A novel intelligent detection schema of series arc fault in photovoltaic (PV) system based convolutional neural network
DOI:
https://doi.org/10.21533/pen.v8.i3.1202Abstract
Series Arc Fault (SAF) is the failure that occurs between any electrical contact and any electrical circuitry. However, it considered one of the common malfunctions that affect the operation of the PV system and causes serious problems such as fires and electrical shock hazards. Several reasons increase the possibility of this type of failures, such as incorrect installation, irregular maintenance, and some environmental effects. This paper presents a new intelligent and accurate detection method of SAF in the PV system. In this method, Convolutional neural networks (CNN) which is a discriminative (supervised) deep learning algorithm used for the process of fault detection. In typical cases, the signal consists of DC component, inverter component and noise of Network. In the case of SAF, a new part will add to the signal; therefore, CNN used to discriminate against the additional component to detect the SAF accurately. PSCAD is used to generate the Arc fault model; Performance evaluation and the results of the proposed method implemented using Python. The achieved accuracy of the proposed detection method is 98.9%.
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