Hydrostructural Optimization of a Marine Current Turbine Through Multi-fidelity Numerical Models

被引:0
|
作者
Karthikeyan Thandayutham
Abdus Samad
机构
[1] Indian Institute of Technology Madras,Wave Energy and Fluids Engineering Laboratory, Department of Ocean Engineering
来源
Arabian Journal for Science and Engineering | 2020年 / 45卷
关键词
Marine current turbine; Blade pitch angle; Fluid–structure interaction; Surrogates; Multi-objective optimization; Cavitation;
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中图分类号
学科分类号
摘要
A marine current turbine (MCT) that extracts energy from ocean currents should be hydrodynamically and structurally stable to generate uninterrupted power. This can be achieved through the shape optimization of MCT blades. In this work, a horizontal axis MCT of 0.8 m diameter was optimized through multi-fidelity numerical approach. The design parameters such as blade pitch angle (θ) and the number of rotor blades (NR) were modified to increase the power coefficient (CP) and to reduce the von-Mises stress (σv) using multi-objective optimization technique. A coupled fluid–structure interaction method is used for fluid and structural analysis of MCT. Also, an analysis for identifying the cavitation inception is incorporated. A surrogate-based optimization code was used to produce a Pareto optimal front. The MCT with CP = 0.451 encountered σv = 125.83 MPa and a high total deformation (TD) = 20.259 mm near the blade tip. The TD of the same MCT blade was later reduced to 1/3rd of its actual value by identifying an alternate turbine material. The losses due to vortices, wake generation, and cavitation study are discussed in the present work.
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页码:935 / 952
页数:17
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