Composite material damage detection method based on wavelet analysis and BP neural network

A BP neural network, composite material technology, applied in the field of composite material damage detection, can solve the problems of false low-frequency component filtering, edge effect, wavelet transform is not intelligent enough, achieve good time-frequency local characteristics, and solve nonlinear problems. Effect

Inactive Publication Date: 2016-01-06
NANJING INST OF MEASUREMENT & TESTING TECH
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Problems solved by technology

Conventional Fourier analysis theory has limitations in time-frequency joint analysis. It can only simply convert time-domain signals into frequency-domain signals, but cannot obtain the time when specific frequency band data appears, which has serious drawbacks in data processing; HHT When the transformation decomposes complex signals, it has the disadvantages of low accuracy of solution results and long calculation time. At the same time, there are problems o...

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  • Composite material damage detection method based on wavelet analysis and BP neural network
  • Composite material damage detection method based on wavelet analysis and BP neural network
  • Composite material damage detection method based on wavelet analysis and BP neural network

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Embodiment Construction

[0027] The present invention will be further described below in conjunction with the accompanying drawings.

[0028] In order to study the application of wavelet analysis and BP neural network algorithm in the damage detection of composite materials, the impact test of composite materials is firstly carried out. The main research is the impact response analysis. When there is an external force or torque in the test system, the system will will generate a response. According to the system response, the relationship between the change of the strain of the measured object caused by the change of the external stress field and the change of the central wavelength of the fiber grating sensor can be obtained, so that the response signal can be collected by the fiber grating sensor.

[0029] Such as figure 1 As shown, the composite material damage detection method based on wavelet analysis and BP neural network includes the following steps:

[0030] Step (1), collecting the damage s...

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Abstract

The invention discloses a composite material damage detection method based on wavelet analysis and a BP neural network, comprising the steps as follows: preprocessing a damage signal based on wavelet packet analysis in a wavelet analysis algorithm; reconstructing a wavelet packet decomposition coefficient according to a wavelet packet analysis algorithm; using a wavelet packet to decompose the damage signal into five layers to obtain 32 frequency components; reconstructing the wavelet packet decomposition coefficient; obtaining the energy spectrum diagram of the wavelet packet based on the fact that each node coefficient represents the energy of a corresponding order; selecting the energy value of an order, which has the maximum energy value (namely, which is the most sensitive) in the energy spectrum diagram of the wavelet packet, as a damage feature vector; and extracting feature vectors of different damage levels to constitute a learning sample of the BP neural network. The composite material damage detection method is fast in convergence, and simple and effective. The BP neural network after learning and training has the ability to identify the mode of damage to a composite material, can accurately identify the damage to a composite material and the degree of damage, and can locate the damage.

Description

technical field [0001] The invention designs a composite material damage detection method based on wavelet analysis and BP neural network, and belongs to the technical field of damage signal identification and processing in structural health monitoring. Background technique [0002] Composite materials have the advantages of light weight, high strength, and corrosion resistance, and have been widely used in military, aerospace, transportation, electronics, and other fields. Since composite materials are easily damaged by external damage, it is very important to detect damage to composite materials. At present, there are few researches on efficient identification and processing methods for composite damage signals. [0003] In the prior art, the detection of composite materials generally adopts the acoustic emission method, and the detection of sound waves generally uses Lamb waves. Since Lamb waves are more sensitive to damage and easier to analyze, short-time Fourier transf...

Claims

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Application Information

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IPC IPC(8): G06T7/00
CPCG06T7/0004G06T2207/20081
Inventor 胡宁
Owner NANJING INST OF MEASUREMENT & TESTING TECH
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