利用神经网络预测铁在气体氮化过程中氮化层的深度

Jan Setiawan
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引用次数: 0

摘要

材料的表面工程可以增加材料的经济价值。铁中的气体渗氮是一种典型的共晶温度下的热化学表面工程过程,氮扩散到表面形成伽马相和ε相形式的氮化层。本研究将采用计算方法来预测氮化层的形成。在预测过程中,使用了反向传播神经网络,输入参数为温度、氮化电位和时间,输出为氮化层深度。该预测并不区分氮化层中形成的相。由 5 个神经元组成的单隐层模型和由 6 个神经元和 5 个神经元组成的双隐层模型获得了最佳结果。单隐层训练数据的均方误差为 0.0027。而两个隐藏层的数值更高,为 0.0032。单隐层模型的绝对平均误差和均方根值分别为 0.6117 和 0.9670。对于双隐藏层模型,绝对误差和均方根值分别为 0.5894 和 1.0472。从相关系数可以看出,两个模型都只能对 10 μm 以上的深度进行较好的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PREDICTION OF DEPTH OF NITRIDE LAYER IN IRON DURING GAS NITRIDING USING NEURAL NETWORK
Surface engineering of materials can add economic value to the material. Gas nitriding in iron is a typical thermochemical surface engineering process at eutectoid temperatures, where nitrogen diffuses to the surface to form nitride layers in the form of gamma phase and epsilon phase. In this study, a computational approach will be taken to predict the formation of the nitriding layer. In the prediction, a backpropagation neural network is used with input parameters of temperature, nitriding potential and time with an output of nitriding layer depth. This prediction does not distinguish the phase formed in the nitriding layer. The best results were obtained in the model of single hidden layer with 5 neurons and two hidden layers with the formation starting with 6 neurons followed by 5 neurons. The mean square error of the training data for the single hidden layer is 0.0027. While for two hidden layers the value is higher at 0.0032. The results obtained for the absolute mean error and root mean square values for the single hidden layer model are 0.6117 and 0.9670. For the two hidden layers model, the absolute error and root mean square values are 0.5894 and 1.0472. It can be seen from the correlation coefficient that both models can only predict well at depths of more than 10 μm.
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