Particle filter joint state and parameter estimation of dynamic power systems

Muhammed Akif Ulker, B. Uzunoğlu
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引用次数: 7

Abstract

Intermittent renewable energy sources in distributed generation will increase the chance of sudden unpredictable changes in the system states and parameters of dynamic power systems. To track the changes of the power systems, system state and parameter estimation methods that can track the near real-time dynamics of the power systems are needed. Power system operators still employ simulation studies using off-line models that are built based on prior knowledge gained through information via simulated typical scenarios which does not make use of posterior knowledge of neither parameter space nor state space of the dynamics of the power systems. Dynamic models of a power system has increasingly more important role in power system operations since they impact the operational conditions of dynamical power system. In this study, we propose a particle filter based state and parameter estimation method to improve modelling accuracy, which determines the best set of model parameters using real-time measurement data. This can be achieved via measurements by Phasor Measurement Units (PMU) or Remote Terminal Units (RTU) that can capture the system dynamic responses in real time. In addition, parameters of the system can also be estimated. Herein the load will be the parameter of the system that needs to be estimated jointly with the states. Joint state and parameter estimation for power systems via employing Bayesian particle filter is being introduced in this study.
动态电力系统的粒子滤波联合状态与参数估计
间歇性可再生能源分布式发电将增加的机会突然不可预测的系统状态和参数的变化动态电力系统。追踪电力系统的变化,系统状态和参数估计方法,可以跟踪的实时动态电力系统是必要的。电力系统运营商仍然使用离线模型进行仿真研究,这些模型是基于通过模拟典型场景的信息获得的先验知识建立的,没有利用电力系统动力学的参数空间和状态空间的后验知识。电力系统的动态模型影响着动力系统的运行状况,在电力系统运行中起着越来越重要的作用。在本研究中,我们提出了一种基于粒子滤波的状态和参数估计方法来提高建模精度,该方法利用实时测量数据确定最佳模型参数集。这可以通过相量测量单元(PMU)或远程终端单元(RTU)的测量来实现,它们可以实时捕获系统的动态响应。此外,还可以对系统的参数进行估计。这里的负荷将是系统的参数,需要与状态共同估计。本文介绍了利用贝叶斯粒子滤波对电力系统进行联合状态和参数估计的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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