About this Abstract |
Meeting |
2020 TMS Annual Meeting & Exhibition
|
Symposium
|
ICME Gap Analysis in Materials Informatics: Databases, Machine Learning, and Data-Driven Design
|
Presentation Title |
Prediction of Steel Micro-structure by Deep Learning Using Database of Thermo-dynamics and Phase Field Model |
Author(s) |
Seonghwan Kim, Hyeok Jae Jeong, Jong Hyuk Lee, Nam Hoon Goo |
On-Site Speaker (Planned) |
Seonghwan Kim |
Abstract Scope |
Data-driven design of materials is getting attention as method for searching materials with improvement of machine learning. Therefore, a database for design is very important. As database, the real properties is best choice, but stacking real data as database is very hard work consuming large amount of time and cost. In addition, real data has high measurement error. Thus, ICME can be one of important alternative database. However, there are drawbacks in ICME scheme such long calculation times, defining various fitting parameters, and combining various tools. Thus, in order to overcome these disadvantages of ICME scheme, we suggest new method for prediction of micro-structure of steel, which is one of consuming part of ICME. Using two different type of deep neural networks of DNN regression and GAN trained by database of thermo-dynamics and phase field model, the prediction of micro-structure in accordance with processing parameters is achieved in several seconds. |
Proceedings Inclusion? |
Planned: Supplemental Proceedings volume |