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Application of artificial neural networks to predict the grain size of nano-crystalline nickel coatings

机译:人工神经网络在预测纳米晶镍镀层晶粒尺寸中的应用

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摘要

In this paper, a feed-forwarded multilayer perceptron artificial neural network framework is used to model the dependence of the grain size of nano-crystalline nickel coatings on the process parameters namely current density, saccharin concentration and bath temperature. The process parameters were used as the model inputs and the resulting grain size of the nano-crystalline coming as the output of the model. The effect of the mentioned process Parameters on the grain size of the deposited layer during the electroplating of nano-crystalline coatings from Watts-type bath was investigated using X-ray diffraction (XRD) technique. Comparison between the model predictions and the experimental observations predicted a remarkable agreement between them. The predictions of the model and sensitivity analysis showed that among the effective process parameters the current density has the most significant effect and the bath temperature has the smallest effect on the resulting grain Size.
机译:本文采用前馈多层感知器人工神经网络框架对纳米晶镍涂层的晶粒尺寸与电流密度,糖精浓度和熔池温度等工艺参数的关系进行建模。将工艺参数用作模型输入,并将所得纳米晶体的晶粒尺寸作为模型输出。使用X射线衍射(XRD)技术研究了上述工艺参数对从Watts型镀液中电镀纳米晶体涂层过程中沉积层晶粒尺寸的影响。模型预测和实验观察之间的比较预测了它们之间的显着一致性。模型预测和灵敏度分析表明,在有效的工艺参数中,电流密度对最终晶粒度的影响最大,而熔池温度对晶粒度的影响最小。

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