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METAHEURISTIC OPTIMIZATION OF DUAL-ELEMENT VERTICAL AXIS WIND TURBINE USING GENETIC ALGORITHM

机译:基于遗传算法的双单元垂直轴风力机的动力学优化。

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This paper presents a framework for the optimization of Dual-Element Vertical Axis Wind Turbine (VAWT) Blade configurations for improvement in power generation. Multielement nature of the turbine was specifically chosen as this configuration offers better-attached flow over a conventional single element H-type turbine. The framework was based on a genetic evolutionary algorithm which is a metaheuristic optimization technique based on the principle of survival of the fittest. The class of genetic algorithm used was Invasive Weed Optimization. The geometry of the turbine consists of a rotor with three sets of dual-element airfoil oriented symmetrically. Effective chord length and relative chord angle were taken as modifying parameters for generating new configurations. The fitness of each individual was evaluated by performing two-dimensional Computational Fluid Dynamics Simulations. OpenFOAM was used for performing numerical simulations. Qualitative data of torque, pressure, velocity, and turbulence kinetic energy of best configuration is shown. A considerable increase in torque in the final geometry. The model was found ideal for optimizing multi-element VAWT configuration.
机译:本文提出了一种优化双元件垂直轴风力涡轮机(VAWT)叶片配置以提高发电效率的框架。特别选择了涡轮机的多元件特性,因为这种配置提供了比传统的单元件H型涡轮机更好的连接流量。该框架基于遗传进化算法,这是一种基于适者生存原则的元启发式优化技术。所使用的遗传算法的类别是侵入性杂草优化。涡轮的几何形状包括一个转子,该转子具有三对对称布置的双单元翼型。有效弦长和相对弦角被用作修改参数以产生新的配置。通过执行二维计算流体动力学模拟来评估每个人的健康状况。 OpenFOAM用于执行数值模拟。显示了最佳配置的扭矩,压力,速度和湍流动能的定性数据。最终几何形状中的扭矩显着增加。发现该模型是优化多元素VAWT配置的理想选择。

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