Robust optimization for composite blade of wind turbine based on kriging model

IF 2.1 4区 材料科学 Q3 MATERIALS SCIENCE, COMPOSITES Advanced Composites Letters Pub Date : 2020-03-19 DOI:10.1177/2633366X20914631
Yuqiao Zheng, Huidong Ma, Jia-Hua Wei, Kai Zhu
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引用次数: 2

Abstract

Structural optimization models often feature many uncertain factors, which can be handled by robust optimization. This work presents a complete robust optimization program for composite blade based on the kriging approximation model. Two case studies were given and performed using a genetic algorithm. The first being typical optimization, where the first natural frequency of the blade is selected as the optimized objective and the optimal sizing distribution for the entire blade shell is sought to ignore the uncertain factors. The other case determines the standard deviation of the optimized objective in the first case as another optimization goal. Moreover, a 6σ robustness for the optimization results of the two cases was evaluated. The result shows that typical optimization increases the first natural frequency of the blade by 19%, while its robustness level has a reduction of 61% compared with the first blade. Nevertheless, the robust optimization not only results in an increment of 15.4% in the first natural frequency of the blade but also increases its robustness level by up to 90%. Therefore, the proposed approach can effectively improve optimization objectives, especially reduce the impacts of uncertainties on the objective functions.
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基于kriging模型的风力机复合叶片鲁棒优化
结构优化模型通常具有许多不确定因素,这些不确定因素可以通过鲁棒优化来处理。本文提出了一套基于克里格近似模型的复合叶片鲁棒优化方案。给出了两个案例研究,并使用遗传算法进行了研究。一是典型优化,以叶片第一固有频率为优化目标,在忽略不确定因素的情况下寻求整个叶壳的最优尺寸分布。另一种情况确定第一种情况中优化目标的标准差作为另一优化目标。并对两种情况下的优化结果进行了6σ鲁棒性评价。结果表明,典型优化使叶片的第一阶固有频率提高了19%,而其鲁棒性水平比第一阶固有频率降低了61%。然而,鲁棒性优化不仅使叶片的第一固有频率增加了15.4%,而且使其鲁棒性水平提高了90%。因此,该方法可以有效地改进优化目标,特别是减少不确定性对目标函数的影响。
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来源期刊
Advanced Composites Letters
Advanced Composites Letters 工程技术-材料科学:复合
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审稿时长
4.2 months
期刊介绍: Advanced Composites Letters is a peer reviewed, open access journal publishing research which focuses on the field of science and engineering of advanced composite materials or structures.
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