A Novel Approach for Analyzing the Effects of Almen Intensity on the Residual Stress and Hardness of Shot-Peened (TiB + TiC)/Ti–6Al–4V Composite: Deep Learning

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.

Authors
Maleki Erfan2 , Unal Okan3, 4 , Seyedi Sahebari Seyed Mahmoud5 , Reza Kashyzadeh Kazem 1
Journal
Publisher
MDPI AG
Number of issue
13
Language
English
Status
Published
Department
Department of Transport
Number
4693
Volume
16
Year
2023
Organizations
  • 1 Peoples’ Friendship University of Russia
  • 2 Mechanical Engineering Department, Politecnico di Milano, 20156 Milan, Italy
  • 3 Mechanical Engineering Department, Karabuk University, 78050 Karabuk, Turkey
  • 4 Modern Surface Engineering Laboratory, Karabuk University, 78050 Karabuk, Turkey
  • 5 Department of Mechanical and Manufacturing Engineering, Ontario Tech University, Oshawa, ON L1G 0C5, Canada
Keywords
Titanium matrix composites; Shot peening; Deep neural network; Modeling
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