2024
DOI: 10.3390/machines12050341
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Predicting Tool Wear with ParaCRN-AMResNet: A Hybrid Deep Learning Approach

Lian Guo,
Yongguo Wang

Abstract: In the manufacturing sector, tool wear substantially affects product quality and production efficiency. While traditional sequential deep learning models can handle time-series tasks, their neglect of complex temporal relationships in time-series data often leads to errors accumulating in continuous predictions, which reduces their forecasting accuracy for tool wear. For addressing these limitations, the parallel convolutional and recurrent neural networks with attention-modulated residual learning (ParaCRN-AM… Show more

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