共 140 条
[1]
Wang J(2018)Deep learning for smart manufacturing: Methods and applications J Manuf Syst 48 144-156
[2]
Ma Y(1994)Correlating tool wear, tool life, surface roughness and tool vibration in finish turning with coated carbide tools Wear 173 137-144
[3]
Zhang L(2015)Tool condition monitoring system: A review Mater Today: Proc 2 3419-3428
[4]
Gao RX(2017)Force-based tool wear estimation for milling process using gaussian mixture hidden markov models Int J Adv Manuf Technol 92 2853-2865
[5]
Wu D(2015)In-process tool flank wear estimation in machining gamma-prime strengthened alloys using kalman filter Procedia Manuf 1 696-707
[6]
Bonifacio M(2015)Adaptive resampling-based particle filtering for tool life prediction J Manuf Syst 37 528-534
[7]
Diniz A(2018)A novel fault prognostic approach based on particle filters and differential evolution Appl Intell 48 834-853
[8]
Ambhore N(2002)On-line and indirect tool wear monitoring in turning with artificial neural networks: a review of more than a decade of research Mech Syst Signal Process 16 487-546
[9]
Kamble D(2016)Machine learning in manufacturing: advantages, challenges, and applications Prod Manuf Res 4 23-45
[10]
Chinchanikar S(2018)Online tool wear classification during dry machining using real time cutting force measurements and a cnn approach J Manuf Mater Process 2 72-964