Maleki Erfan, Unal Okan, Seyedi Sahebari Seyed Mahmoud, Reza Kashyzadeh Kazem
Mechanical Engineering Department, Politecnico di Milano, 20156 Milan, Italy.
Mechanical Engineering Department, Karabuk University, 78050 Karabuk, Turkey.
Materials (Basel). 2023 Jun 29;16(13):4693. doi: 10.3390/ma16134693.
In the present study, the experimental data of a shot-peened (TiB + TiC)/Ti-6Al-4V composite with two volume fractions of 5 and 8% for TiB + TiC reinforcements were used to develop a neural network based on the deep learning technique. In this regard, the distributions of hardness and residual stresses through the depth of the materials as the properties affected by shot peening (SP) treatment were modeled via the deep neural network. The values of the TiB + TiC content, Almen intensity, and depth from the surface were considered as the inputs, and the corresponding measured values of the residual stresses and hardness were regarded as the outputs. In addition, the surface coverage parameter was assumed to be constant in all samples, and only changes in the Almen intensity were considered as the SP process parameter. Using the presented deep neural network (DNN) model, the distributions of hardness and residual stress from the top surface to the core material were continuously evaluated for different combinations of input parameters, including the Almen intensity of the SP process and the volume fractions of the composite reinforcements.
在本研究中,使用了喷丸处理的(TiB + TiC)/Ti-6Al-4V复合材料的实验数据来开发基于深度学习技术的神经网络,该复合材料中TiB + TiC增强体的体积分数分别为5%和8%。在这方面,通过深度神经网络对作为喷丸处理(SP)影响的材料性能的硬度和残余应力沿材料深度的分布进行了建模。将TiB + TiC含量、阿尔门强度和距表面的深度值作为输入,将残余应力和硬度的相应测量值作为输出。此外,假设所有样品的表面覆盖率参数恒定,仅将阿尔门强度的变化视为SP工艺参数。使用所提出的深度神经网络(DNN)模型,针对不同输入参数组合,包括SP工艺的阿尔门强度和复合材料增强体的体积分数,连续评估了从顶面到芯部材料的硬度和残余应力分布。