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Weightless neural network based monitoring of screw fastenings

机译:基于失重神经网络的螺钉紧固监控

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摘要

A weightless neural network based intelligent monitoring strategy for automated self-tapping screw insertions is presented. Problems encountered with automated screw insertion workstations include screw jamming, thread stripping and cross threading. If such problems are not detected early, this could lead to defective assemblies. A weightless neural network is designed and trained to monitor automated screw fastenings. The network is first trained and tested using computer simulations. An experimental test rig is constructed and the weightless neural network is tested using both seen and unseen cases. Experimental results are presented to confirm the effectiveness of the approach.
机译:提出了一种基于失重神经网络的自动自攻螺钉插入智能监控策略。自动螺钉插入工作站遇到的问题包括螺钉卡住,螺纹剥线和交叉螺纹。如果未及早发现此类问题,则可能导致组装不良。一个失重的神经网络经过设计和培训,可以监控自动螺丝的紧固情况。首先使用计算机仿真对网络进行培训和测试。建造了一个实验测试台,并使用可见案例和不可见案例对失重神经网络进行了测试。实验结果表明了该方法的有效性。

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