Study on DC series arc fault in photovoltaic systems for condition monitoring purpose

Shibo Lu, B. Phung, Daming Zhang
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引用次数: 11

Abstract

Photovoltaic (PV) systems are increasingly being used. Due to ageing effects and also the trend toward higher DC voltage level, incidents of DC arc faults in PV systems are becoming more common, which have serious impacts on system stability and human safety. Parallel arcs draw high current compared to series arc faults and so detection of the latter is more challenging. This paper attempts to extract the features of DC series arc fault for condition monitoring purpose, achieved through studying the arc characteristics, carrying out simulation in Matlab/Simulink and laboratory experiments. Different arc models are investigated, and a set of parameters for the heuristic model is formulated for low current arcs. It is shown that the simulated arc by the heuristic model is consistent with experimental data. The arc noise features under electrodes' separation region and steady-arcing states with different gap width are investigated. It is found that the arc noise floor will increase after arc fault occurrence, especially for the frequency band below 50 kHz. This characteristic can be exploited for series DC arc fault detection. Moreover, frequency contents below 5 kHz are relatively more sensitive to change of air gap width.
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用于状态监测的光伏系统直流串联电弧故障研究
光伏(PV)系统的应用越来越广泛。由于老化的影响和直流电压水平的提高,光伏系统直流电弧故障事件越来越多,对系统的稳定性和人身安全造成了严重的影响。与串联电弧故障相比,并联电弧产生的电流较大,因此串联电弧故障的检测更具挑战性。本文试图提取直流串联电弧故障的特征,以达到状态监测的目的,通过研究电弧特性,在Matlab/Simulink中进行仿真和实验室实验来实现。研究了不同的电弧模型,并针对小电流电弧建立了一套启发式模型参数。结果表明,启发式模型模拟的电弧与实验数据吻合较好。研究了不同间隙宽度下电极分离区和稳定电弧状态下的电弧噪声特征。研究发现,电弧故障发生后,电弧噪声本底增大,特别是在50khz以下频段。该特性可用于直流电弧串联故障检测。5 kHz以下的频率内容对气隙宽度的变化相对更敏感。
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