Compared with traditional machine learning algorithms, the convolutional neural network (CNN) has an excellent automatic feature learning ability and can complete the nonlinear representation from original data input to output by itself. However, the CNN does not sufficiently mine the tool wear information contained in the multi-sensor data due to disregard of the differences in the contribution of different features when extracting features. In this paper, a tool wear prediction method based on a multi-scale convolutional neural network with attention fusion is proposed, which fuses the tool wear degradation information collected by different types of sensors. In the multi-scale convolution module, convolution kernels with different sizes ...
Efficient and accurate prediction of tool Remaining Useful Life (RUL) is the key to improve product ...
This paper presents a tool wear monitoring methodology on the abrasive belt grinding process using v...
We present an automated turning insert wear detection system developed for aeronautical Low Pressure...
In order to improve the accuracy of tool wear prediction, an attention-based composite neural networ...
In order to improve the accuracy of tool wear prediction, an attention-based composite neural networ...
Tool wear monitoring is of great significance for the development of manufacturing systems and intel...
The intelligent monitoring of tool wear status and wear prediction are important factors affecting t...
Tool wear state recognition is an important part of tool condition monitoring (TCM). Online tool wea...
Amid the current digital transformation wave, predictive maintenance (PdM) using machine learning ha...
During machining processes, accurate prediction of cutting tool wear is prominent to prevent ineffec...
Machining tools are a critical component in machine manufacturing, the life cycle of which is an asy...
Tool wear is a key factor in the machining process, which affects the tool life and quality of the m...
The prediction of CNC machine tool wear is limited due to the scarcity of data in industry. A suffic...
Tool wear negatively affects machined surfaces and causes surface cracking, therefore increasing man...
International audienceTool wear can cause dimensional accuracy and poor surface quality in milling p...
Efficient and accurate prediction of tool Remaining Useful Life (RUL) is the key to improve product ...
This paper presents a tool wear monitoring methodology on the abrasive belt grinding process using v...
We present an automated turning insert wear detection system developed for aeronautical Low Pressure...
In order to improve the accuracy of tool wear prediction, an attention-based composite neural networ...
In order to improve the accuracy of tool wear prediction, an attention-based composite neural networ...
Tool wear monitoring is of great significance for the development of manufacturing systems and intel...
The intelligent monitoring of tool wear status and wear prediction are important factors affecting t...
Tool wear state recognition is an important part of tool condition monitoring (TCM). Online tool wea...
Amid the current digital transformation wave, predictive maintenance (PdM) using machine learning ha...
During machining processes, accurate prediction of cutting tool wear is prominent to prevent ineffec...
Machining tools are a critical component in machine manufacturing, the life cycle of which is an asy...
Tool wear is a key factor in the machining process, which affects the tool life and quality of the m...
The prediction of CNC machine tool wear is limited due to the scarcity of data in industry. A suffic...
Tool wear negatively affects machined surfaces and causes surface cracking, therefore increasing man...
International audienceTool wear can cause dimensional accuracy and poor surface quality in milling p...
Efficient and accurate prediction of tool Remaining Useful Life (RUL) is the key to improve product ...
This paper presents a tool wear monitoring methodology on the abrasive belt grinding process using v...
We present an automated turning insert wear detection system developed for aeronautical Low Pressure...