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Centralized Dynamic State Estimation Using a Federation of Extended Kalman Filters With Intermittent PMU Data From Generator Terminals

机译:使用扩展卡尔曼滤波器联盟和来自发电机终端的间歇性PMU数据进行集中动态状态估计

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摘要

An improved dynamic state estimation scheme that performs estimation for the full plant (states of a generator, exciter field voltage, and governor mechanical torque) using intermittent data from a phasor measurement unit (PMU) connected at generator terminal is presented. Overall fourth-order generator model is assumed in an extended Kalman filter (EKF), while first-order governors and excitation systems are assumed for simplicity of large-scale implementation. State estimation is performed using the EKF with random PMU data dropouts and known inputs, i.e., secondary reference signals Pref and Vref provided to a power plant by the network control center from economic dispatch. The state estimation scheme has been extended to all generators in network and DSE is performed using a computationally decentralized federation of EKFs at a centralized phasor data concentrator where PMU data are aggregated while dealing with a specified stochastic dropout rate. Required modifications have, thus, been made to standard EKF formulation to account for communication channel interruption and inherent delays. Simulation studies performed on the benchmark IEEE 9 and 39 bus system demonstrated performance and resilience of the proposed centralized EKF-based estimation technique. We also found that a centralized estimator can lead to improved wide-area instability indices derived from state estimates rather than PMU data directly.
机译:提出了一种改进的动态状态估计方案,该方案使用来自连接在发电机终端的相量测量单元(PMU)的间歇数据对整个工厂(发电机状态,励磁机励磁电压和调速器机械转矩)进行估算。在扩展的卡尔曼滤波器(EKF)中假定了整个四阶发电机模型,而为简化大规模实现而假定了一阶调速器和励磁系统。使用带有随机PMU数据丢失和已知输入的EKF进行状态估计,即网络控制中心从经济调度向发电厂提供的次级参考信号Pref和Vref。状态估计方案已扩展到网络中的所有生成器,并且在集中相量数据集中器处使用EKF的计算分散式联合来执行DSE,在该集中相量数据集中器中,PMU数据在聚合时处理指定的随机丢失率。因此,已经对标准EKF公式进行了必要的修改,以解决通信信道中断和固有延迟的问题。在基准IEEE 9和39总线系统上进行的仿真研究证明了所提出的基于EKF的集中式估算技术的性能和弹性。我们还发现,集中估计器可以改善从状态估计而不是直接从PMU数据得出的广域不稳定指数。

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