The use of surface roughness (Ra) to indicate product quality in the milling process in an intelligent monitoring system applied in-process has been developing. From the considerations of convenient installation and cost-effectiveness, accelerator vibration signals combined with deep learning predictive models for predicting surface roughness is a potential tool. In this paper, three models, namely, Fast Fourier Transform-Deep Neural Networks (FFT-DNN), Fast Fourier Transform Long Short Term Memory Network (FFT-LSTM), and one-dimensional convolutional neural network (1-D CNN), are used to explore the training and prediction performances. Feature extraction plays an important role in the training and predicting results. FFT and the one-dimen...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
Artificial Neural Network is a powerful tool for prediction of parameter values, which presents a se...
This study discusses convolutional neural networks (CNNs) for vibration signals analysis, including ...
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...
This study compared popular Deep Learning (DL) architectures to classify machining surface roughness...
The objective of this research is to predict the roughness heights of milled surfaces, which indicat...
Abstract The roughness of the part surface is one of the most crucial standards for evaluating machi...
The aim of this study is to predict surface roughness in end milling of AISI 1040 steel. In realisin...
In the metal cutting process of machine tools, the quality of the surface roughness of the product i...
Quality inspection is traditionally considered non-productive. That is why the manufacturing industr...
This proposed work deals with the development of surface roughness prediction model for turning of A...
To address the problem that a deep neural network needs a sufficient number of training samples to h...
This article presents the development of a system for predicting surface roughness, using a feed-for...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
Artificial Neural Network is a powerful tool for prediction of parameter values, which presents a se...
This study discusses convolutional neural networks (CNNs) for vibration signals analysis, including ...
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...
This study compared popular Deep Learning (DL) architectures to classify machining surface roughness...
The objective of this research is to predict the roughness heights of milled surfaces, which indicat...
Abstract The roughness of the part surface is one of the most crucial standards for evaluating machi...
The aim of this study is to predict surface roughness in end milling of AISI 1040 steel. In realisin...
In the metal cutting process of machine tools, the quality of the surface roughness of the product i...
Quality inspection is traditionally considered non-productive. That is why the manufacturing industr...
This proposed work deals with the development of surface roughness prediction model for turning of A...
To address the problem that a deep neural network needs a sufficient number of training samples to h...
This article presents the development of a system for predicting surface roughness, using a feed-for...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
Artificial Neural Network is a powerful tool for prediction of parameter values, which presents a se...