Water leakage condition reconstruction method of large civil engineering structure based on deep learning

A technology of civil engineering structure and deep learning, which is applied in the field of wireless monitoring of water seepage in large civil structures, can solve problems such as limited effects of complex data, and achieve the effects of solving ill-posedness and ill-posedness, reducing complexity, and expanding the scope of space
CN112632680AActive Publication Date: 2021-04-09TONGJI UNIV

Patent Information

Authority / Receiving Office
CN Β· China
Patent Type
Applications(China)
Current Assignee / Owner
TONGJI UNIV
Publication Date
2021-04-09

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Abstract

The invention provides a water leakage condition reconstruction method for a large civil engineering structure based on deep learning, and the method comprises the steps of obtaining RSSI (Received Signal Strength Indicator) data through measurement according to a radio wave propagation path loss principle, and obtaining a loss factor distribution image through a water leakage condition reconstruction model, wherein the model training process includes: firstly, an RSSI sequence positive problem simulation numerical value is solved and normalized to obtain an RSSI sequence data set and a path loss factor image data set, a positive problem scale, attribute dimensions and label image dimensions are obtained through data to determine a model framework and initialization parameters, and then a water leakage condition reconstruction model is obtained through a training learning algorithm. According to the method, the reconstruction of the water leakage state of the large civil engineering structure can be realized more timely on a larger area and a larger scale through the correlation mapping relationship between the RSSI data and the loss factor distribution image which are easy to obtain, and the structural damage, economic loss and casualties caused by water leakage disasters can be reduced.
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Description

technical field

[0001] The invention relates to a deep learning-based method for reconstructing leakage water conditions of large civil engineering structures, and relates to the field of wireless monitoring of leakage water of large civil engineering structures. Background technique

[0002] In the process of infrastructure construction, the structural safety of the shield tunnel is an important guarantee for the normal operation of the pipe gallery and tunnel construction. Water leakage is the most common and typical structural disaster of shield tunnels. Therefore, the realization of water leakage Detection and real-time monitoring are especially important. At present, the common solutions for water leakage detection of tunnel pipe gallery include manual visual inspection or measurement, infrared thermal imaging detection, laser scanning non-destructive testing, ground radar detection, ultrasonic detection and wireless sensor network data detection. Reconstructing the wa...

Claims

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