Bewertung von mit maschinellem Lernen erzielten Qualitätsprognosen durch die Anwendung von etablierten Verfahren zum Nachweis der Messprozessfähigkeit in der Fertigung; [Assessment of quality predictions achieved with machine learning using established measurement process capability procedures in manufacturing]

被引:0
作者
Schorr S. [1 ]
Bähre D. [2 ]
Schütze A. [3 ]
机构
[1] Bosch Rexroth AG, Bexbacher Straße 72, Homburg
[2] Universität des Saarlandes, Lehrstuhl fur Fertigungstechnik LFT, Saarbrücken
[3] Universität des Saarlandes, Lehrstuhl fur Messtechnik LMT, Saarbrücken
来源
Technisches Messen | 2022年 / 89卷 / 04期
关键词
machine learning; manufacturing; prediction assessment; Quality prediction;
D O I
10.1515/teme-2021-0125
中图分类号
学科分类号
摘要
The increasing amount of available process data from machining and other manufacturing processes together with machine learning methods provide new possibilities for quality control and condition monitoring. A prediction of the workpiece quality in an early machining stage can be used to alter current quality control strategies and could lead to savings in terms of time, cost and resources. However, most methods are tested under controlled lab conditions and few implementations in real manufacturing processes have been reported yet. The main reason for this slow uptake of this promising technology is the need to prove the capability of a machine learning method for quality prediction before it can be applied in serial production and supplement current quality control methods. This article introduces and compares approaches from the fields of machine learning and quality management in order to assess predictions. The comparison and adaption of the two approaches is carried out for an industrial use case at Bosch Rexroth AG where the diameter and the roundness of bores are predicted with machine learning based on process data. © 2022 Walter de Gruyter GmbH, Berlin/Boston.
引用
收藏
页码:240 / 252
页数:12
相关论文
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