摩擦系数
人工神经网络
材料科学
决定系数
摩擦系数
溅射沉积
计算机科学
复合材料
算法
人工智能
溅射
薄膜
机器学习
纳米技术
作者
Yusen Yang,Jyh‐Horng Chou,Wesley Huang,Tsow-Chang Fu,Guowei Li
标识
DOI:10.1016/j.asoc.2012.08.019
摘要
This paper applies a generalized regression neural network (GRNN) for predicting the friction coefficient of deposited Cr1−xAlxC films on high-speed steel substrates via direct current magnetron sputtering systems. The Cr1−xAlxC films exhibited some excellent characteristics, such as low friction coefficient, high hardness, and large contact angle. In this study, a GRNN model is applied for predicting the friction coefficient of Cr1−xAlxC films on high-speed steel substrates instead of complex practical experiments. The results exhibit good prediction accuracy of friction coefficient since about ±0.97% average errors and show the feasibility of the prediction model. Compared to the conventional back propagation model, the GRNN model is more suitable to predict the friction coefficient of Cr1−xAlxC films.
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