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Application of Artificial Neural Network for prediction of boride layer depth obtained on XC38 steel in molten salts

机译:人工神经网络在XC38钢熔盐中硼化物层深度预测中的应用

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摘要

This paper discusses an application of neural network system on the performance of boride layer thickness. Bonding treatment was carried out in three different molten salts consisting of borax (Na_2B4O_7) added to boron carbide (B_4C), aluminum (Al) and silicon carbides (SiC). The substrate used in this study was XC38 steel. Borides layers involved in this work was obtained from a bonding treatment at the temperature range of 800-1050 ℃ with 50℃ interval for 2, 4 and 6 h. A numerical experiment using normalized and binarized values was carried out, using a back-propagation algorithm in ANN. The modeling shows that for the three bath the depth of boride layer was predicted with good accuracy, with a highest performance of normalized values along experimental data range.
机译:本文讨论了神经网络系统在硼化物层厚度性能中的应用。结合处理是在三种不同的熔融盐中进行的,这些熔融盐由添加到碳化硼(B_4C),铝(Al)和碳化硅(SiC)中的硼砂(Na_2B4O_7)组成。本研究中使用的基材是XC38钢。这项工作涉及的硼化物层是通过在800-1050℃的温度范围内,以50℃的间隔分别进行2、4和6 h的粘接处理而获得的。使用ANN中的反向传播算法,使用归一化和二值化值进行了数值实验。该模型表明,对于三个熔池,硼化物层的深度预测精度很高,在整个实验数据范围内,归一化值的性能最高。

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