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신경망을 이용한 유조선 기름 유출사고에 따른 환경비용 추정에 관한 연구Estimation of Environmental Costs Based on Size of Oil Tanker Involved in Accident using Neural Network

Other Titles
Estimation of Environmental Costs Based on Size of Oil Tanker Involved in Accident using Neural Network
Authors
신성철배정훈김현수김성훈김수영이종갑
Issue Date
2012
Publisher
한국해양공학회
Keywords
Neural network 신경망; Backpropagation 역전파; Risk-based ship design 위험도 기반 선박설계; Oil spill 기름 유출; Cost-benefit analysis 비용-편익 분석
Citation
한국해양공학회지, v.26, no.1, pp 60 - 63
Pages
4
Journal Title
한국해양공학회지
Volume
26
Number
1
Start Page
60
End Page
63
URI
https://www.kriso.re.kr/sciwatch/handle/2021.sw.kriso/7808
ISSN
1225-0767
2287-6715
Abstract
The accident risks in the marine environment are increasing because of the tendency to build faster and larger ships. To secure ship safety, risk-based ship design (RBSD) was recently suggested based on a formal safety assessment (FSA). In the process of RBSD, a ship designer decides which risk reduction option is most cost-effective in the design stage using a cost-benefit analysis (CBA). There are three dimensions of risk in this CBA: fatality, environment, and asset. In this paper, we present an approach to estimate the environmental costs based on the size of an oil tanker involved in an accident using a neural network. An appropriate neural network model is suggested for the estimation,and the neural network is trained using IOPCF data. Finally,the learned neural network is compared with the cost regression equation by IMO MEPC 62/WP.13 (2011).
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