Wilson Aaron J, Warmack Bruce R J, Ekti Ali Riza, Liu Yilu
Department of Electrical Engineering and Computer Science, The University of Tennessee, Knoxville, TN 37996, USA.
Oak Ridge National Laboratory, Oak Ridge, TN 37830, USA.
Sensors (Basel). 2022 Nov 15;22(22):8827. doi: 10.3390/s22228827.
The protection, control, and monitoring of the power grid is not possible without accurate measurement devices. As the percentage of renewable energy sources penetrating the existing grid infrastructure increases, so do uncertainties surrounding their effects on the everyday operation of the power system. Many of these devices are sources of high-frequency transients. These transients may be useful for identifying certain events or behaviors otherwise not seen in traditional analysis techniques. Therefore, the ability of sensors to accurately capture these phenomena is paramount. In this work, two commercial-grade power system distribution sensors are investigated in terms of their ability to replicate high-frequency phenomena by studying their responses to three events: a current inrush, a microgrid "close-in", and a fault on the terminals of a wind turbine. Kernel density estimation is used to derive the non-parametric probability density functions of these error distributions and their adequateness is quantified utilizing the commonly used root mean square error (RMSE) metric. It is demonstrated that both sensors exhibit characteristics in the high harmonic range that go against the assumption that measurement error is normally distributed.
没有精确的测量设备,就无法实现电网的保护、控制和监测。随着可再生能源在现有电网基础设施中的渗透率不断提高,其对电力系统日常运行影响的不确定性也在增加。这些设备中的许多都是高频瞬变的来源。这些瞬变可能有助于识别某些传统分析技术无法发现的事件或行为。因此,传感器准确捕捉这些现象的能力至关重要。在这项工作中,通过研究两个商用级电力系统配电传感器对三种事件的响应,即电流涌入、微电网“合闸”和风力涡轮机端子故障,来考察它们复制高频现象的能力。核密度估计用于推导这些误差分布的非参数概率密度函数,并使用常用的均方根误差(RMSE)指标对其适用性进行量化。结果表明,两个传感器在高谐波范围内均表现出与测量误差呈正态分布这一假设相悖的特性。