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Microcracking in Concrete01:20

Microcracking in Concrete

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Microcracking in concrete refers to the tiny cracks that can form within the material even before any external load is applied. These microcracks typically occur at the interface between the coarse aggregate and the hydrated cement paste, often as a result of differential volume changes prompted by variations in stress-strain behavior, as well as thermal and moisture movement. Initially, these microcracks remain stable and do not grow substantially until the concrete is stressed to about 30...
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Types of Non-structural Cracks in Concrete01:28

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Non-structural cracks are primarily of three types: plastic, early-age thermal, and drying shrinkage cracks. Plastic cracks are further classified into plastic shrinkage cracks and plastic settlement cracks.
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Concrete Crack Detection and Classification Methods Based on Machine Vision and Deep Learning.

Weibin Chen1,2,3,4, Zhijie Peng5, Xiangsheng Chen1,2,3,4

  • 1College of Civil and Transportation Engineering, Shenzhen University, Shenzhen 518060, China.

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Summary
This summary is machine-generated.

This study introduces an improved method for detecting and classifying structural cracks in underground spaces, enhancing safety assessments. The Support Vector Machine (SVM) model demonstrated superior accuracy in crack identification, even with limited data.

Keywords:
OTSU algorithmSupport Vector Machineclassificationcrack detectionmachine vision

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Area of Science:

  • Civil Engineering
  • Structural Health Monitoring
  • Image Processing

Background:

  • Increasing underground space development necessitates robust structural crack monitoring.
  • Existing methods face challenges with complex backgrounds and varying image resolutions.

Purpose of the Study:

  • To develop a unified framework for automated crack analysis in underground structures.
  • To enhance crack detection and classification accuracy for improved safety assessments.

Main Methods:

  • An improved OTSU threshold segmentation algorithm using sliding windows and local statistics for preprocessing.
  • Comparative analysis of Support Vector Machine (SVM), Convolutional Neural Network (CNN), ResNet-18, and K-means clustering for crack identification and classification.
  • Validation through full-scale loading tests on metro shield tunnel segments.

Main Results:

  • The improved OTSU method significantly enhances noise suppression and detail preservation compared to classical approaches.
  • SVM achieved over 96% accuracy in crack classification, outperforming other models under limited data conditions.
  • Real-world validation on tunnel segments confirmed SVM's robustness with 95.45% accuracy.

Conclusions:

  • The proposed framework offers an efficient and reliable solution for automated crack detection and classification.
  • SVM is particularly effective for crack classification in metro tunnel infrastructure and similar systems, especially with limited training data.
  • The study highlights the importance of advanced image processing and machine learning for structural integrity monitoring.