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Monitoring of tool wear using measured machining forces and neuro-fuzzy modelling approaches during machining of GFRP composites

机译:在GFRP复合材料加工过程中使用测得的加工力和神经模糊建模方法监控刀具磨损

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摘要

The challenges of machining, particularly milling, glass fibre-reinforced polymer (GFRP) composites are their abrasiveness (which lead to excessive tool wear) and susceptible to workpiece damage when improper machining parameters are used. It is imperative that the condition of cutting tool being monitored during the machining process of GFRP composites so as to re-compensating the effect of tool wear on the machined components. Until recently, empirical data on tool wear monitoring of this material during end milling process is still limited in existing literature. Thus, this paper presents the development and evaluation of tool condition monitoring technique using measured machining force data and Adaptive Network-Based Fuzzy Inference Systems during end milling of the GFRP composites. The proposed modelling approaches employ two different data partitioning techniques in improving the predictability of machinability response. Results show that superior predictability of tool wear was observed when using feed force data for both data partitioning techniques. In particular, the ANFIS models were able to match the nonlinear relationship of tool wear and feed force highly effective compared to that of the simple power law of regression trend. This was confirmed through two statistical indices, namely r~2 and root mean square error (RMSE), performed on training as well as checking datasets.
机译:加工(尤其是铣削)玻璃纤维增​​强聚合物(GFRP)复合材料的挑战是其磨蚀性(导致过度的工具磨损),并且在使用不合适的加工参数时容易受到工件损坏。当务之急是在GFRP复合材料的加工过程中监控切削刀具的状况,以重新补偿刀具磨损对加工零件的影响。直到最近,在现有的文献中,有关在端铣削过程中对该材料的刀具磨损进行监控的经验数据仍然很有限。因此,本文介绍了在GFRP复合材料端铣削过程中使用测得的加工力数据和基于自适应网络的模糊推理系统对刀具状态进行监控的技术的开发和评估。所提出的建模方法采用两种不同的数据分区技术来提高可加工性响应的可预测性。结果表明,当将进给力数据用于两种数据分区技术时,均观察到了出色的刀具磨损可预测性。与回归趋势的简单幂定律相比,ANFIS模型尤其能够有效地匹配刀具磨损和进给力的非线性关系。这是通过两个统计指标,即r〜2和均方根误差(RMSE)在训练和检查数据集上得到证实的。

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