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首页> 外文期刊>Journal of Wind Engineering and Industrial Aerodynamics: The Journal of the International Association for Wind Engineering >The investigation of tower height matching optimization for wind turbine positioning in the wind farm
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The investigation of tower height matching optimization for wind turbine positioning in the wind farm

机译:风电场风力发电机塔架高度匹配优化研究

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摘要

The tower height of the turbines should match the potential site to achieve maximum power output per unit cost when constructing wind farm. In this paper, the tower height matching problem in wind turbine positioning optimization is studied, based on the wind speed characteristics of the site, the wind turbine power curve, the linear turbine wake flow model and the cost model. The global greedy algorithm with repeated adjustment is employed to solve the wind turbine positioning optimization problem. The Turbine-Site Matching Index (TSMI) is introduced as the objective function, with the consideration of the height effects both on the capacity factor (CF) and the initial capital cost (ICC). A normalized power output (L) is defined to analyze the matching problem. The optimal tower height is obtained through modeling L. The power curve model with and without power control mechanisms are studied. The computational results indicate that the proposed method can obtain the approximated optimal height in short computational time. The height effects on the wake flow and the distances among turbines reduce the optimal height. For the whole turbine layout, the higher tower heights are not always desirable for optimality. There exists an optimal tower height when maximizing TSMI.
机译:建造风电场时,涡轮机的塔高应与潜在场所相匹配,以实现每单位成本的最大功率输出。本文基于现场风速特性,风机功率曲线,线性风机尾流模型和成本模型,研究了风机位置优化中的塔高匹配问题。采用具有反复调整的全局贪婪算法来解决风机定位优化问题。引入涡轮-站点匹配指数(TSMI)作为目标函数,同时考虑高度对容量因子(CF)和初始资本成本(ICC)的影响。定义了标准化功率输出(L)来分析匹配问题。通过建模L获得最佳塔高。研究了有无功率控制机制的功率曲线模型。计算结果表明,该方法可以在较短的计算时间内获得近似的最佳高度。高度对尾流的影响以及涡轮之间的距离降低了最佳高度。对于整个涡轮机布局,并非总是希望更高的塔架高度以获得最优性。最大化TSMI时,存在最佳塔高。

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