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Characterization of Flow Behaviors by a PSO-BP Integrated Model for a Medium Carbon Alloy Steel

Guo-zheng Quan, Yu Zhang, Sheng Lei, Wei Xiong

2023Materials13 citationsDOIOpen Access PDF

Abstract

In order to characterize the flow behaviors of SAE 5137H steel, isothermal compression tests at the temperatures of 1123 K, 1213 K, 1303 K, 1393 K, and 1483 K, and the strain rates of 0.01 s−1, 0.1 s−1, 1 s−1, and 10 s−1 were performed using a Gleeble 3500 thermo-mechanical simulator. The analysis results of true stress-strain curves show that the flow stress decreases with temperature increasing and strain rate decreasing. In order to accurately and efficiently characterize the complex flow behaviors, the intelligent learning method backpropagation–artificial neural network (BP-ANN) was combined with the particle swarm optimization (PSO), namely, the PSO-BP integrated model. Detailed comparisons of the semi-physical model with improved Arrhenius-Type, BP-ANN, and PSO-BP integrated model for the flow behaviors of SAE 5137H steel in terms of generative ability, predictive ability, and modeling efficiency were presented. The comparison results show that the PSO-BP integrated model has the best comprehensive ability, BP-ANN is the second, and semi-physical model with improved Arrhenius-Type is the lowest. It indicates that the PSO-BP integrated model can accurately describe the flow behaviors of SAE 5137H steel.

Topics & Concepts

Particle swarm optimizationBackpropagationMaterials scienceIsothermal processStrain rateArrhenius equationArtificial neural networkFlow stressFlow (mathematics)MechanicsComposite materialThermodynamicsComputer scienceArtificial intelligenceAlgorithmPhysicsChemistryActivation energyOrganic chemistryMetallurgy and Material FormingMetal Alloys Wear and PropertiesMicrostructure and Mechanical Properties of Steels
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