Analysis of second phase particles in metals using deep learning: Segmentation of nanoscale dispersoids in 6xxx series aluminum alloys (Al-Mg-Si)

被引:12
作者
Arnoldt, Aurel [1 ]
Semmelrock, Lukas [2 ]
Soukup, Daniel [2 ]
Osterreicher, Johannes A. [1 ]
机构
[1] AIT Austrian Inst Technol, LKR Light Met Technol, Ranshofen, Austria
[2] AIT Austrian Inst Technol, Vienna, Austria
关键词
Scanning electron microscopy; Homogenization; Convolutional neural networks (CNN); Backscattered electrons; Image analysis; Machine learning; BETA-ALFESI; PRECIPITATION; ALPHA-AL(FEMN)SI; HOMOGENIZATION; QUANTIFICATION; SECONDARY; KINETICS; IMAGE; MN;
D O I
10.1016/j.matchar.2022.112138
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
During the homogenization heat treatment of 6xxx series aluminum alloys, nanoscale precipitates-commonly named dispersoids-are formed that influence material properties during further processing by extrusion, forging, or rolling, as well as final product quality. Obtaining dispersoid size distributions is commonly accomplished by manually counting and measuring the diameter of the particles in metallographic sections investigated by means of electron microscopy.An automatization of this process, while desired, is difficult due to varying backgrounds, brightness and contrast levels, noise, dispersoid morphologies as well as scratches and interference from other types of inter -metallic phases.In order to segment dispersoids in a wide range of 6xxx series aluminum alloys, a neural network is trained on the basis of electron micrographs of different alloy samples that include various possible separation artifacts and is compared to several benchmark models. The neural network evaluated in this work shows promising results, consistent over all analyzed samples, with a maximum error of roughly 20% while the benchmark models show errors of up to 85%.
引用
收藏
页数:7
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