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首页> 外文期刊>Journal of manufacturing science and engineering: Transactions of the ASME >Monitoring of self-tapping screw fastenings using artificial neural networks
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Monitoring of self-tapping screw fastenings using artificial neural networks

机译:使用人工神经网络监控自攻螺钉的紧固

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摘要

Screw fastenings account for a quarter of all assembly operations and automation of the process is highly desirable. This paper presents a novel strategy for monitoring this manufacturing process, focusing on the insertion of self-tapping screws. An artificial neural network (ANN), using "Torque-versus-Insertion-Depth" signature signals as input, is designed to distinguish between successful and failed insertions. The ANN is first tested using simulation data from an analytical model for screw insertions, and then validated using experimental torque signals obtained from an electric screwdriver The results demonstrate that ANNs can effectively monitor the screw fastening process and cope with a wide range of insertion cases interpolating for unseen insertion signals.
机译:螺钉紧固件占所有组装操作的四分之一,因此非常需要过程自动化。本文提出了一种监视此制造过程的新颖策略,重点是插入自攻螺钉。使用“扭矩对插入深度”签名信号作为输入的人工神经网络(ANN)用于区分成功插入和失败插入。首先使用来自分析模型的模拟数据对螺钉插入进行ANN测试,然后使用从电动螺丝刀获得的实验扭矩信号进行验证。结果表明,ANN可以有效地监视螺钉的紧固过程并应对各种插入情况用于看不见的插入信号。

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