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Photovoltaic array fault diagnosis method based on K-SVD training sparse dictionary

A technology of sparse dictionary and photovoltaic array, applied in photovoltaic modules, photovoltaic power generation, photovoltaic system monitoring, etc., to achieve fast speed and strong environmental applicability

Active Publication Date: 2018-12-11
FUZHOU UNIV
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Problems solved by technology

[0005] At present, there is no research on applying K-SVD training sparse dictionary to fault diagnosis and classification of photovoltaic power generation arrays in published literature and patents

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  • Photovoltaic array fault diagnosis method based on K-SVD training sparse dictionary
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  • Photovoltaic array fault diagnosis method based on K-SVD training sparse dictionary

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Embodiment Construction

[0039] The technical solution of the present invention will be specifically described below in conjunction with the accompanying drawings.

[0040] The invention provides a photovoltaic array fault diagnosis method based on K-SVD training sparse dictionary, comprising the following steps:

[0041] Step S1, collect multiple sets of normal, short-circuit and open-circuit current sample signals of photovoltaic power generation arrays, and construct a training sample matrix, including a normal sample matrix, a short-circuit sample matrix and an open-circuit sample matrix;

[0042] Step S2, performing normalization processing on each sample signal;

[0043] Step S3, calling the K-SVD algorithm to determine the number of rows N and the number of columns M of the training sample matrix, where N and M are also the sample dimension, the number of samples, the vocabulary K of the sparse dictionary, the degree of sparsity L, and the number of iterations n ;

[0044] Step S4, using the ...

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Abstract

The invention relates to a photovoltaic array fault diagnosis method based on a K-SVD training sparse dictionary. Multiple groups of photovoltaic array normal, short circuit and open circuit current sample signals are acquired to construct training sample matrixes; each sample signal is subjected to normalization processing; a K-SVD algorithm is called to determine the row number N and the columnnumber M of the training sample matrix, the vocabulary K and the sparsity L of the sparse dictionary and the number of iterations n; a normal sample matrix, a short circuit sample matrix and an open circuit sample matrix are used to train a normal sparse dictionary, a short circuit sparse dictionary and an open circuit sparse dictionary; an OMP algorithm is called, the three sparse dictionaries are used to reconstruct detected sample signals respectively, and correlation coefficients between the three reconstructed signals and the detected sample signals are calculated; and according to the sizes of the correlation coefficients between the detected sample signals and the reconstructed signals of the sparse dictionaries, diagnosis and classification on photovoltaic array faults can be realized. Research experience and research ideas can be provided for photovoltaic fault diagnosis.

Description

technical field [0001] The invention relates to a photovoltaic array fault diagnosis technology, in particular to a photovoltaic array fault diagnosis method based on K-SVD training sparse dictionary. Background technique [0002] Because of its clean, non-polluting and inexhaustible characteristics, solar energy has become a strategic means to solve global energy shortages and environmental pollution. Photovoltaic power generation is the main way to utilize solar energy. With the support of national policies, the photovoltaic power generation industry has risen rapidly, bringing huge economic and environmental benefits. In photovoltaic power generation systems, photovoltaic power generation arrays, as the core components of solar energy collection, usually work in complex and changeable outdoor environments, and are easily affected by harsh factors such as wind, frost, rain and snow, resulting in failures such as short circuits, open circuits, shadows, etc. Faults will red...

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Application Information

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IPC IPC(8): G05B23/02G01R31/00H02S50/10
CPCG01R31/00G05B23/0243G05B2219/24065H02S50/10Y02E10/50Y04S10/52
Inventor 林培杰程树英俞金玲郑艺林陈志聪吴丽君郑茜颖章杰
Owner FUZHOU UNIV
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