A multilayer shallow learning approach to variation prediction and variation source identification in multistage machining processes

被引:0
作者
Filmon Yacob
Daniel Semere
机构
[1] Royal Institute of Technology KTH,Department of Production Engineering, School of Industrial Engineering and Management
来源
Journal of Intelligent Manufacturing | 2021年 / 32卷
关键词
Variation propagation; Skin Model Shapes; Virtual machining;
D O I
暂无
中图分类号
学科分类号
摘要
Variation propagation modelling in multistage machining processes through use of analytical approaches has been widely investigated for the purposes of dimension prediction and variation source identification. Yet the variation prediction of complex features is non-trivial task to model mathematically. Moreover, the application of the variation propagation approaches and associated variation source identification techniques using Skin Model Shapes is unclear. This paper proposes a multilayer shallow neural network regression approach to predict geometrical deviations of parts given manufacturing errors. The neural network is trained on a simulated data, generated from machining simulation of a point cloud of a part. Further, given a point cloud data of a machined feature, the source of variation can be identified by optimally matching the deviation patterns of the actual surface with that of shallow neural network generated surface. To demonstrate the method, a two-stage machining process and a virtual part that has planar, cylindrical and torus features was considered. The geometric characteristics of machined features and the sources variation could be predicted at an error of 1% and 4.25%, respectively. This work extends the application of Skin Model Shapes in variation propagation analysis in multistage manufacturing.
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页码:1173 / 1187
页数:14
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