Tool State Recognition Based on POGNN-GRU under Unbalanced Data
Weiming Tong,
Jiaqi Shen,
Zhongwei Li
et al.
Abstract:Accurate recognition of tool state is important for maximizing tool life. However, the tool sensor data collected in real-life scenarios has unbalanced characteristics. Additionally, although graph neural networks (GNNs) show excellent performance in feature extraction in the spatial dimension of data, it is difficult to extract features in the temporal dimension efficiently. Therefore, we propose a tool state recognition method based on the Pruned Optimized Graph Neural Network-Gated Recurrent Unit (POGNN-GRU… Show more
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