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Application of Fuzzy Rule-Based Model to Predict TiAlN Coatings Roughness

机译:基于模糊规则的模型在预测TiAln涂层粗糙度中的应用

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In this work, an approach for predicting the roughness of Titanium Aluminum Nitride (TiAlN) coatings using fuzzy ruled-based model was discussed. TiAlN coatings were produced using magnetron sputtering process. Tungsten carbide (WC) was selected as the substrate and titanium alloy was used as the material to coat the cutting tool. The sputtering power, substrate bias voltage and substrate temperature were selected as the input variables while roughness of the TiAlN coatings was considered as the response variable. A statistical design of experiments method known as centre cubic design (CCD) was selected to collect the data for developing the fuzzy rules. The prediction performances of the fuzzy rule-based model with respect to percentage error, mean squared error (MSE), co-efficient determination (R2) and model accuracy were compared with the response surface regression model (RSM). The result shown that the fuzzy rule-based model has much better predicting capability compared to the RSM.
机译:在这项工作中,讨论了使用模糊统治的模型预测氮化钛(TiAln)涂层粗糙度的方法。使用磁控溅射工艺生产TiAln涂层。选择碳化钨(WC)作为基材和钛合金用作涂覆切削工具的材料。选择溅射功率,基板偏置电压和衬底温度作为输入变量,而TiAln涂层的粗糙度被认为是响应变量。选择称为中心立方体设计(CCD)的实验方法的统计设计,以收集用于开发模糊规则的数据。与响应表面回归模型(RSM)进行比较了与百分比误差,平均误差(MSE),共同高效确定(R2)和模型精度的模糊规则的模型的预测性能。结果表明,与RSM相比,模糊规则的模型具有更好的预测能力。

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