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Research Article

Milling tool wear prediction: optimized long short-term memory model based on attention mechanism

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Pages 56-72 | Received 20 Jun 2022, Accepted 27 Mar 2023, Published online: 25 May 2023
 

Abstract

To improve the prediction accuracy of milling tool wear, a prediction method based on Attention-LSTM is proposed. In the training phase, first, the data are pre-processed by truncation, downsampling, and the Hampel filtering method, and then features are extracted by the time domain, frequency domain, and time-frequency domain analysis methods. Second, a deep neural network is designed to describe the complex nonlinear function between features and tool wear. Last, aiming at the insufficient prediction accuracy due to the LSTM lacking feature extraction and enhancement, the Attention mechanism is introduced to optimize the model. The results suggest that this prediction method provides an efficient strategy for milling tool wear prediction.

Additional information

Funding

This research was funded by the National Natural Science Foundation of China (Grant Numbers 51875144).

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