APPLIED ASPECTS OF COMPUTER SCIENCE
A. A. Zhilenkov, S. G. Chernyi Automatic Estimation of Defects in Composite Structures as Disturbances Based on Machine Learning Classifiers Oriented Mathematical Models with Uncertainties
IMAGE PROCESSING METHODS
CONTROL SYSTEMS
CONTROL AND DECISION-MAKING
A. A. Zhilenkov, S. G. Chernyi Automatic Estimation of Defects in Composite Structures as Disturbances Based on Machine Learning Classifiers Oriented Mathematical Models with Uncertainties
Abstract: 

The proposed system for detecting defects in composite materials, such as carbon fiber or textile fabric, is described. Defects in the structure of the product are detected using a computer vision system based on optical sensors, i.e. a visual inspection is carried out - a necessary stage in the production process of composite materials. The difference of the proposed method from the existing solutions is the unique model of the sensor-material interaction and its strict mathematical description. A comparison with the reference model of the structure specified analytically is used.

Keywords: 

mathematical modeling; flaw detection; inspection; sensors; composites; machine learning

DOI 10.14357/20718632200302

PP. 13-29.
 
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