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Fusion of Multirate Measurements for Nonlinear Dynamic State Estimation of the Power Systems

机译:电力系统非线性动态状态估计的多速率测量融合

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摘要

With the increasing availability of sensors, power system dynamic state estimation (PSDSE) is going to play a critical role in the reliable and efficient operation of power systems. The real-time measurements in today’s power grid are obtained through various types of sensors having different sampling rates, e.g., the traditional SCADA systems with low sampling rates (generally 0.5–2 samples per second), and different groups of phasor measurement units having high sampling rates (usually 30–60 samples per second). We propose amulti-rate multi-sensor data fusion-based PSDSE framework to utilize the measurements coming from sensors with two different sampling rates. The continuous time-domain nonlinear dynamical and measurement equations are discretized at appropriate sampling periods to obtain two discrete models. Two separate estimators are developed using these models. State information of the intermediate time steps of the estimation having coarser sampling period is evaluated using model-based prediction. These two estimations are optimally combined orfusedusing Bar–Shalom–Campo formula. The proposed algorithm tracks the dynamic states successfully during transient events such as faults. The method is demonstrated by using the standard IEEE-9, 39, 57, and 118 bus systems. Thefusion-based state estimator is shown to perform better than the individual state estimators.
机译:随着传感器可用性的提高,电力系统动态状态估计(PSDSE)将在电力系统的可靠和高效运行中发挥关键作用。当今电网中的实时测量是通过具有不同采样率的各种类型的传感器获得的,例如,传统的SCADA系统具有低采样率(通常为每秒0.5–2个采样),而不同组的相量测量单元具有很高的采样率采样率(通常为每秒30–60个样本)。我们建议使用 n <斜体xmlns:mml = “ http://www.w3.org/1998/Math/MathML ” xmlns:xlink = “ http://www.w3.org/1999/xlink 基于多速率多传感器数据融合的PSDSE框架,可利用来自具有两种不同采样率的传感器的测量结果。在适当的采样周期内离散连续的时域非线性动力学和测量方程,以获得两个离散模型。使用这些模型开发了两个单独的估算器。使用基于模型的预测来评估采样周期较粗的估计的中间时间步长的状态信息。这两个估计值是最佳组合,或者 n <斜体xmlns:mml = “ http://www.w3.org/1998/Math/MathML ” xmlns:xlink = “ http://www.w3.org/ 1999 / xlink “>融合 使用Bar–Shalom–Campo公式。所提出的算法可以在瞬态事件(例如故障)期间成功跟踪动态状态。通过使用标准IEEE-9、39、57和118总线系统演示了该方法。 n <斜体xmlns:mml = “ http://www.w3.org/1998/Math/MathML ” xmlns:xlink = “ http://www.w3.org/1999/xlink ”>结果表明,基于融合 n的状态估计器的性能要优于单个状态估计器。

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