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The detection of abrupt changes using recursive identification for power system fault analysis

机译:使用递归识别进行电力系统故障分析的突变检测

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This paper describes the application of the recursive parameter estimation technique used to detect the abrupt changes in the signals recorded during disturbances in the power network of South Africa. The recursive identification technique uses M parallel Kalman filters. Main focus has been to estimate the time-instants of the changes in the signal model parameters during the pre-fault condition and following the events like initiation of fault, circuit-breaker opening, auto-reclosure of the circuit-breakers and the like. After segmenting the fault signal precisely into these event-specific sections, further signal processing and analysis can be performed on these segments, leading to automated fault recognition and analysis. In the scope of this paper, we focus on the first task, that is, segmenting the fault signal into event-specific sections using the recursive identification technique.
机译:本文介绍了递归参数估计技术的应用,该技术用于检测南非电网干扰期间记录的信号的突变。递归识别技术使用M个并行卡尔曼滤波器。主要焦点是估计在故障前状况期间以及在诸如故障的引发,断路器断开,断路器的自动重合等事件之后的信号模型参数的变化的时间常数。将故障信号精确地划分为这些特定于事件的部分后,可以在这些部分上执行进一步的信号处理和分析,从而实现自动故障识别和分析。在本文的范围内,我们专注于第一个任务,即使用递归识别技术将故障信号分割为特定于事件的部分。

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