材料科学
管道(软件)
有限元法
深度学习
学习迁移
相(物质)
压力(语言学)
领域(数学)
计算机科学
微观结构
断裂(地质)
人工智能
光学(聚焦)
水准点(测量)
机器学习
机械工程
结构工程
复合材料
工程类
数学
纯数学
地理
光学
化学
有机化学
哲学
物理
语言学
大地测量学
作者
Ali Darabi,Shima Rastgordani,Mohammadreza Khoshbin,Vinzenz Guski,Siegfried Schmauder
出处
期刊:Materials
[MDPI AG]
日期:2023-01-03
卷期号:16 (1): 447-447
被引量:17
摘要
A comprehensive approach to understand the mechanical behavior of materials involves costly and time-consuming experiments. Recent advances in machine learning and in the field of computational material science could significantly reduce the need for experiments by enabling the prediction of a material’s mechanical behavior. In this paper, a reliable data pipeline consisting of experimentally validated phase field simulations and finite element analysis was created to generate a dataset of dual-phase steel microstructures and mechanical behaviors under different heat treatment conditions. Afterwards, a deep learning-based method was presented, which was the hybridization of two well-known transfer-learning approaches, ResNet50 and VGG16. Hyper parameter optimization (HPO) and fine-tuning were also implemented to train and boost both methods for the hybrid network. By fusing the hybrid model and the feature extractor, the dual-phase steels’ yield stress, ultimate stress, and fracture strain under new treatment conditions were predicted with an error of less than 1%.
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