Determination of Surface Roughness in Wire and Arc Additive Manufacturing Based on Laser Vision Sensing

被引:0
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作者
Jun Xiong
Yan-Jiang Li
Zi-Qiu Yin
Hui Chen
机构
[1] Southwest Jiaotong University,School of Materials Science and Engineering
关键词
Wire and arc additive manufacturing; Surface roughness measurement; Laser vision sensing; Three-dimensional reconstruction;
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摘要
Wire and arc additive manufacturing (WAAM) shows a great promise for fabricating fully dense metal parts by means of melting materials in layers using a welding heat source. However, due to a large layer height produced in WAAM, an unsatisfactory surface roughness of parts processed by this technology has been a key issue. A methodology based on laser vision sensing is proposed to quantitatively calculate the surface roughness of parts deposited by WAAM. Calibrations for a camera and a laser plane of the optical system are presented. The reconstruction precision of the laser vision system is verified by a standard workpiece. Additionally, this determination approach is utilized to calculate the surface roughness of a multi-layer single-pass thin-walled part. The results indicate that the optical measurement approach based on the laser vision sensing is a simple and effective way to characterize the surface roughness of parts deposited by WAAM. The maximum absolute error is less than 0.15 mm. The proposed research provides the foundation for surface roughness optimization with different process parameters.
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