Application of the convolutional neural network in partial discharge spectrum recognition of power apparatus
Application of the convolutional neural network in partial discharge spectrum recognition of power apparatus
Blog Article
Abstract Partial discharge (PD) detection is used to evaluate the insulation status of high‐voltage equipment.The most challenging aspect of traditional PD recognition is extracting features from the discharge signal.Accordingly, this study applied the visual geometry group‐19 (VGG‐19) model to gas‐insulated switchgear (GIS) PD image recognition.A high frequency current transformer and an LDP‐5 inductive sensor measured PD electrical signals emitted Samsung RB33N321NSS/EU Frost Free Fridge Freezer - S/Steel by 15‐kV GIS.
Next, the Hilbert energy spectrum was obtained by Hilbert transform in the time and frequency domains.Compared with a phase‐resolved PD pattern, the Powerline/Ethernet Converters Hilbert spectrum can represent the energy and instantaneous frequency with the time variable.Finally, the VGG‐19 model was applied for PD pattern recognition.For validation, its recognition performance was compared with that of a fractal theory by using a neural network method.
The VGG‐19 method is straightforward and has a high PD recognition rate, thereby enabling equipment manufacturers to quickly verify the insulation of GIS during assembly or operation.