre orientations. Empirical models have been developed to predict surface roughness parameters using statistical methods. It has been shown that cutting edge degradation, fibre orientation and feed rate will significantly affect the cutting mechanism, machining induced surface defects and surface roughness parameters.
机译:许多碳纤维增强聚合物复合材料零件在使用前需要进行边缘修整,以确保零件边缘的几何结构和机械性能符合设计意图。复合材料加工表面损伤的测量和控制是确保零件保持其强度和疲劳性能的关键。通常,机加工表面的整体表面粗糙度被视为表面损伤程度的指标,可靠地完成表面粗糙度的测量和预测非常重要。众所周知,表面损伤在很大程度上取决于复合材料的纤维取向和刀具刃口状况。本研究开发了一种新的逐层表面粗糙度测量方法,使用光学聚焦变化表面分析和图像分割来计算加工碳纤维复合材料层压板的面粗糙度参数。使用聚晶金刚石修边工具在不断增加的切削刃半径水平上完成了加工实验。光学表面测量和μ-CT扫描已被用于评估单个光纤方向上加工引起的表面和亚表面缺陷。统计分析用于评估加工参数对Sa(面积算术平均高度)和Sv(最大谷深的面积大小)面积粗糙度参数的显著性,包括整体粗糙度和逐层纤维取向。已经开发了经验模型,用统计方法预测表面粗糙度参数。研究表明,切削刃退化、纤维取向和进给速度将显著影响切削机理、加工引起的表面缺陷和表面粗糙度参数。

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