Fuzzy rule-based for predicting machining performance for SNTR carbide in milling titanium alloy (Ti-6Al-4v)

M. Adnan, A. Zain, H. Haron
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引用次数: 1

Abstract

Rule-based reasoning and fuzzy logic are used to develop a model to predict the surface roughness value of milling process. The process parameters considered in this study are cutting speed, feed rate, and radial rake angle, each has five linguistic values. The fuzzy rule-based model is developed using MATLAB fuzzy logic toolbox. Nine linguistic values and twenty four IF-THEN rules are created for model development. Predicted result of the proposed model has been compared to the experimental result, and it gave a good agreement with the correlation 0.9845. The differences between experimental result and predicted result have been proven with estimation error value 0.0008. The best predicted value of surface roughness using the fuzzy rule-based is located at combination of High cutting speed, VeryLow feed rate, and High radial rake angle.
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基于模糊规则的SNTR硬质合金铣削钛合金(Ti-6Al-4v)加工性能预测
利用规则推理和模糊逻辑建立了铣削加工表面粗糙度预测模型。本研究中考虑的工艺参数有切削速度、进给速度和径向前角,每一个参数都有五个语言值。利用MATLAB模糊逻辑工具箱开发了基于模糊规则的模型。为模型开发创建了9个语言值和24个IF-THEN规则。将模型的预测结果与实验结果进行了比较,其相关系数为0.9845,符合较好。验证了实验结果与预测结果的差异,估计误差值为0.0008。基于模糊规则的表面粗糙度预测值在高切削速度、极低进给速度和大径向前倾角组合时最佳。
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