An Efficient Fuzzy Logic Modelling of TiN Coating Thickness

Ahmed Abu-Khadrah
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Abstract

In this paper, fuzzy logic was implemented as a proposed approach for modelling of Thickness as an output response of thin film layer in Titanium Nitrite (TiN). The layer was deposited using Physical Vapor Deposition (PVD) process that uses a sputtering technique to coat insert cutting tools with TiN. Central cubic design (CCD) was used for designing the optimal points of the experiment. In order to develop the fuzzy rules, the experimental data that collected by PVD was used. Triangular membership functions (Trimf) were used to develop the fuzzy prediction model. Residual error (e) and prediction accuracy (A) were used for validating the result of the proposed fuzzy model. The result of the developed fuzzy model with triangular membership function revealed that the average residual error of 0.2 is low and acceptable. Furthermore, the model obtained high prediction accuracy with 90.04%. The result revealed that the rule-based model of fuzzy logic could be an efficient approach to predict coatings layer thickness in the TiN.
TiN涂层厚度的一种有效模糊逻辑建模方法
本文采用模糊逻辑对亚硝酸钛(TiN)薄膜层的厚度作为输出响应进行建模。该层采用物理气相沉积(PVD)工艺沉积,该工艺使用溅射技术在插入刀具上涂覆TiN。采用中心立方设计(CCD)设计实验最优点。为了建立模糊规则,使用了PVD采集的实验数据。采用三角隶属函数(Trimf)建立模糊预测模型。残差(e)和预测精度(A)用于验证所提出的模糊模型的结果。建立的三角隶属函数模糊模型的结果表明,平均残差为0.2,是可以接受的。模型的预测精度达到90.04%。结果表明,基于规则的模糊逻辑模型是预测TiN涂层厚度的有效方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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