Cheng Mei, Jia Xiya, Zhang Zhimin
School of Material Science and Engineering, North University of China, 3 Xueyuan Road, Taiyuan 030051, China.
Engineering Research Center, Ministry of Education on Magnesium Base Material Processing Technology, 3 Xueyuan Road, Taiyuan 030051, China.
Materials (Basel). 2024 Oct 10;17(20):4956. doi: 10.3390/ma17204956.
Rare-earth magnesium alloys exhibit higher comprehensive mechanical properties compared to other series of magnesium alloys, effectively expanding their applications in aerospace, weapons, and other fields. In this work, the tensile strength, yield strength, and elongation of a Mg-Gd-Y-Zn-Zr rare-earth magnesium alloy under different process conditions were determined, and a large number of microstructure observations and analyses were carried out for the tensile specimens; a prediction model of the corresponding mechanical properties was established by using a convolutional neural network (CNN), in which the metallographic diagram of the rare-earth magnesium alloy was taken as the input, and the corresponding tensile strength, yield strength, elongation, and three mechanical properties were taken as the output. The stochastic gradient descent (SGD) algorithm was used for parameter optimization and experimental validation, and the results showed that the average relative errors of the tensile strength and yield strength prediction results were 1.90% and 3.14%, respectively, which were smaller than the expected error of 5%.
与其他系列镁合金相比,稀土镁合金具有更高的综合力学性能,有效拓展了其在航空航天、武器等领域的应用。在本研究中,测定了Mg-Gd-Y-Zn-Zr稀土镁合金在不同工艺条件下的抗拉强度、屈服强度和伸长率,并对拉伸试样进行了大量微观组织观察与分析;利用卷积神经网络(CNN)建立了相应力学性能的预测模型,其中以稀土镁合金金相图作为输入,以相应的抗拉强度、屈服强度、伸长率这三项力学性能作为输出。采用随机梯度下降(SGD)算法进行参数优化和实验验证,结果表明,抗拉强度和屈服强度预测结果的平均相对误差分别为1.90%和3.14%,均小于预期的5%误差。