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THIN FILM ROUGHNESS OPTIMIZATION IN THE TIN COATINGS USING GENETIC ALGORITHMS

机译:基于遗传算法的锡涂层薄膜粗糙度优化

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Optimization is important to identify optimal parameters in many disciplines to achieve high quality products including optimization of thin film coating parameters. Manufacturing costs and customization of cutting tool properties are the two main issues in the process of Physical Vapour Deposition (PVD). The aim of this paper is to find the optimal parameters get better thin film roughness using PVD coating process. Three input parameters were selected to represent the solutions in the target data, namely Nitrogen gas pressure (N2), Argon gas pressure (Ar), and Turntable speed (TT), while the surface roughness was selected as an output response for the Titanium nitrite (TiN). Atomic Force Microscopy (AFM) equipment was used to characterize the coating roughness. In this study, an approach in modeling surface roughness of Titanium Nitrite (TiN) coating using Response Surface Method (RSM) has been implemented to obtain a proper output result. In order to represent the process variables and coating roughness, a quadratic polynomial model equation was developed. Genetic algorithms were used in the optimization work of the coating process to optimize the coating roughness parameters. Finally, to validate the developed model, actual data were conducted in different experimental run. In RSM validation phase, the actual surface roughness fell within 90% prediction interval (PI). The absolute range of residual errors (e) was very low less than 10 to indicate that the surface roughness could be accurately predicted by the model. In terms of optimization and reduction the experimental data, GAs could get the best lowest value for roughness compared to experimental data with reduction ratio of 46.75%.
机译:在许多领域中,优化对于确定最佳参数很重要,以获得包括薄膜涂层参数优化在内的高质量产品。制造成本和刀具属性的定制是物理气相沉积(PVD)过程中的两个主要问题。本文的目的是找到最佳参数,以使用PVD涂层工艺获得更好的薄膜粗糙度。选择了三个输入参数来表示目标数据中的解,即氮气压力(N2),氩气压力(Ar)和转盘速度(TT),同时选择了表面粗糙度作为亚硝酸钛的输出响应(锡)。使用原子力显微镜(AFM)设备表征涂层的粗糙度。在这项研究中,已采用一种使用响应表面法(RSM)对亚硝酸钛(TiN)涂层的表面粗糙度进行建模的方法,以获得适当的输出结果。为了表示工艺变量和涂层粗糙度,建立了二次多项式模型方程。遗传算法被用于涂层工艺的优化工作中,以优化涂层粗糙度参数。最后,为了验证所开发的模型,在不同的实验运行中进行了实际数据。在RSM验证阶段,实际表面粗糙度落在90%的预测间隔(PI)之内。残余误差(e)的绝对范围非常小,小于10,表明该模型可以准确预测表面粗糙度。在优化和减少实验数据方面,与减少46.65%的实验数据相比,遗传算法可以得到最佳的最低粗糙度值。

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