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Tool wear prediction models during end milling of glass fibre-reinforced polymer composites

机译:玻璃纤维增​​强聚合物复合材料端铣削期间的刀具磨损预测模型

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摘要

Composite products are often subjected to secondary machining processes as integral part of component manufacture. However, rapid tool wear becomes the limiting factor in maintaining consistent machining quality of the composite materials. Hence, this study demonstrates the development of an indirect approach in predicting and monitoring the wear on carbide tool during end milling using multiple regression analysis (MRA) and neuro-fuzzy modelling. Although the results have indicated that acceptable predictive capability can be well achieved using MRA, the application of neuro-fuzzy yields a significant improvement in the prediction accuracy. It is apparent that the accuracies are pronounced as a result of nonlinear membership function and hybrid learning algorithms. Using the developed models, a timely decision for tool re-conditioning or tool replacement can be achieved effectively.
机译:复合产品通常作为组件制造的一部分而经历二次加工过程。然而,快速的工具磨损成为维持复合材料一致的加工质量的限制因素。因此,本研究证明了使用多元回归分析(MRA)和神经模糊模型在端铣削中预测和监控硬质合金刀具磨损的间接方法的发展。尽管结果表明使用MRA可以很好地实现可接受的预测能力,但是神经模糊的应用在预测准确性上产生了显着的提高。显然,由于非线性隶属度函数和混合学习算法的缘故,其准确性是显而易见的。使用开发的模型,可以有效地及时做出工具重新调整或更换工具的决定。

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