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首页> 外文期刊>IEEE Transactions on Power Systems >Tracking Electromechanical Oscillations: An Enhanced Maximum-Likelihood Based Approach
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Tracking Electromechanical Oscillations: An Enhanced Maximum-Likelihood Based Approach

机译:跟踪机电振荡:一种基于最大似然的增强方法

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摘要

Lightly damped electromechanical oscillations are major operating concerns if failed to be detected at an early stage. This paper improved the existing extended complex Kalman filter (ECKF) technique of tracking electromechanical oscillations using synchrophasor measurements. The proposed algorithm adopted a distributed architecture for estimating oscillatory parameters from local substations. The novelty lies in handling maximum likelihood (ML) to enhance the convergence property in tracking multiple modes using an expectation maximization (EM) approach. This was achieved by encapsulating the augmented Lagrangian (AL) in the maximization step of the EM algorithm, which utilized a novel ECKF-based smoother (ECKS). Performance evaluations were conducted using IEEE 68-bus system and recorded synchrophasor measurements collected from the New Zealand grid. Random noise variance test cases were generated to examine the performance of the proposed algorithm. To ensure the robustness to random noisy conditions, the algorithm was tested based on exhaustive Monte Carlo simulations. Comparisons were made with the existing Prony analysis (PA), Kalman filter (KF), and distributed EM-based FB-KLPF.
机译:如果在早期无法检测到,则轻微阻尼的机电振荡是主要的操作问题。本文改进了现有的扩展复卡尔曼滤波器(ECKF)技术,该技术使用同步相量测量来跟踪机电振荡。所提出的算法采用分布式架构来估计本地变电站的振荡参数。新奇之处在于使用期望最大化(EM)方法处理最大似然(ML),以增强跟踪多个模式时的收敛性。这是通过在EM算法的最大化步骤中封装增强的Lagrangian(AL)来实现的,该算法使用了一种新颖的基于ECKF的平滑器(ECKS)。使用IEEE 68总线系统进行性能评估,并记录从新西兰电网收集的同步相量测量值。生成随机噪声方差测试用例以检查所提出算法的性能。为了确保对随机噪声条件的鲁棒性,该算法基于详尽的蒙特卡洛模拟进行了测试。与现有的Prony分析(PA),卡尔曼滤波器(KF)和基于EM的分布式FB-KLPF进行了比较。

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