Intelligent Design of Robotic Welding Process Parameters Using Learning-Based Methods

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Abstract

With the wide application of multi-layer and multi-pass welding in industry, the traditional manual welding method is difficult to meet the needs of manufacture. Welding Robot has the advantages of stable productivity, ensuring welding quality even in special environment, so the welding robots are used at a growing trend in manufacturing fields to complete different welding tasks. In this paper, an intelligence learning method for welding robot is designed, aiming at the prediction of welding process parameters and bead geometry parameters in the welding process, deep and machine learning algorithms are used for realization. It provides an instruction for the design of process parameters to realize the intellectualization and automation of welding robot. The experimental results show that automatic parameters learning based on machine learning are effective and different learning methods should be selected for different process parameter prediction tasks in order to achieve the best prediction effect.

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Zhang, Y., Xiao, J., Zhang, Z., & Dong, H. (2022). Intelligent Design of Robotic Welding Process Parameters Using Learning-Based Methods. IEEE Access, 10, 13442–13450. https://doi.org/10.1109/ACCESS.2022.3146404

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