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Cycle-Time Estimation for Forming Curved Plates Using Neural Networks

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Abstract
This article introduces an artificial neural network (ANN) model to determine cycle-times for forming curved hull plates when the target shape is known. The proposed model aids shipbuilding companies in predicting the cycle-times required for ship fabrication. The input parameters are geometric information extracted from the target shape (curvedness, Gaussian curvature, width, and height of the hull plate), and the output parameter is the heating duration per unit area. The structure of the proposed model, which predicts cycle-times for line heating after the cold forming case, consists of two hidden layers. The proposed model is convenient to use and flexible because it only requires retraining when the dataset is changed. The performance of the proposed model was analyzed by five-fold cross-validation and compared with that of a mathematical model obtained from the linear regression analysis method and predefined formulas. The results show that the ANN model is reliable and accurate for the cycle-time prediction of curved hull plates in shipbuilding applications.
Author(s)
Song, JinhoLee, JunheeKim, DaewoonKim, WondonKang, Tae-wonKim, Jeung-YoubNam, Jong-HoKo, Kwang Hee
Issued Date
2022-08
Type
Article
DOI
10.5957/JSPD.04210012
URI
https://scholar.gist.ac.kr/handle/local/10663
Publisher
Society of Naval Architects and Marine Engineers
Citation
journal of ship production and design, v.38, no.3, pp.129 - 139
ISSN
2158-2866
Appears in Collections:
Department of Mechanical and Robotics Engineering > 1. Journal Articles
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