Litcius/Paper detail

Convolutional Neural Network Based Defect Recognition Model for Phased Array Ultrasonic Testing Images of Electrofusion Joints

Yangji Tao, Jianfeng Shi, Weican Guo, Jinyang Zheng

2023Journal of Pressure Vessel Technology38 citationsDOI

Abstract

Abstract This technical brief proposes a defect recognition model to recognize four typical defects of phased array ultrasonic testing (PA-UT) images for electrofusion (EF) joints. PA-UT has been proved to be the most feasible way to inspect defects in EF joints of polyethylene pipes. The recognition of defects in PA-UT images relies on the experience of operators, resulting in inconsistent defective detection rate and low recognition speed. The proposed recognition model was composed of an anomaly detection model and a defect detection model. The anomaly detection model recognized anomalies in PA-UT images, meeting the requirement of real-time recognition for practical inspection. The defect detection model classified and located defects in abnormal PA-UT images, achieving high accuracy of defects recognition. By comparing detection models, optimizing parameters and augmenting dataset, the anomaly detection model and defect detection model reached a good combination of accuracy and speed.

Topics & Concepts

Convolutional neural networkPhased arrayElectrofusionUltrasonic sensorPattern recognition (psychology)Artificial intelligenceAnomaly detectionComputer scienceAnomaly (physics)Computer visionAcousticsMaterials sciencePhysicsAntenna (radio)TelecommunicationsMetallurgyCondensed matter physicsNon-Destructive Testing TechniquesUltrasonics and Acoustic Wave PropagationWater Systems and Optimization