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Arc Fault Detection Through Model Reference Estimation

机译:电弧故障检测通过模型参考估计

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In most arc fault circuit breakers, arc detection is accomplished through the signature analysis of remotely sensed branch currents, with high-frequency spectral components being indicative of arcing. This paper presents an alternative approach based upon system identification. A model is assumed for the load on the distribution bus. This model is updated continuously by comparing measured voltages and/or currents to the values predicted by the model. The resulting prediction errors are used to adjust the model in real time. In aviation loads, even in nonlinear loads that are rapidly and repetitively engaged and disengaged, we find that the model successfully adapts to give a good description of the load. However, when an arcing fault is present, its chaotic nature prevents a successful model identification and the prediction errors remain large. The large, continuous prediction errors provide a means of fault identification in a short time and with a high level of confidence.
机译:在大多数电弧故障断路器中,电弧检测通过远程感测分支电流的签名分析来完成,具有高频光谱分量,指示电弧。本文介绍了基于系统识别的替代方法。假设用于在分配总线上的负载的模型。通过将测量的电压和/或电流与模型预测的值进行比较,连续更新该模型。得到的预测误差用于实时调整模型。在航空荷载中,即使在快速和重复地接合和脱离的非线性载荷中,我们发现该模型成功地适应了对负载的良好描述。然而,当存在电弧机构时,其混沌性质可防止成功的模型识别,并且预测误差保持大。大的连续预测误差在短时间内提供了故障识别的手段,具有高度的置信度。

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