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Measurement based power system dynamics prediction with multivariate AutoRegressive Model

机译:多元自回归模型的基于测量的电力系统动力学预测

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Power system dynamics prediction is important for online situation awareness and adaptive control. Model-based simulation is not applicable for dynamics prediction due to constant change of network configuration. With more and more Phasor Measurement Units (PMU), power system dynamics can be studied with pure measurement data. This paper proposes a dynamics prediction method based on measurement data. A mulit-input multi-output Multivariate AutoRegressive model (MAR) is developed and dynamics prediction procedure is proposed. Both simulation data and field measurement data are tested. Examples show that the proposed method can predict power system dynamics with high accuracy for simulation data and give reasonable result for measurement data. It provides an alternative approach to study power system dynamics.
机译:电力系统动力学预测对于在线态势感知和自适应控制非常重要。由于网络配置不断变化,基于模型的仿真不适用于动力学预测。随着越来越多的相量测量单元(PMU),可以使用纯测量数据来研究电力系统动力学。提出了一种基于测量数据的动力学预测方法。建立了多输入多输出多元自回归模型,并提出了动力学预测程序。模拟数据和现场测量数据都经过测试。实例表明,该方法可以对仿真数据进行高精度的电力系统动态预测,并为测量数据提供合理的结果。它提供了一种研究电力系统动力学的替代方法。

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