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A Quantitative Prediction Method of Cladding Layer Offset in Additive Manufacturing

An additive manufacturing and prediction method technology, applied in prediction, neural learning method, data processing application, etc., can solve the problems of passive welding seam offset monitoring rarely reported, welding seam tracking rarely reported, etc., to solve welding problems. Seam tracking problem, improve welding quality, improve the effect of quality

Active Publication Date: 2021-11-16
南京南暄禾雅科技有限公司
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AI Technical Summary

Problems solved by technology

For passive vision technology, since it directly monitors the weld centerline and welding torch at the arc position, it will not produce the problem of advanced detection error similar to active vision because it misses the field of view. Some scholars have done some work on passive weld seam tracking. However, there are few reports on seam tracking during the additive process
[0005] With the development of computer technology and the rise of big data, deep learning has been widely used in various industrial fields, including welding, but there are few reports on the use of deep learning to monitor passive weld seam offset in additive manufacturing.

Method used

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  • A Quantitative Prediction Method of Cladding Layer Offset in Additive Manufacturing
  • A Quantitative Prediction Method of Cladding Layer Offset in Additive Manufacturing
  • A Quantitative Prediction Method of Cladding Layer Offset in Additive Manufacturing

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Embodiment Construction

[0034] The present invention is described in further detail now in conjunction with accompanying drawing. These drawings are all simplified schematic diagrams, which only illustrate the basic structure of the present invention in a schematic manner, so they only show the configurations related to the present invention.

[0035] Such as figure 1 As shown, the equipment for monitoring the offset of the cladding layer during the arc additive manufacturing process consists of two parts: the welding system and the molten pool vision sensor system. The welding system consists of welding power supply, wire feeder and cooling system. The vision sensor system consists of a color CCD camera (Basler acA640-750uc) fixed on the robot at a 40° angle to the welding torch. The computer is at the heart of the molten pool visual sensing and prediction of cladding offset.

[0036] The method for quantitatively predicting the deviation of the additive manufacturing cladding layer of the presen...

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Abstract

The invention relates to a method for quantitatively predicting the deviation of cladding layers in additive manufacturing, and belongs to the technical field of precision welding. After completing the bottoming work of the first four layers of additive materials, use the molten pool visual sensor to collect the molten pool image of the offset cladding layer of the fifth layer of additive material, and select the ROI area of ​​the molten pool image; calculate each The offset corresponding to a collected melt pool image is made into a data set, and the arc starting point and arc extinguishing point of the fifth layer of the additive are determined according to the data set; different cladding layers are classified under the offset In the experiment, a deep residual network was used for classification; a prediction experiment was performed on the linearly changing cladding layer offset, and the classification task of different offsets of the weld was converted into a regression task; the generalization ability of the network was verified. The invention uses the visual information of the molten pool to quantitatively predict the offset of the cladding layer in the process of adding materials, and adjusts the actual position of the welding torch in the process of adding materials, thereby obtaining a good shape of the molten pool and improving the welding quality.

Description

technical field [0001] The invention relates to a method for quantitatively predicting cladding layer offset in additive manufacturing, and belongs to the technical field of precision welding. Background technique [0002] Additive manufacturing technology is a new manufacturing technology based on the principle of layer-by-layer discrete and layer-by-layer accumulation to realize material forming through "bottom-up". This technology can quickly and accurately manufacture objects with complex shapes, and has the advantages of high material utilization rate, good forming effect, low technical cost and high production efficiency. It solves the process bottleneck of rapid manufacturing of complex structural parts. It has been widely used in various industrial fields such as automobiles, aerospace, and medical treatment. This technology greatly improves the production capacity of welding, and can effectively guarantee the welding quality of the welded parts. [0003] In actua...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06Q10/04G06N3/08G06K9/62
CPCG06N3/08G06Q10/04G06F18/24G06F18/214
Inventor 蒋琦石云峰徐子阳赵壮陆俊
Owner 南京南暄禾雅科技有限公司
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