Ship design is related to several disciplines such as hydrostatic, resistance, propulsion and economic. The traditional ship design process only involves independent design optimization with some regression formulas within each discipline and there is no guarantee to achieve the optimum design. At the same time, it is crucial to improve the efficiency of modern ship design. Nowadays, the methods of computational fluid dynamics (CFD) has been brought into the ship design optimization. However, there are still some problems such as calculation precision and time consumption especially when CFD software is inlaid into the optimization procedure. Modeling is a far-ranging and all-around subject, and its precision directly affects the scientific decision in future. How to establish an accurate approximation model instead of the CFD calculation will be the key problem. The Support Vector Machines (SVM), a new general machine learning method based on the frame of statistical learning theory, may solve the problems in sample space and be an effective method of processing the non-liner classification and regression. The classical SVR has two parameters to control the errors. A new algorithm of Support Vector Regression proposed in this article has only one parameter to control the errors, adds b2/2 to the item of confidence interval at the same time, and adopts the Laplace loss function. It is named Single-parameter Lagrangian Support Vector Regression (SPL-SVR). This effective algorithm can improve the operation speed of program to a certain extent, and has better fitting precision. In practical design of ship, Design of Experiment (DOE) and the proposed support vector regression algorithm are applied to ship design optimization to construct statistical approximation model in this paper. The support vector regression algorithm approximates the optimization model and is updated during the optimization process to improve accuracy. The result indicates that the SPL-SVR method to establish approximate models can effectively solve complex engineering design optimization problem. Finally, some suggestions on the future improvements are proposed.
Skip Nav Destination
ASME 2014 33rd International Conference on Ocean, Offshore and Arctic Engineering
June 8–13, 2014
San Francisco, California, USA
Conference Sponsors:
- Ocean, Offshore and Arctic Engineering Division
ISBN:
978-0-7918-4540-0
PROCEEDINGS PAPER
An Effective Approximation Modeling Method for Ship Resistance in Multidisciplinary Ship Design Optimization Available to Purchase
Dongqin Li,
Dongqin Li
Jiangsu University of Science and Technology, Zhenjiang, Jiangsu, China
Search for other works by this author on:
Philip A. Wilson,
Philip A. Wilson
University of Southampton, Southampton, UK
Search for other works by this author on:
Yifeng Guan,
Yifeng Guan
Jiangsu University of Science and Technology, Zhenjiang, Jiangsu, China
Search for other works by this author on:
Xin Zhao
Xin Zhao
Jiangsu University of Science and Technology, Zhenjiang, Jiangsu, China
Search for other works by this author on:
Dongqin Li
Jiangsu University of Science and Technology, Zhenjiang, Jiangsu, China
Philip A. Wilson
University of Southampton, Southampton, UK
Yifeng Guan
Jiangsu University of Science and Technology, Zhenjiang, Jiangsu, China
Xin Zhao
Jiangsu University of Science and Technology, Zhenjiang, Jiangsu, China
Paper No:
OMAE2014-23407, V002T08A023; 9 pages
Published Online:
October 1, 2014
Citation
Li, D, Wilson, PA, Guan, Y, & Zhao, X. "An Effective Approximation Modeling Method for Ship Resistance in Multidisciplinary Ship Design Optimization." Proceedings of the ASME 2014 33rd International Conference on Ocean, Offshore and Arctic Engineering. Volume 2: CFD and VIV. San Francisco, California, USA. June 8–13, 2014. V002T08A023. ASME. https://doi.org/10.1115/OMAE2014-23407
Download citation file:
25
Views
Related Proceedings Papers
Related Articles
Using Support Vector Machines to Formalize the Valid Input Domain of Predictive Models in Systems Design Problems
J. Mech. Des (October,2010)
A Comparative Evaluation of Supervised Machine Learning Classification Techniques for Engineering Design Applications
J. Mech. Des (December,2019)
Computational Simulations of Vertebral Body for Optimal Instrumentation Design
J. Med. Devices (June,2012)
Related Chapters
Machine Learning Methods for Data Assimilation
Intelligent Engineering Systems through Artificial Neural Networks, Volume 20
Fitting a Function and Its Derivative
Intelligent Engineering Systems Through Artificial Neural Networks, Volume 17
An Algorithm Implementation about SVR Based on Spider
International Symposium on Information Engineering and Electronic Commerce, 3rd (IEEC 2011)