Determine Q-V characteristics of grid connected wind farms for voltage control using data driven analytics approach

Chowdhury Andalib-Bin-Karim, Xiaodong Liang, N. Khan, Huaguang Zhang
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引用次数: 2

Abstract

Due to varying and intermittent nature of wind resource, grid connected wind farms pose significant technical challenges to power grid on power quality and voltage stability. Wind farm Q-V characteristic curve at the point of interconnection (POI) can offer valuable information for voltage control actions and provide essential indication about voltage stability. Data driven analytics is a promising approach to determine characteristics of a large complex system, physical model of which is difficult to obtain. In this paper, the data driven analytics is used to determine Q-V curve of grid connected wind farms based on measurement data recorded at the POI. Different curve fitting models, such as Polynomial, Gaussian and Rational, are evaluated and best fit is determined based on different graphical and numerical evaluation metrics. A case study is conducted using field measurement data at two grid connected wind farms currently in operation in Newfoundland and Labrador, Canada. It is found that the Gaussian (degree 2) model describes the Q-V relationship most accurately for the two wind farms. The obtained functions and processed data can be used in the voltage controller design. The plotted QV curve can also be used to determine the reactive margin at the POI for voltage stability evaluation. As a generic method, the proposed approach can be employed to determine Q-V characteristic curve of any grid connected large wind farms.
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使用数据驱动分析方法确定并网风电场的电压控制Q-V特性
由于风力资源的多变性和间歇性,并网风电场对电网的电能质量和电压稳定性提出了重大的技术挑战。风电场并网点的Q-V特性曲线可以为电压控制行动提供有价值的信息,并提供电压稳定性的基本指示。数据驱动分析是确定难以获得物理模型的大型复杂系统特征的一种很有前途的方法。本文采用数据驱动分析方法,根据POI测量数据确定并网风电场的Q-V曲线。对多项式、高斯和有理等不同的曲线拟合模型进行了评价,并根据不同的图形和数值评价指标确定了最佳拟合。案例研究使用了目前在加拿大纽芬兰和拉布拉多运行的两个并网风力发电场的现场测量数据。研究发现,高斯(二阶)模型最准确地描述了两个风电场的Q-V关系。得到的函数和处理后的数据可用于电压控制器的设计。绘制的QV曲线也可用于确定POI处的无功裕度,用于电压稳定性评估。该方法作为一种通用方法,可用于确定任何并网大型风电场的Q-V特性曲线。
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