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Fault Detection in a Cold Forging Process through Feature Extraction with a Neural Network

机译:神经网络特征提取在冷锻过程中的故障检测

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This paper investigates the application of neural networks to the recognition of lubrication defects typical to an industrial cold forging process employed by fastener manufacturers. The accurate recognition of lubrication errors, such as coating not being applied properly or damaged during material handling, is very important to the quality of the final product in fastener manufacture. Lubrication errors lead to increased forging loads and premature tool failure, as well as to increased defect sorting and the re-processing of the coated rod. The lubrication coating provides a barrier between the work material and the die during the drawing operation, moreover it needs be sufficiently robust to remain on the wire during the transfer to the cold forging operation. In the cold forging operation the wire undergoes multi-stage deformation without the application of any additional lubrication. Four types of lubrication errors, typical to production of fasteners, were introduced to a set of sample rods, which were subsequently drawn under laboratory conditions. The drawing force was measured, from which a limited set of features was extracted. The neural network based model learned from these features is able to recognize all types of lubrication errors to a high accuracy. The overall accuracy of the neural network model is around 98% with almost uniform distribution of errors between all four errors and the normal condition.
机译:本文研究了神经网络在识别紧固件制造商采用的工业冷锻过程中常见的润滑缺陷方面的应用。准确识别润滑错误,例如在材料处理过程中未正确涂覆涂层或损坏涂层,对于紧固件制造中最终产品的质量非常重要。润滑错误会导致锻造载荷增加和工具过早失效,并导致缺陷分类和涂层棒的重新加工增加。润滑涂层在拉拔过程中在工作材料和模具之间提供了一个屏障,此外,它还需要足够坚固以在转移到冷锻过程中保留在金属线上。在冷锻操作中,金属丝会经历多级变形,而无需施加任何额外的润滑。将一组紧固件生产中常见的四种润滑错误引入一组样品棒中,然后在实验室条件下进行绘制。测量了拉力,从中提取了有限的特征集。从这些功能中学到的基于神经网络的模型能够高精度地识别所有类型的润滑错误。神经网络模型的整体准确度约为98%,在所有四个错误和正常情况之间的错误分布几乎是均匀的。

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