This paper pioneers the use of the extreme learning machine (ELM) approach for surface roughness prediction in ultra-precision milling, leveraging the excellent fitting ability with small datasets and the fast learning speed of the extreme learning machine method. By providing abundant machining information, the machining parameters and force signal data are fused on the feature level to further improve ELM prediction accuracy. An ultra-precision milling experiment was designed and conducted to verify our proposed data-fusion-based ELM method. The results show that the ELM with data fusion outperforms other state-of-art methods in surface roughness prediction. It achieves an impressively low mean absolute percentage error of 1.6% while requ...
Accurate prediction of cutting forces is critical in milling operations, with implications for cost ...
Accurate prediction of cutting forces is critical in milling operations, with implications for cost ...
This thesis presents the milling process modeling to predict surface roughness. Proper setting of cu...
Current vision-based roughness measurement methods are classified into two main types: index design ...
The aim of manufacturing can be described as achieving the predefined high quality product in a shor...
Abstract The roughness of the part surface is one of the most crucial standards for evaluating machi...
Artificial Neural Network is a powerful tool for prediction of parameter values, which presents a se...
Surface roughness and machining accuracy are essential indicators of the quality of parts in milling...
Surface roughness and machining accuracy are essential indicators of the quality of parts in milling...
A study is presented to model surface roughness in end milling process. Three types of intelligent n...
Monitoring surface quality during machining has considerable practical significance for the performa...
Tool wear and cutting parameters have a significant effect on the surface layer properties in millin...
The aim of this study is to predict surface roughness in end milling of AISI 1040 steel. In realisin...
The aim of this research is to compare between two different approaches in predicting and modeling t...
The aim of this research is to compare between two different approaches in predicting and modeling t...
Accurate prediction of cutting forces is critical in milling operations, with implications for cost ...
Accurate prediction of cutting forces is critical in milling operations, with implications for cost ...
This thesis presents the milling process modeling to predict surface roughness. Proper setting of cu...
Current vision-based roughness measurement methods are classified into two main types: index design ...
The aim of manufacturing can be described as achieving the predefined high quality product in a shor...
Abstract The roughness of the part surface is one of the most crucial standards for evaluating machi...
Artificial Neural Network is a powerful tool for prediction of parameter values, which presents a se...
Surface roughness and machining accuracy are essential indicators of the quality of parts in milling...
Surface roughness and machining accuracy are essential indicators of the quality of parts in milling...
A study is presented to model surface roughness in end milling process. Three types of intelligent n...
Monitoring surface quality during machining has considerable practical significance for the performa...
Tool wear and cutting parameters have a significant effect on the surface layer properties in millin...
The aim of this study is to predict surface roughness in end milling of AISI 1040 steel. In realisin...
The aim of this research is to compare between two different approaches in predicting and modeling t...
The aim of this research is to compare between two different approaches in predicting and modeling t...
Accurate prediction of cutting forces is critical in milling operations, with implications for cost ...
Accurate prediction of cutting forces is critical in milling operations, with implications for cost ...
This thesis presents the milling process modeling to predict surface roughness. Proper setting of cu...