Copula‐based joint distribution analysis of wind speed and wind direction: Wind energy development for Hong Kong

IF 4 3区 工程技术 Q3 ENERGY & FUELS Wind Energy Pub Date : 2023-06-27 DOI:10.1002/we.2847
Shijin Huang, Q. Li, Zhenru Shu, Pak-wai Chan
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引用次数: 1

Abstract

Accurate and reliable assessment of wind energy potential has important implication to the wind energy industry. Most previous studies on wind energy assessment focused solely on wind speed, whereas the dependence of wind energy on wind direction was much less considered and documented. In this paper, a copula-based method is proposed to better characterize the direction-related wind energy potential at six typical sites in Hong Kong. The joint probability density function (JPDF) of wind speed and wind direction is constructed by a series of copula models. It shows that Frank copula has the best performance to fit the JPDF at hilltop and offshore sites while Gumbel copula outperforms other models at urban sites. The derived JPDFs are applied to estimate the direction-related wind power density at the considered sites. The obtained maximum direction-related wind energy density varies from 41.3 W/m 2 at an urban site to 507.9 W/m 2 at a hilltop site. These outcomes are expected to facilitate accurate micro-site selection of wind turbines, thereby improving the economic benefits of wind farms in Hong Kong. Meanwhile, the developed copula-based method provides useful references for further investigations regarding direction-related wind energy assessments at various terrain regions. Notably, the proposed copula-based method can also be applied to characterize the direction-related wind energy potential somewhere other than Hong Kong.
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基于Copula的风速和风向联合分布分析:香港风能开发
准确可靠地评估风能潜力对风能产业具有重要意义。以前关于风能评估的大多数研究都只关注风速,而风能对风向的依赖性则很少被考虑和记录。本文提出了一种基于copula的方法来更好地描述香港六个典型地点与直接相关的风能潜力。通过一系列copula模型构造了风速和风向的联合概率密度函数。结果表明,Frank copula在山顶和近海场地具有最佳的JPDF拟合性能,而Gumbel copula在城市场地的拟合性能优于其他模型。导出的JPDF用于估计所考虑地点的与方向相关的风功率密度。所获得的与风向相关的最大风能密度在城市站点的41.3W/m2到山顶站点的507.9W/m2之间变化。这些结果有望促进风力涡轮机的精确微型选择,从而提高香港风电场的经济效益。同时,所开发的基于copula的方法为进一步研究不同地形区域的风向风能评估提供了有用的参考。值得注意的是,所提出的基于copula的方法也可用于表征香港以外的其他地方与直接相关的风能潜力。
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来源期刊
Wind Energy
Wind Energy 工程技术-工程:机械
CiteScore
9.60
自引率
7.30%
发文量
0
审稿时长
6 months
期刊介绍: Wind Energy offers a major forum for the reporting of advances in this rapidly developing technology with the goal of realising the world-wide potential to harness clean energy from land-based and offshore wind. The journal aims to reach all those with an interest in this field from academic research, industrial development through to applications, including individual wind turbines and components, wind farms and integration of wind power plants. Contributions across the spectrum of scientific and engineering disciplines concerned with the advancement of wind power capture, conversion, integration and utilisation technologies are essential features of the journal.
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