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Process curve analysis with machine learning on the example of screw fastening and press-in processes

机译:用机器学习对螺杆紧固和压入过程的示例的过程曲线分析

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With the increasing degree of digitalization in manufacturing industry, advanced data analysis techniques such as machine learning (ML) are moving into focus. In several production processes like machining or welding, ML applications already show high potential for process monitoring, optimization, or control. Although screw fastening and press-in processes are frequently employed in modern assembly lines, there are only few research approaches addressing the application of ML so far. Therefore, this paper starts with an overview of conventional and first ML-based approaches to process curve monitoring. Following this, it is shown how ML can be used to detect and classify errors in screw fastening by analyzing the resulting torque curve. In addition, an assembly line consisting of several press-in processes is used to demonstrate that ML also allows the analysis of cross-process interactions by evaluating several process curves at once. In this way, defective parts can be detected and rejected at an early stage, eliminating further processing and testing steps while simultaneously reducing costs.
机译:随着制造业的数字化程度越来越多,机器学习(ML)等先进的数据分析技术正在焦点。在加工或焊接等生产过程中,ML应用已经显示出过程监控,优化或控制的高潜力。虽然螺钉紧固和压入过程经常用于现代装配线,但只有很少的研究方法解决了到目前为止的ML的应用。因此,本文始于传统和基于ML的处理曲线监测的方法的概述。在此之后,示出了如何通过分析所得到的扭矩曲线来检测和分类螺钉紧固中的误差。另外,使用由几个压力加入过程组成的装配线来证明ML还允许通过一次评估若干工艺曲线来分析交叉过程相互作用。以这种方式,可以在早期阶段检测和拒绝有缺陷的部件,消除进一步的处理和测试步骤,同时降低成本。

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