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- Title
Optimal Design of Ship Branch Pipe Route by a Cooperative Co-Evolutionary Improved Particle Swarm Genetic Algorithm.
- Authors
Yunlong Wang; Hao Wei; Xin Zhang; Kai Li; Guan Guan; Chaoguan Jin; Lin Yan
- Abstract
This paper proposes a cooperative co-evolutionary improved particle swarm genetic (CCIPSG) algorithm for ship branch pipe route design (SBPRD) based on the strategy of first decomposition and then reconstruction. SBPRD is a common type of ship pipe route design connecting one start point and several end points with various performance constraints in 3-D space. The traditional optimization method of SBPRD needs to select the laying sequence of branch pipelines, determine the branch points, and finally conduct the pipeline layout, which is full of uncertainty. The CCIPSG algorithm proposed in this paper aims to avoid the uncertainty of laying sequence and branch points by using the strategy of decomposition before reconstruction. The branch pipe route is deemed as a system; through the process of decomposing, the branch pipe route is decomposed as several single pipe routes with a common start point and different end points. After obtaining the optimal solutions of each single pipe route by using the improved particle swarm genetic algorithm, the co-evolutionary mechanism and overlapped potential energy value method are used to reconstruct the branch pipeline with the minimum total path length and elbows. Compared with the conventional method, the CCIPSG algorithm could not only automatically determinate the laying sequence and branch points but also improve the convergence speed and the quality of the solution. Finally, the simulation result demonstrates the feasibility and efficiency of the proposed method.
- Subjects
PARTICLE swarm optimization; NAVAL architecture; GENETIC algorithms; COEVOLUTION; EVOLUTIONARY algorithms; POTENTIAL energy
- Publication
Marine Technology Society Journal, 2021, Vol 55, Issue 5, p116
- ISSN
0025-3324
- Publication type
Article
- DOI
10.4031/mtsj.55.5.18