A Novel Surrogated Approach for Optimizing a Vertical Axis Wind Turbine With Straight Blades

Wind Energy Pub Date : 2024-07-01 DOI:10.1002/we.2934
S. Sanaye, Parsa Rezaeian, Armin Farvizi
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Abstract

Vertical axis wind turbine (VAWT) has a rotating axis perpendicular to the wind direction. This type of wind turbine that is suitable for urban environments has low wind direction dependency and noise. In this research, a novel surrogated approach for optimizing a VAWT is proposed, used, tested, and verified, which is not reported in literature. The proposed method consisted of 3D computational fluid dynamics (CFD) analysis of wind flow through the wind turbine with FLUENT software by solving the unsteady turbulent equations. However, 3D CFD analysis was time and cost consuming to obtain the output result (power coefficient) from input values (airfoil chord length, pitch angle, and tip speed ratio as turbine design variables). Thus, artificial neural network (ANN) was applied to obtain weight functions to correlate FLUENT software inputs and outputs after learning process. Finally, genetic algorithm was used for maximizing the turbine power coefficient considering three defined design variables. The optimum value of power coefficient was improved to 0.244, and the optimum values of design variables for blade chord length, blade pitch angle, and blade tip speed ratio were 0.218, −0.453, and 1.24, respectively. This novel surrogated method reduced the computational time and cost of VAWT optimizing considerably.
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优化直叶片垂直轴风力涡轮机的新型替代方法
垂直轴风力涡轮机(VAWT)的旋转轴与风向垂直。这种适用于城市环境的风力涡轮机对风向的依赖性小,噪音低。本研究提出、使用、测试和验证了一种用于优化 VAWT 的新型替代方法,该方法在文献中未见报道。所提出的方法包括使用 FLUENT 软件通过求解非稳定湍流方程对流经风力涡轮机的风流进行三维计算流体动力学(CFD)分析。然而,要从输入值(作为涡轮机设计变量的机翼弦长、桨距角和翼尖速比)获得输出结果(功率系数),三维 CFD 分析既费时又费钱。因此,采用了人工神经网络(ANN)来获取权重函数,以便在学习过程后将 FLUENT 软件的输入和输出相关联。最后,考虑到三个确定的设计变量,采用遗传算法使涡轮机功率系数最大化。功率系数的最佳值提高到了 0.244,而叶片弦长、叶片桨距角和叶尖速比的最佳设计变量值分别为 0.218、-0.453 和 1.24。这种新颖的代用方法大大减少了 VAWT 优化的计算时间和成本。
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