836449598 / Interpretable-Attention-basedLinks
Tool wear monitoring plays an important role in improving product quality and machining efficiency of high-speed milling. As a typical data-driven algorithm, deep learning has been widely studied in tool wear monitoring, but it is rarely applied in practice as an independent algorithm up to now. This is mainly because the interpretability of dee…
☆8Updated 3 years ago
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