Transformer multi-source partial discharge mode identification method based on parallel feature domain

A partial discharge and pattern recognition technology, applied in character and pattern recognition, neural learning methods, instruments, etc., can solve the problems of inaccurate signal feature quantity and poor signal separation effect, achieve strong sparse ability, improve generalization ability, Various forms of effects

Active Publication Date: 2020-05-12
CHINA THREE GORGES UNIV
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  • Application Information

AI Technical Summary

Problems solved by technology

[0005] ①. The signal separation effect is poor; ②. The artificially extracted signal features are not accurate enough; ③. The neural network algorithm used for pattern recognition has problems such as overfitting during training

Method used

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  • Transformer multi-source partial discharge mode identification method based on parallel feature domain
  • Transformer multi-source partial discharge mode identification method based on parallel feature domain
  • Transformer multi-source partial discharge mode identification method based on parallel feature domain

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Embodiment Construction

[0070] figure 1 It is a structural diagram of the autoencoder of the present invention; it can be seen that the autoencoder is an unsupervised neural network with only one hidden layer. The neural network is composed of an encoder network and a decoder network. The encoder network is used to construct the feature space and has excellent feature extraction capabilities, while the decoder network can reconstruct the input data from the feature space. The encoder network maps the input layer to the hidden layer through the activation function, where the activation value of each neuron in the input layer corresponds to each value of the input data, and the activation value of the hidden layer neuron is the weight matrix, bias matrix and Non-linear mapping values ​​between input data.

[0071] figure 2 It is a schematic diagram of the parallel feature domain of the present invention; it can be seen that the parallel feature domain is composed of two stacked encoders, one of whic...

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Abstract

The invention discloses a transformer multi-source partial discharge mode identification method based on a parallel feature domain. The method comprises the steps: extracting multi-source partial discharge signals to construct a multi-source partial discharge time domain signal set and a time-frequency domain signal set; combining a plurality of single neural network automatic encoders into two stacked encoders; selecting a sigmoid function as an activation function between the stacked encoder network layers, and obtaining an activation value of the next network layer by using the activation function; adding a regularization item to a loss function for adjusting each layer of network parameters in the stacked encoder; setting an optimization solution method of the loss function as a near-end guide random sub-gradient algorithm; adding softmax as a classification layer of the neural networks; and carrying out parallel training on the multi-source partial discharge time domain signal setand the time-frequency domain signal set by using the stacked encoder, wherein feature matrix data has corresponding labels, and a classification result is compared to finely adjust network parameters. The method has the advantages of high classification precision, strong generalization ability of a deep learning model and the like, and is suitable for occasions such as multi-source partial discharge mode identification of a transformer.

Description

technical field [0001] The invention relates to the field of transformer partial discharge pattern recognition, in particular to a transformer multi-source partial discharge pattern recognition method based on parallel feature domains. Background technique [0002] The traditional multi-source partial discharge identification method is based on the structural feature quantity, but although the artificially constructed features have clear physical meaning, but the dimension is lower; and the deep learning algorithm uses the nonlinear mapping between the hidden layers to integrate the multi-source partial discharge The discharge feature information is abstracted into a multi-dimensional matrix, which covers more feature information and can better represent the original multi-source partial discharge information. [0003] As deep learning is one of the most efficient feature extraction tools, as the number of network layers increases, redundant parameters between network layers...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01R31/12G06K9/00G06K9/62G06N3/04G06N3/08
CPCG01R31/12G06N3/08G06N3/045G06F2218/08G06F18/253
Inventor 徐艳春夏海廷谢莎莎
Owner CHINA THREE GORGES UNIV
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