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Research on bulbous bow optimization based on the improved PSO algorithm

Research on bulbous bow optimization based on the improved PSO algorithm
Research on bulbous bow optimization based on the improved PSO algorithm
On order to reduce the total resistance of a hull, an optimization framework for the bulbous bow optimization was presented. The total resistance in calm water was selected as the objective function, and the overset mesh technique was used for mesh generation. RANS method was used to calculate the total resistance of the hull. In order to improve the efficiency and smoothness of the geometric reconstruction, the arbitrary shape deformation (ASD) technique was introduced to change the shape of the bulbous bow. To improve the global search ability of the particle swarm optimization (PSO) algorithm, an improved particle swarm optimization (IPSO) algorithm was proposed to set up the optimization model. After a series of optimization analyses, the optimal hull form was found. It can be concluded that the simulation based design framework built in this paper is a promising method for bulbous bow optimization.
0890-5487
487–494
Zhang, Sheng-Long
a472ff6d-9c8a-43ac-886e-a951017c64a8
Zhang, Bao-Ji
8d3e83b3-5f54-455b-a0fe-908baae9d50a
Tezdogan, Tahsin
7e7328e2-4185-4052-8e9a-53fd81c98909
Xu, Le-Ping
948720c8-8ee6-48f3-bd35-9fc82e303bdb
Lai, Yu-Yang
a9749237-27cc-4655-a4b7-ee201c5820af
Zhang, Sheng-Long
a472ff6d-9c8a-43ac-886e-a951017c64a8
Zhang, Bao-Ji
8d3e83b3-5f54-455b-a0fe-908baae9d50a
Tezdogan, Tahsin
7e7328e2-4185-4052-8e9a-53fd81c98909
Xu, Le-Ping
948720c8-8ee6-48f3-bd35-9fc82e303bdb
Lai, Yu-Yang
a9749237-27cc-4655-a4b7-ee201c5820af

Zhang, Sheng-Long, Zhang, Bao-Ji, Tezdogan, Tahsin, Xu, Le-Ping and Lai, Yu-Yang (2017) Research on bulbous bow optimization based on the improved PSO algorithm. China Ocean Engineering, 487–494. (doi:10.1007/s13344-017-0055-9).

Record type: Article

Abstract

On order to reduce the total resistance of a hull, an optimization framework for the bulbous bow optimization was presented. The total resistance in calm water was selected as the objective function, and the overset mesh technique was used for mesh generation. RANS method was used to calculate the total resistance of the hull. In order to improve the efficiency and smoothness of the geometric reconstruction, the arbitrary shape deformation (ASD) technique was introduced to change the shape of the bulbous bow. To improve the global search ability of the particle swarm optimization (PSO) algorithm, an improved particle swarm optimization (IPSO) algorithm was proposed to set up the optimization model. After a series of optimization analyses, the optimal hull form was found. It can be concluded that the simulation based design framework built in this paper is a promising method for bulbous bow optimization.

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More information

Published date: 15 August 2017

Identifiers

Local EPrints ID: 479196
URI: http://eprints.soton.ac.uk/id/eprint/479196
ISSN: 0890-5487
PURE UUID: 4d00aba4-239e-4782-8f56-db1eb64df0a6
ORCID for Tahsin Tezdogan: ORCID iD orcid.org/0000-0002-7032-3038

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Date deposited: 20 Jul 2023 16:44
Last modified: 17 Mar 2024 04:18

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Contributors

Author: Sheng-Long Zhang
Author: Bao-Ji Zhang
Author: Tahsin Tezdogan ORCID iD
Author: Le-Ping Xu
Author: Yu-Yang Lai

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