Journal of AI and Crack Detection

Journal of AI and Crack Detection

The Journal of AI and Crack Detection aims to advance the field of structural health monitoring by integrating artificial intelligence techniques into the detection and analysis of cracks in various materials and structures. The journal seeks to highlight innovative methodologies that enhance the accuracy, efficiency, and reliability of crack detection systems.

The journal encompasses a wide range of topics, including but not limited to:

  • Machine Learning Applications: Research on machine learning algorithms for detecting, classifying, and predicting crack formation in structures.
  • Computer Vision Techniques: Studies utilizing image processing and computer vision for automated crack detection in concrete, steel, and other materials.
  • Sensor Technologies: Investigations into the use of sensors, including acoustic, ultrasonic, and thermal sensors, for real-time monitoring of crack development.
  • Data Fusion and Analysis: Research on integrating data from multiple sources (e.g., visual inspection, sensor data) to improve detection accuracy and decision-making processes.
  • Structural Health Monitoring Systems: Development and evaluation of AI-driven monitoring systems that continuously assess the integrity of structures over time.
  • Predictive Maintenance: Studies focusing on predictive analytics to forecast crack growth and optimize maintenance schedules, thereby extending the lifespan of structures.
  • Case Studies and Applications: Practical applications of AI in crack detection across various industries, including civil engineering, aerospace, and manufacturing.

The journal welcomes original research articles, review papers, technical notes, and case studies that contribute to the understanding and development of AI methodologies in crack detection, with an emphasis on innovative solutions and real-world applications.

ISSN:2379-6050

Cite Score:2.3

Impact Factor:-

Time to First Decision:05 Days

Review Time:50 Days

Submission to Acceptance:70 Days

Accept Rate:37%

APC:0.0

Recent Articles of Journal of AI and Crack Detection

16 Sep 2025

Test 5 Mechanical and Durability Properties of Self Compacted Waste Aggregate Concrete

This study investigates the mechanical and durability properties of self-compacted concrete (SCC) incorporating waste aggregates. As the construction industry seeks sustainable alternatives, utilizing waste materials not only addresses environmental concerns but also enhances concrete performance.

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6 pages, 250 KBs