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Improving the efficiency of a Savonius wind turbine by designing a set of deflector plates with a metamodel-based optimization approach

机译:通过使用基于元模型的优化方法设计一组导流板来提高Savonius风力发电机的效率

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Savonius wind turbines are the most suitable devices used in urban areas to produce electrical power. This is due to their simplicity, ease of maintenance, and acceptable power output with a low speed and highly variable wind profile. However, their efficiency is low, and the development of optimization tools is necessary to increase the total power output. This work presents a metamodel-based method to optimize the size and shape of a set of deflector plates to reduce the reverse moment of the turbine, using a genetic algorithm combined with an artificial neural network, reducing the computational cost. A parametrization of the deflectors geometry is proposed, and a Computational Fluid Dynamics model was implemented to train and validate the artificial neural network. The method was applied to design the deflectors of an actual 8-blade, 1 [kW], 2.5[m] height turbine. Results showed an efficiency increment of 30%, from 0.215, to 0.279 in the turbine with the optimized deflectors. Furthermore, it is capable of producing power at 4[m/s], while the reference design had null power at that point. This methodology demanded 159 h, a substantial reduction of the computational cost of up to 97% in contrast to the classical simulation-based optimization approach. (C) 2019 Elsevier Ltd. All rights reserved.
机译:萨沃纽斯(Savonius)风力涡轮机是在城市地区用于发电的最合适的设备。这是由于它们的简单性,易于维护以及低速,风速变化很大的可接受的功率输出。但是,它们的效率很低,因此必须开发优化工具来增加总功率输出。这项工作提出了一种基于元模型的方法,该方法通过使用遗传算法和人工神经网络相结合的方法来优化一组导流板的尺寸和形状,以减小涡轮的反向力矩,从而降低了计算成本。提出了偏转器几何形状的参数化方法,并建立了计算流体动力学模型来训练和验证人工神经网络。该方法用于设计实际的8叶片,1 [kW],2.5 [m]高度涡轮机的导流板。结果表明,采用最佳导流板的涡轮机的效率提高了30%,从0.215提高到0.279。此外,它能够以4 [m / s]的功率产生功率,而参考设计此时的功率为零。与传统的基于仿真的优化方法相比,该方法需要159小时,大大降低了高达97%的计算成本。 (C)2019 Elsevier Ltd.保留所有权利。

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