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합성곱 신경망을 이용한 선박의 잉여저항계수 추정Prediction of Residual Resistance Coefficient of Ships using Convolutional Neural Network

Other Titles
Prediction of Residual Resistance Coefficient of Ships using Convolutional Neural Network
Authors
김유철김광수황승현연성모
Issue Date
8월-2022
Publisher
대한조선학회
Keywords
Residual resistance coefficient(잉여저항계수); Regression model(회귀모델); Convolutional Neural Network(CNN; 합성곱 신경망)
Citation
대한조선학회 논문집, v.59, no.4, pp 243 - 250
Pages
8
Journal Title
대한조선학회 논문집
Volume
59
Number
4
Start Page
243
End Page
250
URI
https://www.kriso.re.kr/sciwatch/handle/2021.sw.kriso/9304
DOI
10.3744/SNAK.2022.59.4.243
ISSN
1225-1143
2287-7355
Abstract
In the design stage of hull forms, a fast prediction method of resistance performance is needed. In these days, large test matrix of candidate hull forms is tested using Computational Fluid Dynamics (CFD) in order to choose the best hull form before the model test. This process requires large computing times and resources. If there is a fast and reliable prediction method for hull form performance, it can be used as the first filter before applying CFD. In this paper, we suggest the offset-based performance prediction method. The hull form geometry information is applied in the form of 2D offset (non-dimensionalized by breadth and draft), and it is studied using Convolutional Neural Network (CNN) and adapted to the model test results (Residual Resistance Coefficient; CR). Some additional variables which are not included in the offset data such as main dimensions are merged with the offset data in the process. The present model shows better performance comparing with the simple regression models.
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