Volume 44 Issue 4
Aug.  2023
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Zhao Lidong, Zhang Youming, Zhang Jilin, Dou Jianming, Yao Jiabao. Research on prediction accuracy of the flow stress of 0Cr17Ni4Cu4Nb stainless steel based on machine learning[J]. IRON STEEL VANADIUM TITANIUM, 2023, 44(4): 196-204. doi: 10.7513/j.issn.1004-7638.2023.04.028
Citation: Zhao Lidong, Zhang Youming, Zhang Jilin, Dou Jianming, Yao Jiabao. Research on prediction accuracy of the flow stress of 0Cr17Ni4Cu4Nb stainless steel based on machine learning[J]. IRON STEEL VANADIUM TITANIUM, 2023, 44(4): 196-204. doi: 10.7513/j.issn.1004-7638.2023.04.028

Research on prediction accuracy of the flow stress of 0Cr17Ni4Cu4Nb stainless steel based on machine learning

doi: 10.7513/j.issn.1004-7638.2023.04.028
  • Received Date: 2022-11-16
  • Publish Date: 2023-08-30
  • A new model for predicting rheological stresses based on particle swarm optimization BP neural network is proposed for 0Cr17Ni4Cu4Nb stainless steel as an example. Based on the quasi-static (0.001 s−1) compression testing data at room temperature and the impact testing data at four temperatures (25, 350, 500 and 300 ℃) and six strain rates (750, 1500, 2000, 2600, 3500 and 4500 s−1), a random forest prediction model for rheological stress of 0Cr17Ni4Cu4Nb stainless steel, a Particle Swarm Optimized Random Forest prediction model, a Back Propagation (BP) neural network, and a Particle Swarm Optimized BP neural network are constructed. Four indicators including the statistical coefficient of determination (R2), mean absolute error (MAE), mean square error (MSE) and root mean square error (RMSE) are used to analyze and evaluate the four models mentioned above. The comprehensive performance of the prediction models is in sequence of particle swarm optimization BP neural network model, BP neural network model, particle swarm optimization random forest model, and the random forest model. The coefficient of determination R2=0.9997, mean absolute error MAE=1.5773, mean squared error MSE=5.5053 and root mean squared error RMSE=2.3463 are determined for the particle swarm optimized BP neural network model, which can predict the rheological stress of 0Cr17Ni4Cu4Nb stainless steel very well.
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