2022
DOI: 10.1007/s00170-022-09032-3
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A new time–space attention mechanism driven multi-feature fusion method for tool wear monitoring

Abstract: In order to accurately monitor the tool wear process, it is usually necessary to collect a variety of sensor signals during the cutting process. Different sensor signals in the feature space can provide complementary information. In addition, the monitoring signal is time series data, which also contains a wealth of tool degradation information in the time dimension. However, how to fuse multi-sensor information in time and space dimensions is a key issue that needs to be solved. This paper proposes a new time… Show more

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Cited by 22 publications
(11 citation statements)
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References 41 publications
(26 reference statements)
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“…To verify the performance of the proposed model, four typical models are selected for comparison, including CNN, 24 deep bidirectional LSTM (DBiLSTM), 19 convolutional neural network with stacked bidirectional and unidirectional LSTM network (CNN-SBULSTM) 33 and a hybrid model with time–space attention mechanism (CNN-LSTM with attention). 34 The first model uses a single CNN to perform both feature extraction and regression tasks. The DBiLSTM performs regression prediction through two layers of bidirectional LSTM.…”
Section: Model Validationmentioning
confidence: 99%
“…To verify the performance of the proposed model, four typical models are selected for comparison, including CNN, 24 deep bidirectional LSTM (DBiLSTM), 19 convolutional neural network with stacked bidirectional and unidirectional LSTM network (CNN-SBULSTM) 33 and a hybrid model with time–space attention mechanism (CNN-LSTM with attention). 34 The first model uses a single CNN to perform both feature extraction and regression tasks. The DBiLSTM performs regression prediction through two layers of bidirectional LSTM.…”
Section: Model Validationmentioning
confidence: 99%
“…To describe the correlation between the features more directly, the absolute value of R is adopted to construct the RS features of the time and frequency domains. Let ft indicate the feature series sampled at time t and f0 indicate the time series of the initial observation time; then, the RS features can be calculated according to formula (2).…”
Section: Similarity Feature Construction Based On Pearson's Correlati...mentioning
confidence: 99%
“…With the increasing complexity of sampling data, supervised data-driven methods have been extensively researched [1][2][3]. The core idea is to train neural network models using HI and RUL labels, which can then be used to predict the RUL of bearings [4][5][6].…”
Section: Introductionmentioning
confidence: 99%
“…They have the potential to outperform traditional analytical and empirical models by capturing intricate nonlinearities in the machining process. Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Attention networks, and so on, have skyrocketed in the mechanical field [ 22 , 23 , 24 ]. These models, primarily known for their remarkable achievements in areas such as computer vision and language translation, have found substantial relevance in the realm of mechanical production as well, underpinning the evolution of smart manufacturing.…”
Section: Introductionmentioning
confidence: 99%