2024
DOI: 10.3390/s24165300
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Exploring the Processing Paradigm of Input Data for End-to-End Deep Learning in Tool Condition Monitoring

Chengguan Wang,
Guangping Wang,
Tao Wang
et al.

Abstract: Tool condition monitoring technology is an indispensable part of intelligent manufacturing. Most current research focuses on complex signal processing techniques or advanced deep learning algorithms to improve prediction performance without fully leveraging the end-to-end advantages of deep learning. The challenge lies in transforming multi-sensor raw data into input data suitable for direct model feeding, all while minimizing data scale and preserving sufficient temporal interpretation of tool wear. However, … Show more

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