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Maximum likelihood ensemble filter state estimation for power systems fault diagnosis

机译:电力系统故障诊断的最大似然集合滤波器状态估计

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Maximum Likelihood Ensemble Filter (MLEF) is a deterministic filtering approach that employs the ensembles. The method applies low dimensional ensemble space for the computation of a nonlinear cost function Hessian preconditioning and implements the optimization of the cost function. The MLEF is utilized as state estimation instrument that estimates states of dynamic systems and contributes to reliable and safe operation and monitoring of dynamic systems. In this article, MLEF is employed as a state estimation tool to track the states of a nonlinear power system to assist the fault diagnosis and bad data analysis of the system. A three-node benchmark power system model is considered in this study and a disconnection event is implemented as a fault scenario on the system with measurement data which contains some bad data. The scenario refers to a discontinuous problem which has non-derivable points and this is contrary to gradient based techniques. The MLEF practice on the introduced problem is examined and the results are illustrated. The obtained results shows that the estimation convergence of the MLEF technique on the considered benchmark model is satisfactory.
机译:最大似然集合滤波器(MLEF)是一种采用集合的确定性滤波方法。该方法将低维集合空间用于非线性成本函数Hessian预处理,并实现了成本函数的优化。 MLEF用作状态估计工具,可以估计动态系统的状态,并有助于可靠,安全地操作和监视动态系统。在本文中,MLEF被用作状态估计工具来跟踪非线性电力系统的状态,以帮助系统进行故障诊断和不良数据分析。在这项研究中考虑了一个三节点基准电力系统模型,并且断开事件被作为带有包含一些不良数据的测量数据的系统上的故障情形而实施。该方案涉及具有不可导数点的不连续问题,这与基于梯度的技术相反。对引入的问题的MLEF实践进行了检查,并说明了结果。获得的结果表明,在考虑的基准模型上,MLEF技术的估计收敛性令人满意。

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