人工神经网络
反向传播
多层感知器
感知器
计算机科学
应变率
航程(航空)
爆炸物
校准
鉴定(生物学)
人工智能
材料科学
数学
化学
统计
植物
有机化学
冶金
复合材料
生物
作者
Víctor Tuninetti,Diego Forcael,Marian Valenzuela,Alex Martínez,Andrés I. Ávila,Carlos Medina,Gonzalo Pincheira,Alexis Salas,Ángelo Oñate,Laurent Duchêne
出处
期刊:Materials
[MDPI AG]
日期:2024-01-08
卷期号:17 (2): 317-317
被引量:5
摘要
The manufacturing processes and design of metal and alloy products can be performed over a wide range of strain rates and temperatures. To design and optimize these processes using computational mechanics tools, the selection and calibration of the constitutive models is critical. In the case of hazardous and explosive impact loads, it is not always possible to test material properties. For this purpose, this paper assesses the efficiency and the accuracy of different architectures of ANNs for the identification of the Johnson–Cook material model parameters. The implemented computational tool of an ANN-based parameter identification strategy provides adequate results in a range of strain rates required for general manufacturing and product design applications. Four ANN architectures are studied to find the most suitable configuration for a reduced amount of experimental data, particularly for cases where high-impact testing is constrained. The different ANN structures are evaluated based on the model’s predictive capability, revealing that the perceptron-based network of 66 inputs and one hidden layer of 30 neurons provides the highest prediction accuracy of the effective flow stress–strain behavior of Ti64 alloy and three virtual materials.
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