Related references
Note: Only part of the references are listed.A novel transfer learning fault diagnosis method based on Manifold Embedded Distribution Alignment with a little labeled data
Ke Zhao et al.
JOURNAL OF INTELLIGENT MANUFACTURING (2022)
Predicting tool wear size across multi-cutting conditions using advanced machine learning techniques
Yan Shen et al.
JOURNAL OF INTELLIGENT MANUFACTURING (2021)
A Survey of Unsupervised Deep Domain Adaptation
Garrett Wilson et al.
ACM TRANSACTIONS ON INTELLIGENT SYSTEMS AND TECHNOLOGY (2020)
Prediction of Surface Roughness based on the Machining Conditions with the Effect of Machining Stability
Yung-Chih Lin et al.
ADVANCES IN SCIENCE AND TECHNOLOGY-RESEARCH JOURNAL (2020)
Semi-supervised roughness prediction with partly unlabeled vibration data streams
Maciej Grzenda et al.
JOURNAL OF INTELLIGENT MANUFACTURING (2019)
Evaluation of Deep Learning Neural Networks for Surface Roughness Prediction Using Vibration Signal Analysis
Wan-Ju Lin et al.
APPLIED SCIENCES-BASEL (2019)
A comparison of machine learning methods for cutting parameters prediction in high speed turning process
Zoran Jurkovic et al.
JOURNAL OF INTELLIGENT MANUFACTURING (2018)
Force-based tool condition monitoring for turning process using v-support vector regression
Ning Li et al.
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY (2017)
A nested-ANN prediction model for surface roughness considering the effects of cutting forces and tool vibrations
Yanni Chen et al.
MEASUREMENT (2017)
The evolution and future of manufacturing: A review
Behzad Esmaeilian et al.
JOURNAL OF MANUFACTURING SYSTEMS (2016)
Enhanced particle filter for tool wear prediction
Jinjiang Wang et al.
JOURNAL OF MANUFACTURING SYSTEMS (2015)
Vibration-based estimation of tool major flank wear in a turning process using ARMA models
B. H. Aghdam et al.
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY (2015)
Feature selection for manufacturing process monitoring using cross-validation
Chenhui Shao et al.
JOURNAL OF MANUFACTURING SYSTEMS (2013)
On the prediction of surface roughness in the hard turning based on cutting parameters and tool vibrations
Zahia Hessainia et al.
MEASUREMENT (2013)
Support vector machines models for surface roughness prediction in CNC turning of AISI 304 austenitic stainless steel
Ulas Caydas et al.
JOURNAL OF INTELLIGENT MANUFACTURING (2012)
Domain Adaptation via Transfer Component Analysis
Sinno Jialin Pan et al.
IEEE TRANSACTIONS ON NEURAL NETWORKS (2011)
A Survey on Transfer Learning
Sinno Jialin Pan et al.
IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING (2010)
Pre-evaluation on surface profile in turning process based on cutting parameters
Chen Lu et al.
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY (2010)
Prediction and control of surface roughness in CNC lathe using artificial neural network
Durmus Karayel
JOURNAL OF MATERIALS PROCESSING TECHNOLOGY (2009)
Data-based process monitoring, process control, and quality improvement: Recent developments and applications in steel industry
Manabu Kano et al.
COMPUTERS & CHEMICAL ENGINEERING (2008)
Gene selection for cancer classification using support vector machines
I Guyon et al.
MACHINE LEARNING (2002)