首页> 外文期刊>Journal of Wind Engineering and Industrial Aerodynamics: The Journal of the International Association for Wind Engineering >A Pareto optimal multi-objective optimization for a horizontal axis wind turbine blade airfoil sections utilizing exergy analysis and neural networks
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A Pareto optimal multi-objective optimization for a horizontal axis wind turbine blade airfoil sections utilizing exergy analysis and neural networks

机译:利用(火用)分析和神经网络的水平轴风力机叶片翼型截面的Pareto最优多目标优化。

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In this study a multi-objective genetic algorithm is utilized to obtain a Pareto optimal set of solutions for geometrical characteristics of airfoil sections for 10-meter blades of a horizontal axis wind turbine. The performance of the airfoil sections during the process of energy conversion is evaluated deploying a 20 incompressible unsteady CFD solver and the second law analysis. Artificial neural networks are trained employing CFD obtained data sets to represent objective functions in an algorithm which implements exergetic performance and integrity characteristics as optimization objectives. The results show that utilizing the second law approach along with Pareto optimality concept leads to a set of precise solutions which represent minimum energy waste, maximum efficiency, and topmost stability. Furthermore, enhanced rotor performance coefficients are observed through a BEM study which compares conventional designs with the second law obtained configurations. Exergy analysis is believed to be an efficient tool in the optimal design of wind turbine blades with the capability of determining the amount of lost opportunities to do useful work (C) 2014 Elsevier Ltd. All rights reserved.
机译:在这项研究中,利用多目标遗传算法为水平轴风力涡轮机的10米叶片获得翼型截面几何特征的帕累托最优解集。部署20个不可压缩的不稳定CFD求解器并进行第二定律分析,以评估能量转换过程中翼型截面的性能。使用CFD获得的数据集对人工神经网络进行训练,以在算法中表示目标函数,该算法将精力充沛的表现和完整性特征作为优化目标。结果表明,将第二定律方法与帕累托最优概念一起使用可得出一组精确的解决方案,这些解决方案代表了最低的能源浪费,最高的效率和最高的稳定性。此外,通过BEM研究可以观察到转子性能系数的提高,该研究将常规设计与第二定律获得的配置进行了比较。火用分析被认为是风力涡轮机叶片优化设计中的一种有效工具,能够确定失去进行有用工作的机会的数量(C)2014 Elsevier Ltd.保留所有权利。

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