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fmGA를 이용한 하수관거정비 최적화 모델Optimization Model for Sewer Rehabilitation Using Fast Messy Genetic Algorithm

Authors
유재나박규홍기범준이차돈
Issue Date
2004
Publisher
대한상하수도학회
Keywords
최적화; 하수관거정비; 최적예산; fmGA; optimization; sewer rehabilitation; optimal budgeting; fast messy genetic algorithm
Citation
상하수도학회지, v.18, no.2, pp 145 - 154
Pages
10
Journal Title
상하수도학회지
Volume
18
Number
2
Start Page
145
End Page
154
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/28735
ISSN
1225-7672
2287-822X
Abstract
A long-term sewer rehabilitation project consuming an enormous budget needs to be conducted systematically using an optimization skill. The optimal budgeting and ordering of priority for sewer rehabilitation projects are very important with respect to the effectiveness of investment.In this study, the sewer rehabilitation optimization model using fast-messy genetic algorithm is developed to suggest a schedule for optimal sewer rehabilitation in a subcatchment area by modifying the existing GOOSER model having been developed using simple genetic algorithm. The sewer rehabilitation optimization model using fast-messy genetic algorithm can improve the speed converging to the optimal solution relative to GOOSER , suggesting that it is more advantageous to the sewer rehabilitation in a larger-scale subcatchment area than GOOSER .
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