Modal approach based on global stereo-correlation for defects measurement in wire-laser additive manufacturing

Khalil Hachem, Y. Quinsat, C. Tournier, Nicolas Béraud
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Abstract

Producing Near Net Shape parts with complex geometries using Wire-Laser Additive Manufacturing often requires a mastered and optimized process. Differences between the constructed and nominal geometries of the manufactured entities demand an in-situ defects measurement to complete the production of the entire part successfully. A contactless measuring system is needed to evaluate geometrical deviations without requiring complex post-processing operations. To overcome this challenge and validate a measuring tool that serves the manufacturing purpose, a global stereocorrelation approach is used to measure defects in wire-laser additively manufactured parts. This method relies on the cameras’ self-calibration phase that uses the part substrate’s nominal model. Then a modal basis is defined to model and evaluate the surface dimensional and shape defects. Hence, an analysis of the texture obtained in additive manufacturing is conducted to assess whether or not it is sufficient for image correlation and defects measurement. Finally, natural and pattern textures are compared to highlight their influence on the measurement results.
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基于全局立体相关的线激光增材制造缺陷测量模态方法
使用线激光增材制造生产具有复杂几何形状的近净形状零件通常需要掌握和优化工艺。制造实体的构造和标称几何形状之间的差异要求进行原位缺陷测量,以成功完成整个部件的生产。需要一种非接触测量系统来评估几何偏差,而不需要复杂的后处理操作。为了克服这一挑战并验证一种服务于制造目的的测量工具,采用全局立体相关方法来测量线激光增材制造零件的缺陷。该方法依赖于使用零件基板标称模型的相机自校准阶段。然后定义了模态基来对缺陷的表面尺寸和形状进行建模和评价。因此,对增材制造中获得的纹理进行分析,以评估其是否足以用于图像相关和缺陷测量。最后,对比了自然纹理和图案纹理对测量结果的影响。
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