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Microgrid Fault Diagnosis Method Based on Whale Algorithm Optimizing Extreme Learning Machine

An extreme learning machine and fault diagnosis technology, which is applied in neural learning methods, fault location, machine learning, etc., can solve problems such as difficulty in achieving optimal network performance, achieve strong global optimization capabilities, improve recognition accuracy, and avoid random initialization Effect

Active Publication Date: 2022-03-15
YANSHAN UNIV
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AI Technical Summary

Problems solved by technology

By using the Whale Algorithm to optimize the input weights and hidden layer thresholds of the extreme learning machine to establish a fault diagnosis model, it solves the problem that the network performance is difficult to achieve optimal due to the artificial setting of the initial weights and hidden layer thresholds of the extreme learning machine, which is conducive to further development. Improve recognition accuracy

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  • Microgrid Fault Diagnosis Method Based on Whale Algorithm Optimizing Extreme Learning Machine
  • Microgrid Fault Diagnosis Method Based on Whale Algorithm Optimizing Extreme Learning Machine
  • Microgrid Fault Diagnosis Method Based on Whale Algorithm Optimizing Extreme Learning Machine

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Embodiment Construction

[0045] The present invention is achieved like this:

[0046] S1. According to the structure diagram of the micro-grid system, a simulation model of the grid-connected operation of the micro-grid including wind and storage is established, and each type of fault is simulated to obtain a three-phase fault voltage signal;

[0047] S2. Using wavelet packet analysis to decompose and reconstruct the collected three-phase fault voltage signal with three layers of wavelet packets, a total of 24 wavelet packet reconstruction signals are obtained, and the wavelet packet energy entropy structure of these 24 wavelet packet reconstruction signals is calculated Form a set of feature vectors as the input of the neural network;

[0048] S3. Use the whale optimization algorithm to optimize the input weight and threshold of the extreme learning machine to improve the global search ability of the network and make the network have better recognition accuracy;

[0049] S4. Finally, verify the effe...

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Abstract

The present invention relates to a microgrid fault diagnosis method based on the whale algorithm to optimize the extreme learning machine, including S1, first building a microgrid grid-connected operation simulation model including wind generators, photovoltaic cells and storage batteries, and collecting three-phase faults at both ends of the line Voltage signal; S2. Select db6 wavelet as the wavelet base, decompose and reconstruct the simulated three-phase fault voltage signal including phase A, phase B and phase C respectively according to the relevant formula of wavelet packet analysis, and calculate its energy entropy to obtain a total Contains the eigenvector X of energy entropy of 24 wavelet packets=[x 1 ,x 2 ,...x 24 ] T As a data sample; S3, using the whale algorithm WOA to optimize the input weights and hidden layer thresholds of the extreme learning machine ELM to establish a WOA-ELM fault diagnosis model, and bring the data samples obtained in S2 into the WOA-ELM model for training and verification. The diagnostic model established by BP neural network, RBF neural network and ELM was compared with the WOA-ELM model to verify the validity and reliability of the WOA-ELM model.

Description

technical field [0001] The invention relates to a fault diagnosis method for a wind-solar-storage micro-grid, which belongs to the field of fault detection and protection of a micro-grid, and specifically relates to a fault diagnosis method for a micro-grid based on a whale algorithm to optimize an extreme learning machine. Background technique [0002] Distributed power generation is the main direction of new energy development. Microgrid is one of the effective means of integrating distributed energy and an important part of the power system. Microgrid uses renewable energy such as wind turbines, solar power generation equipment, and fuel cells to generate electricity. It has the advantages of green environmental protection, safety and reliability, simple energy conversion, and low operation and maintenance costs. It can effectively solve the shortage of traditional energy sources and the increasingly serious environmental problems. pollution problem. During the operation...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G01R31/52G01R31/58G01R31/08G06N3/00G06N3/04G06N3/08G06N20/00
CPCG01R31/52G01R31/58G01R31/085G01R31/086G01R31/088G06N3/084G06N3/006G06N20/00G06N3/045Y04S10/50Y04S10/52
Inventor 吴忠强卢雪琴何怡林谢宗奎王国勇
Owner YANSHAN UNIV
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