Research on Curved Parts Surface Quality Detection during Laser‐Directed Energy Deposition Based on Blurry Inpainting Network

Author:

Chen Wei1,Zou Bin1ORCID,Sun Hewu1,Zheng Qinbing1,Huang Chuanzhen2,Li Lei1,Liu Jikai1

Affiliation:

1. Centerfor Advanced Jet Engineering Technologies (CaJET) Key Laboratory of High-efficiency and Clean Mechanical Manufacture (Ministry of Education) National Experimental Teaching Demonstration Center for Mechanical Engineering (Shandong University) Additive Manufacturing Research Center of Shandong University of National Engineering Research Center of Rapid Manufacturing School of Mechanical Engineering Shandong University Jinan 250061 P. R. China

2. School of Mechanical Engineering Yanshan University Qinhuangdao 066004 P. R. China

Abstract

The laser‐directed energy deposition technology can be used for additive/subtractive hybrid manufacturing (ASHM). ASHM can realize the manufacturing of some complex parts, such as curved parts. Curved parts will inevitably have some defects during the manufacturing process. However, it is difficult to detect these defects, due to the edge blur of the surface. Therefore, a curved surface quality detection method is proposed. First, the error effect of the curved surface on the surface quality detection is quantitatively analyzed. An efficient channel attention network–DPD network (ECANet–DPDNet) blurry inpainting network model is proposed to effectively reduce the adverse effect of edge blurring. Then, the feature parameters of the repaired image are extracted. The backpropagation (BP) neural network trained by the feature parameters is used to predict curved surface roughness. Finally, two kinds of surface defects are identified using our proposed method based on adaptive threshold segmentation matrix and interference region filtering. The constructed support vector machine (SVM) defect type recognition model is trained using the 15 feature parameters extracted from the defect region. The experimental results show that the accuracy rates for the judgment of scratch defects and pit defects can reach 96.00% and 94.00%, respectively.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Condensed Matter Physics,General Materials Science

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