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Structural damage recognition method based on echo state and multi-scale convolution joint model

A joint model and echo state technology, applied in pattern recognition in signals, character and pattern recognition, neural learning methods, etc., can solve problems such as network gradient disappearance, insufficient model depth, complex calculations, etc., to ensure safety and prevent disasters The effect of the accident

Active Publication Date: 2020-10-09
CHONGQING JIAOTONG UNIVERSITY
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Problems solved by technology

Therefore, the problem of how to construct more samples based on the simulation and laboratory real bridge model data needs to be solved urgently; (3) The shallow neural network model has a weak feature extraction ability due to insufficient depth of the model, thus damage identification The accuracy is low; the deep neural network model tends to cause the network gradient to disappear or the calculation to be complex as the depth of the model increases

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  • Structural damage recognition method based on echo state and multi-scale convolution joint model
  • Structural damage recognition method based on echo state and multi-scale convolution joint model
  • Structural damage recognition method based on echo state and multi-scale convolution joint model

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[0040] The present invention will be further described in detail below in conjunction with the accompanying drawings.

[0041] Such as figure 1 As shown, it is the structural damage identification method based on the joint model of echo state and multi-scale convolution disclosed by the present invention, including:

[0042] S1. Using multiple sensors arranged in different positions to collect structural vibration response information;

[0043] S2. Perform data enhancement on the structural vibration response information collected by each sensor based on sliding window overlapping;

[0044] S3. The enhanced structural vibration response information collected by each sensor is input into the joint model of the echo state network and the multi-scale convolutional neural network;

[0045] S4. The joint model of the echo state network and the multi-scale convolutional neural network is based on the time and context dependence characteristics of the structural vibration response ...

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Abstract

The invention discloses a structural damage recognition method based on an echo state and multi-scale convolution joint model. The method comprises the steps of performing data enhancement on structural vibration response information acquired by each sensor based on a sliding window overlapping mode; and the echo state network and multi-scale convolutional neural network joint model performs damage state judgment based on the time-before-and-after dependence characteristics of the structural vibration response information acquired by each sensor and the spatial correlation characteristic information between the structural vibration response information acquired by different sensors. According to the method, the time sequence dependence and the spatial correlation between the structural vibration response data can be effectively extracted, so that whether the structure is damaged or not and the damage degree are accurately judged, and the method is scientific and efficient; the damage property of the structure can be estimated in real time, the safety state of the structure is mastered, disaster accidents are prevented, and the safety of structural engineering operation is guaranteed.

Description

technical field [0001] The invention relates to a structural engineering and safety monitoring method, in particular to a structural damage identification method based on an echo state and multi-scale convolution joint model. Background technique [0002] With the rapid development of my country's economy, a large number of bridges, high-rise buildings, ocean platforms, water conservancy facilities, aviation aircraft and other important structural projects have been built in China. These structural projects have the characteristics of complex and changeable service environments and large volumes. During its non-stop operation for decades or even hundreds of years, due to the influence of natural factors such as earthquakes, corrosion of the external environment, and aging of its own materials, or due to human factors such as load fatigue, poor supervision, and design defects, It is easy to cause problems such as local damage and lower bearing capacity of the structure. In s...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06N3/04G06N3/08
CPCG06N3/08G06N3/045G06F2218/04G06F2218/12
Inventor 杨建喜杨飞李韧王桂平王笛
Owner CHONGQING JIAOTONG UNIVERSITY
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