用于预测超声焊接热塑性复合材料焊接质量的机器学习新输入因素

IF 3.3 Q2 ENGINEERING, MANUFACTURING
D. Görick, A. Schuster, L. Larsen, Jonas Welsch, Tobias Karrasch, M. Kupke
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引用次数: 0

摘要

热塑性复合材料在工程领域具有很高的应用前景。由于这种普及,越来越需要在快速有效的连接过程的帮助下组装这种材料。一种使用越来越多的连接工艺是超声波焊接工艺。为了对连接材料的质量做出可靠的声明,必须做出某种质量保证。在超声点焊方面,已经有一些文献记载的方法来观察或预测连接质量,但在连续超声焊接过程中,一些最有希望的质量保证参数难以测量。这就是为什么要研究新的参数,以提高超声焊接TCs质量预测的潜力。热成像和声发射数据被发现与生产的焊缝质量有相关性,并被输入到不同的机器学习算法中。尽管数据集相对较小,但训练后的算法的二值分类率达到90%以上,这表明新发现的参数在未来提高超声焊接tc的质量保证方面具有潜力。这一改进可能使超声波焊接技术在制造中得以建立。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New Input Factors for Machine Learning Approaches to Predict the Weld Quality of Ultrasonically Welded Thermoplastic Composite Materials
Thermoplastic composites (TCs) enjoy high popularity in the field of engineering. Due to this popularity, there is a growing need to assemble this material with the help of fast and efficient joining processes. One joining process, which has seen increased use, is the process of ultrasonic welding. To make reliable statements about the quality of the joined material, some kind of quality assurance has to be made. In terms of ultrasonic spot welding, there are already some documented approaches for observing or predicting the joining quality, but some of these most promising parameters for quality assurance are difficult to measure in the process of continuous ultrasonic welding. This is why new parameters are investigated for their potential to improve the prediction of ultrasonic-welded TCs’ quality. Thermography and sound emission data have been found to have a correlation with the produced weld quality and are fed into different machine learning algorithms. Despite the relatively small dataset, trained algorithms reach binary classification rates of over 90%, indicating that the newly discovered parameters show the potential to improve the quality assurance of ultrasonic-welded TCs in the future. This improvement may enable the establishment of the ultrasonic welding of TCs in manufacturing.
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来源期刊
Journal of Manufacturing and Materials Processing
Journal of Manufacturing and Materials Processing Engineering-Industrial and Manufacturing Engineering
CiteScore
5.10
自引率
6.20%
发文量
129
审稿时长
11 weeks
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