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考虑尾流延迟特性的海上风电场LPV模型预测控制

LPV Model Predictive Control for Offshore Wind Farms Considering Wake Delay Characteristics

作者 Yang Liu · Jiahao Lin · Ling-ling Huang · Cheng Hua · Ruanming Huang · Yang Fu
期刊 IEEE Transactions on Sustainable Energy
出版日期 2025年7月
卷/期 第 17 卷 第 1 期
技术分类 控制与算法
技术标签 模型预测控制MPC 风电变流技术 调峰调频
相关度评分 ★★★★ 4.0 / 5.0
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中文摘要

本文针对海上风电场显著尾流效应及其动态延迟特性,提出一种融合准稳态尾流模型的线性变参数(LPV)模型预测控制方法,通过两阶段降维提升计算效率,协同优化发电量与机组疲劳损伤。仿真验证其在风速/风向动态变化下可有效抑制控制超调、提升功率输出并降低机械应力。

English Abstract

The pronounced wake effect in large-scale offshore wind farm necessitates careful consideration of its delay characteristics, which are crucial yet often overlooked in control. Addressing the coupling between the dynamic evolution of wake effects and the parameter changes of the WT control model, this paper introduces a Linear Parameter-Varying (LPV) model predictive control method that considers wake delay characteristics. Through the development of a quasi-steady state wake model, the wake delay characteristic is incorporated within an LPV model for the wind farm. A two-stage dimensionality reduction method is proposed to simplify the calculation, and a model predictive control (MPC) method is combined to optimize the fatigue damage balance and power generation enhancement in the wind farm coordinately. Simulation results from a wind farm consisting of 16 wind turbines validate the efficacy of the quasi-steady state wake model in depicting the spatial distribution of wake delays. Furthermore, in dynamically varying wind speed and directions scenarios, the proposed control method can effectively capture the wind speed delay and fluctuation characteristics between different wind turbines, leading to heightening power output and diminishing fatigue stresses. Notably, in comparison to the static model control, the adaptive parameter tuning mechanism inherent in the proposed method effectively curtails control overshoot, enhancing overall system performance.
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SunView 深度解读

该LPV-MPC算法对阳光电源风电变流器及iSolarCloud智能运维平台具有重要延伸价值:其尾流延迟建模与自适应参数整定机制可迁移至风电场级协同控制策略开发,支撑ST系列风电专用PCS实现更精准的有功功率动态分配;同时为PowerTitan等构网型储能系统参与风电场惯量响应与调频提供高精度预测接口。建议在iSolarCloud中集成该算法模块,面向海上风电项目提供‘风机-储能’联合MPC优化服务。