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Theoretical modelling and prediction of surface roughness for hybrid additive-subtractive manufacturing processes

机译:混合加减法制造过程的表面粗糙度的理论建模和预测

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摘要

Hybrid additive-subtractive manufacturing processes are becoming increasingly popular as a promising solution to overcome the current limitations of Additive Manufacturing (AM) technology and improve the dimensional accuracy and surface quality of parts. Surface roughness, as one of the most important surface quality measures, plays a key role in the fit of assemblies and thus needs to be thoroughly evaluated at the design and manufacturing stages. However, most of the studies on surface roughness modelling and analysis employ empirical approaches, and only consider the effect of a single manufacturing process. In particular, the existing surface roughness models are not applicable to hybrid additive-subtractive manufacturing processes in which a secondary process is involved. In this article, analytical models are established to predict the surface roughness of parts fabricated by AM as well as hybrid additive-subtractive manufacturing processes. A novel surface profile representation scheme is also proposed to increase the prediction accuracy. Case studies are performed to validate the effectiveness of the proposed models. An average of 4.25% error is observed for the AM case, which is significantly smaller than the prediction error of the existing models in the literature. Furthermore, in the hybrid case, an average of 91.83% accuracy is obtained.
机译:作为克服增材制造(AM)技术当前局限性并提高零件的尺寸精度和表面质量的一种有前途的解决方案,混合加减法制造工艺正变得越来越流行。作为最重要的表面质量度量之一,表面粗糙度在装配装配中起着关键作用,因此需要在设计和制造阶段进行彻底评估。但是,大多数有关表面粗糙度建模和分析的研究都采用经验方法,并且仅考虑单个制造过程的影响。特别地,现有的表面粗糙度模型不适用于涉及次级过程的混合减法制造过程。在本文中,建立了分析模型来预测AM制造的零件的表面粗糙度以及扣除混合添加剂的制造工艺。还提出了一种新颖的表面轮廓表示方案,以提高预测精度。进行案例研究以验证所提出模型的有效性。对于AM情况,平均观察到4.25%的误差,该误差明显小于文献中现有模型的预测误差。此外,在混合情况下,平均精度为91.83%。

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