Multi-Layer Perceptron과 Random Forest를 이용한 실린더 판재의 성형 조건 예측

Application of Multi-Layer Perceptron and Random Forest Method for Cylinder Plate Forming

초록

In this study, the prediction method was reviewed to process a cylindrical plate forming using machine learning as a data-driven approach by roll bending equipment. The calculation of the forming variables was based on the analysis using the mechanical relationship between the material properties and the roll bending machine in the bending process. Then, by applying the finite element analysis method, the accuracy of the deformation prediction model was reviewed, and a large number data set was created to apply to machine learning using the finite element analysis model for deformation prediction. As a result of the application of the machine learning model, it was confirmed that the calculation is slightly higher than the linear regression method. Applicable results were confirmed through the machine learning method.

키워드

Roll bending(롤 벤딩)Machine learning(기계 학습)Multi-layer perceptron(다층 퍼셉트론)Random forest(랜덤 포레스트)Finite Element Analysis(유한요소해석FEA)Center roller displacement(중앙 롤러 변위)
제목
Multi-Layer Perceptron과 Random Forest를 이용한 실린더 판재의 성형 조건 예측
제목 (타언어)
Application of Multi-Layer Perceptron and Random Forest Method for Cylinder Plate Forming
저자
김성겸황세윤이장현
DOI
10.3744/SNAK.2020.57.5.297
발행일
2020-10
유형
Y
저널명
대한조선학회 논문집
57
5
페이지
297 ~ 304