Control-oriented modelling of wind direction variability

IF 3.6 Q3 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY
Scott Dallas, Adam Stock, Edward Hart
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引用次数: 2

Abstract

Abstract. Wind direction variability significantly affects the performance and lifetime of wind turbines and wind farms. Accurately modelling wind direction variability and understanding the effects of yaw misalignment are critical towards designing better wind turbine yaw and wind farm flow controllers. This review focuses on control-oriented modelling of wind direction variability, which is an approach that aims to capture the dynamics of wind direction variability for improving controller performance over a complete set of farm flow scenarios, performing iterative controller development and/or achieving real-time closed-loop model-based feedback control. The review covers various modelling techniques, including large eddy simulations (LESs), data-driven empirical models, and machine learning models, as well as different approaches to data collection and pre-processing. The review also discusses the different challenges in modelling wind direction variability, such as data quality and availability, model uncertainty, and the trade-off between accuracy and computational cost. The review concludes with a discussion of the critical challenges which need to be overcome in control-oriented modelling of wind direction variability, including the use of both high- and low-fidelity models.
以控制为导向的风向变化建模
摘要风向变化会严重影响风力涡轮机和风电场的性能和使用寿命。准确模拟风向变化并了解偏航失准的影响,对于设计更好的风机偏航和风电场流量控制器至关重要。本综述重点关注以控制为导向的风向变异性建模,这种方法旨在捕捉风向变异性的动态变化,以提高整套风电场流量方案的控制器性能,执行迭代控制器开发和/或实现基于模型的实时闭环反馈控制。综述涵盖各种建模技术,包括大涡度模拟 (LES)、数据驱动的经验模型和机器学习模型,以及数据收集和预处理的不同方法。综述还讨论了风向可变性建模的不同挑战,如数据质量和可用性、模型的不确定性以及精度和计算成本之间的权衡。综述最后讨论了在以控制为导向的风向变化建模中需要克服的关键挑战,包括使用高保真和低保真模型。
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来源期刊
Wind Energy Science
Wind Energy Science GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
6.90
自引率
27.50%
发文量
115
审稿时长
28 weeks
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