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基于不同神经网络的DLC薄膜综合性能预测的对比研究

Comparative Study on Comprehensive Properties Prediction of DLC Thin Films Based on Different Neural Networks

  • 摘要: 类金刚石(DLC)薄膜因其具备高硬度、高耐磨性等优良性质而被广泛应用于机械、航空航天等领域。但为满足不同行业应用的需求,DLC薄膜常常采用不同的制备方法及工艺参数以获得不同的特性,对不同工艺流程制备出的样品进行表征性能测试费时费力。为了解决这一问题,文章探索了不同人工神经网络在薄膜性能预测领域应用的可行性及适用性。将试验制备的DLC薄膜数据作为训练样本,以不同的工艺参数作为输入,对应工艺下制备的DLC薄膜各项性能作为输出,对BP、ELM、KELM三种神经网络进行训练。利用验证样本对训练好的三种模型进行验证,对比三种神经网络预测值与真实值的结果、相对误差、决定系数及均方误差,以性能最佳的网络模型为样本对薄膜各性能进行灵敏度分析。结果表明,KELM的预测精度与稳定性均优于BP与ELM神经网络,更适用于DLC薄膜的综合性能预测,且得到了各工艺参数对各性能指标的影响情况。

     

    Abstract: Diamond-like carbon (DLC) films are widely used in mechanical, aerospace and other fields because of their excellent properties, such as high hardness and high wear resistance. However, in order to meet the needs of different industries, DLC thin films often adopt different preparation methods and process parameters to obtain different characteristics, and it is time-consuming and laborious to test the characterization performance of samples prepared by different process flows. In order to solve this problem, this paper explores the feasibility and applicability of different artificial neural networks in the field of film performance prediction. BP, ELM and KELM neural networks were trained by using the data of DLC films prepared by experiments as training samples, taking different process parameters as inputs and various properties of DLC films prepared by corresponding processes as outputs. Verified the three models by using the verification samples and compared the results of predictive values and true values of the three neural networks, relative error, determination coefficient and mean square error. The sensitivity analysis of the properties of the film was carried out with the best performance network model as a sample. The results show that the prediction accuracy and stability of KELM are better than BP and ELM neural networks, and KELM is more suitable for predicting the comprehensive properties of DLC films. And the influence of each process parameter on each performance index is obtained.

     

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