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A Multi-Sensor Data Fusion System for Laser Welding Process Monitoring

Fuqin Deng, Huang Yong-shen, Song Lu, Yingying Chen, Jia Chen, Feng Hua, Jianmin Zhang, Yong Yang, Junjie Hu, Tin Lun Lam, Fengbin Xia

2020IEEE Access32 citationsDOIOpen Access PDF

Abstract

Most existing laser welding process monitoring (LWPM) technologies focus on detecting post-process defects. However, in sheet metal laser welding applications such as welding of electronic consumer products during mass production, in-process defect detection is more important. In this article, a compact LWPM system using multi-sensor data fusion to detect in-process defects has been built. This system can collect the time series of plasma intensity, light intensity and temperature data for feature analysis. To verify the system’s effectiveness, a plasma-light-temperature dataset has been compiled, which consists of 5,836 samples of nine classes, including one positive class and eight negative classes of typical in-process defects. A multi-sensor data fusion network based on a convolution neural network for in-process defect detection, called IDDNet, has also been proposed. Experimental results have demonstrated that IDDNet can achieve better multi-classification results than the support vector machine, with an overall accuracy of 97.57%. In particular, considering this monitoring process as a binary classification problem, IDDNet can achieve a 99.42% accuracy. Moreover, IDDNet can reach an average speed of 0.79ms per sample on a single GTX 1080ti graphics card, which meets the real-time requirement for industrial production. The proposed LWPM system has been successfully verified in real applications of sheet metal laser welding.

Topics & Concepts

Sensor fusionProcess (computing)Computer scienceFusionWeldingComputer visionMaterials scienceMetallurgyOperating systemPhilosophyLinguisticsWelding Techniques and Residual StressesIndustrial Vision Systems and Defect DetectionImage Processing and 3D Reconstruction