Comparative examinations of wind speed and energy extrapolation methods using remotely sensed data – A case study from Hungary

IF 7.1 Q1 ENERGY & FUELS Energy Conversion and Management-X Pub Date : 2024-10-01 DOI:10.1016/j.ecmx.2024.100760
István Lázár , István Hadnagy , Boglárka Bertalan-Balázs , László Bertalan , Sándor Szegedi
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Abstract

Exact knowledge of wind energy potential is a fundamental issue in wind energy utilization. The vertical changes in wind speeds, that is, the wind profile, have a predominant impact on the wind energy available at a location because the kinetic energy of moving air is proportional to the square of the wind speed. Roughness describes the resistance of a 3D surface to moving air. The exponent α of the power law of Hellmann and the roughness length (z0) are two parameters that describe the effects of the roughness of the surface on the wind profile. They can be used for the vertical extrapolation of wind speeds. The exponent α can be determined using multiple height level wind speed measurement data, whereas a reliable technique for the calculation of the roughness length requires detailed knowledge of the 3D geometry of the measurement site. In the present study, the exponent α was calculated based on SODAR wind speed measurements, while (z0) was determined using a combination of GIS and UAS-based aerial survey methods. Wind speeds measured at 50 m were extrapolated for height levels of 80, 90, 100, 110, and 120 m using dynamic power law exponent values. Wind power was determined using the power law (method V1), roughness length (method V2), frequency distribution (method W-RF), and gamma distribution (method W-G), and Windographer software was compared to the values calculated from the empirical (measured) wind speeds. A comparative statistical analysis of the datasets of the power law and roughness length methods on monthly/diurnal, annual/diurnal, and month/direction contexts showed no significant differences at all height levels. Differences can be detected in the distribution of the signs of the differences at heights of 80 and 120 m for the entire dataset. Underestimation was dominant with a significant frequency (over 70 %) in the case of both methods and heights. There were no significant differences between the wind power estimations provided by the different methods, and all the methods involved in the study underestimated the wind speeds and wind energy potential for each height level. Methods V1 and V2 can be used alternatively, depending on the input data available for analysis. The major advantage of method V2 is that it provides the same accuracy as V1, which requires a UAS-based aerial survey at the beginning, but continuous wind measurements must be performed at a lower height only. This means that there is no need for a high measurement tower, which makes the measurements simpler, more cost-effective, and causes much less disturbance to the environment. Another important advantage of the methods presented here is that they use a dynamic approach of power law exponent values that provide a more realistic estimation of wind speed and energy on a diurnal scale.
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利用遥感数据对风速和能量外推方法进行比较研究 - 匈牙利案例研究
准确了解风能潜力是风能利用的一个基本问题。风速的垂直变化(即风廓线)对某地可利用的风能有主要影响,因为移动空气的动能与风速的平方成正比。粗糙度描述了三维表面对移动空气的阻力。赫尔曼幂律指数 α 和粗糙度长度 (z0) 是描述表面粗糙度对风剖面影响的两个参数。它们可用于风速的垂直外推法。指数 α 可以通过多高度风速测量数据确定,而计算粗糙度长度的可靠技术则需要详细了解测量点的三维几何形状。在本研究中,指数 α 是根据 SODAR 风速测量数据计算得出的,而 (z0) 则是综合使用地理信息系统和无人机航测方法确定的。利用动态幂律指数值,将 50 米处测得的风速外推至 80、90、100、110 和 120 米的高度水平。使用幂律(方法 V1)、粗糙度长度(方法 V2)、频率分布(方法 W-RF)和伽马分布(方法 W-G)确定风力,并将 Windographer 软件与经验(测量)风速计算值进行比较。对幂律法和粗糙度长度法的月/日、年/日和月/方向数据集进行的统计比较分析表明,在所有高度水平上都没有显著差异。整个数据集在 80 米和 120 米高度上的差异符号分布存在差异。在两种方法和两种高度下,低估的频率都很高(超过 70%)。不同方法提供的风能估计值之间没有明显差异,研究中涉及的所有方法都低估了各高度层的风速和风能潜力。方法 V1 和 V2 可以交替使用,具体取决于可供分析的输入数据。方法 V2 的主要优势在于它能提供与 V1 相同的精度,V1 需要在开始时进行基于无人机系统的空中勘测,但必须只在较低高度进行连续风力测量。这意味着不需要高高的测量塔,从而使测量更简单、更经济,对环境的干扰也更小。本文介绍的方法的另一个重要优势是,它们采用了幂律指数值的动态方法,可以更真实地估计昼夜范围内的风速和风能。
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来源期刊
CiteScore
8.80
自引率
3.20%
发文量
180
审稿时长
58 days
期刊介绍: Energy Conversion and Management: X is the open access extension of the reputable journal Energy Conversion and Management, serving as a platform for interdisciplinary research on a wide array of critical energy subjects. The journal is dedicated to publishing original contributions and in-depth technical review articles that present groundbreaking research on topics spanning energy generation, utilization, conversion, storage, transmission, conservation, management, and sustainability. The scope of Energy Conversion and Management: X encompasses various forms of energy, including mechanical, thermal, nuclear, chemical, electromagnetic, magnetic, and electric energy. It addresses all known energy resources, highlighting both conventional sources like fossil fuels and nuclear power, as well as renewable resources such as solar, biomass, hydro, wind, geothermal, and ocean energy.
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