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Application of artificial neural networks to predict sliding wear resistance of Ni-TiN nanocomposite coatings deposited by pulse electrodeposition

机译:人工神经网络在脉冲电沉积沉积沉积的Ni-TiN纳米复合涂层的推动耐磨性中的应用

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摘要

Ni-TiN composite coatings were prepared on 45 steel substrates by pulse electrodeposition. The effect of plating parameters on the sliding wear resistance of the Ni-TiN nanocomposite coatings was investigated using transmission electron microscopy (TEM), scanning electron microscopy (SEM), and X-ray diffraction (XRD). The sliding wear resistance of the Ni-TiN coatings was modeled using artificial neural networks (ANNs). TiN grains in Ni-TiN coatings were large when the average current density was relatively low and the pulse interval was long. At a given wear distance, with increasing TiN concentration in the bath, the wear loss of the coating initially decreased and subsequently increased. The average crystallite sizes for Ni and TiN in Ni-TiN coating were approximately 58 and 39 nm, respectively. The ANN model, which showed an error of approximately 4.2%, can effectively predict sliding wear resistance of Ni-TiN nanocomposite coatings.
机译:通过脉冲电沉积在45钢基材上制备Ni-锡复合涂层。 使用透射电子显微镜(TEM),扫描电子显微镜(SEM)和X射线衍射(XRD)研究了电镀参数对Ni-TiN纳米复合涂层的滑动耐磨性的影响。 使用人工神经网络(ANNS)建模Ni-TiN涂层的滑动耐磨性。 当平均电流密度相对较低并且脉冲间隔长时间,Ni-TiN涂层中的锡颗粒很大。 在给定的磨损距离处,随着浴中的锡浓度的增加,涂层的磨损损失最初降低并随后增加。 Ni和锡中Ni-TiN涂层的平均微晶尺寸分别为约58和39nm。 ANN模型显示出约4.2%的误差,可以有效地预测Ni-TiN纳米复合涂层的滑动耐磨性。

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