Deformation prediction is the basis of deformation control in manufacturing process planning. This paper presents an on-line part deformation prediction method using a deep learning model during numerical control machining process, which is different from traditional methods based on finite element simulation of stress release prior to the actual machining process. A fourth-order tensor model is proposed to represent the continuous part geometric information, process information, and monitoring information, which is used as the input to the deep learning model. A deep learning framework with a Conventional Neural Network and a Recurrent Neural Network has been constructed and trained by monitored deformation data and process information ass...
© 2022 The AuthorsThe instrumented indentation technique has been investigated to efficiently evalua...
During machining processes, accurate prediction of cutting tool wear is prominent to prevent ineffec...
The analytical description of path-dependent elastic-plastic responses of a granular system is highl...
A deep understanding of metal deformation processes is essential for producing complex geometries in...
It is widely acknowledged that machining precision and surface integrity are greatly affected by cut...
This study presents an AI-based constitutive modelling framework wherein the prediction model direct...
Theoretical models of manufacturing processes provide a valuable insight into physical phenomena but...
This paper presents a new method using a Convolutional Long Short-Term Memory (ConvLSTM) network to ...
Sheet metal forming technologies have been intensively studied for decades to meet the increasing de...
The exact removal of material in abrasive belt grinding determines the final machining quality of th...
During the manufacturing process, vessels typically undergo structural deformation during the erecti...
Tool condition monitoring is critical in ultra-precision manufacturing in order to optimize the perf...
Microstructure-informed design approach is set to revolutionize the design of metals and alloy compo...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
The manufacturing sector is heavily influenced by artificial intelligence-based technologies with th...
© 2022 The AuthorsThe instrumented indentation technique has been investigated to efficiently evalua...
During machining processes, accurate prediction of cutting tool wear is prominent to prevent ineffec...
The analytical description of path-dependent elastic-plastic responses of a granular system is highl...
A deep understanding of metal deformation processes is essential for producing complex geometries in...
It is widely acknowledged that machining precision and surface integrity are greatly affected by cut...
This study presents an AI-based constitutive modelling framework wherein the prediction model direct...
Theoretical models of manufacturing processes provide a valuable insight into physical phenomena but...
This paper presents a new method using a Convolutional Long Short-Term Memory (ConvLSTM) network to ...
Sheet metal forming technologies have been intensively studied for decades to meet the increasing de...
The exact removal of material in abrasive belt grinding determines the final machining quality of th...
During the manufacturing process, vessels typically undergo structural deformation during the erecti...
Tool condition monitoring is critical in ultra-precision manufacturing in order to optimize the perf...
Microstructure-informed design approach is set to revolutionize the design of metals and alloy compo...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
The manufacturing sector is heavily influenced by artificial intelligence-based technologies with th...
© 2022 The AuthorsThe instrumented indentation technique has been investigated to efficiently evalua...
During machining processes, accurate prediction of cutting tool wear is prominent to prevent ineffec...
The analytical description of path-dependent elastic-plastic responses of a granular system is highl...