Dynamic Bayesian Network-Based Approach by Integrating Sensor Deployment for Machining Process Monitoring
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[1] Geok Soon Hong,et al. Wavelet analysis of sensor signals for tool condition monitoring: A review and some new results , 2009 .
[2] Rong Mo,et al. Chatter detection in milling based on singular spectrum analysis , 2018 .
[3] Faxin Wang,et al. Comparative Analysis of ANN and SVM Models Combined with Wavelet Preprocess for Groundwater Depth Prediction , 2017 .
[4] Mehmet Çunkas,et al. Modeling and prediction of surface roughness in turning operations using artificial neural network and multiple regression method , 2011, Expert Syst. Appl..
[5] R. Ramesh,et al. Curvelet transforms and flower pollination algorithm based machine vision system for roughness estimation , 2018 .
[6] Young-Sun Hong,et al. Tool-wear monitoring during micro-end milling using wavelet packet transform and Fisher’s linear discriminant , 2016 .
[7] Sam Turner,et al. Tool wear monitoring using naïve Bayes classifiers , 2014, The International Journal of Advanced Manufacturing Technology.
[8] Jose Vicente Abellan-Nebot,et al. A review of machining monitoring systems based on artificial intelligence process models , 2010 .
[9] Alessandra Caggiano,et al. Cloud-based manufacturing process monitoring for smart diagnosis services , 2018, Int. J. Comput. Integr. Manuf..
[10] Amiya R Mohanty,et al. Estimation of tool wear during CNC milling using neural network-based sensor fusion , 2007 .
[11] Antonio Vallejo Guevara,et al. Surface Roughness and Cutting Tool-Wear Diagnosis Based on Bayesian Networks , 2006 .
[12] Mohammad Reza Soleymani Yazdi,et al. Development of a dynamic surface roughness monitoring system based on artificial neural networks (ANN) in milling operation , 2015, The International Journal of Advanced Manufacturing Technology.
[13] Aniruddha Pal,et al. Tool strain–based wear estimation in micro turning using Bayesian networks , 2016 .
[14] A. M. M. Sharif Ullah,et al. Tool-wear prediction and pattern-recognition using artificial neural network and DNA-based computing , 2015, Journal of Intelligent Manufacturing.
[15] Ming Liang,et al. Detection and diagnosis of bearing and cutting tool faults using hidden Markov models , 2011 .
[16] P. Sam Paul,et al. ANN assisted sensor fusion model to predict tool wear during hard turning with minimal fluid application , 2013 .
[17] Humar Kahramanli,et al. Prediction of cutting forces and surface roughness using artificial neural network (ANN) and support vector regression (SVR) in turning 4140 steel , 2012 .
[18] Ning Fang,et al. Neural Network Modeling and Prediction of Surface Roughness in Machining Aluminum Alloys , 2016 .
[19] George Liu,et al. Online monitoring and measurements of tool wear for precision turning of stainless steel parts , 2013 .
[20] Zhiqiang Ge,et al. Review on data-driven modeling and monitoring for plant-wide industrial processes , 2017 .
[21] Noureddine Zerhouni,et al. CNC machine tool's wear diagnostic and prognostic by using dynamic Bayesian networks , 2012 .
[22] Concha Bielza,et al. Comparison of Bayesian networks and artificial neural networks for quality detection in a machining process , 2009, Expert Syst. Appl..
[23] Ahmad Lotfi,et al. Cutting tool tracking and recognition based on infrared and visual imaging systems using principal component analysis (PCA) and discrete wavelet transform (DWT) combined with neural networks , 2015 .
[24] K P Vidhu,et al. An artificial neural network approach to investigate surface roughness and vibration of workpiece in boring of AISI1040 steels , 2016 .
[25] Mehrdad Nouri Khajavi,et al. Milling tool wear diagnosis by feed motor current signal using an artificial neural network , 2016, Journal of Mechanical Science and Technology.
[26] Hamid Ghorbani,et al. Specific cutting force and cutting condition interaction modeling for round insert face milling operation , 2015 .
[27] K. Venkata Rao,et al. Modeling and optimization of tool vibration and surface roughness in boring of steel using RSM, ANN and SVM , 2016, Journal of Intelligent Manufacturing.
[28] Nan Xie,et al. An energy-based modeling and prediction approach for surface roughness in turning , 2018 .
[29] Anil Raj,et al. Artificial Neural Network Assisted Sensor Fusion Model for Predicting Surface Roughness During Hard Turning of H13 Steel with Minimal Cutting Fluid Application , 2014 .
[30] Shifei Ding,et al. Multi-class LSTMSVM based on optimal directed acyclic graph and shuffled frog leaping algorithm , 2016, Int. J. Mach. Learn. Cybern..
[31] Shang-Liang Chen,et al. Data fusion neural network for tool condition monitoring in CNC milling machining , 2000 .
[32] Ahmed A. D. Sarhan,et al. Cutting force-based adaptive neuro-fuzzy approach for accurate surface roughness prediction in end milling operation for intelligent machining , 2015 .
[33] Amin Al-Habaibeh,et al. A new approach for systematic design of condition monitoring systems for milling processes , 2000 .
[34] Panagiotis Stavropoulos,et al. Prediction of surface roughness magnitude in computer numerical controlled end milling processes using neural networks, by considering a set of influence parameters: An aluminium alloy 5083 case study , 2014 .
[35] Je Hoon Oh,et al. Prediction of surface roughness in magnetic abrasive finishing using acoustic emission and force sensor data fusion , 2011 .
[36] D. Dinakaran,et al. Artificial neural network based tool wear estimation on dry hard turning processes of AISI4140 steel using coated carbide tool , 2017 .
[37] Zhiqiang Ge,et al. Large-scale plant-wide process modeling and hierarchical monitoring: A distributed Bayesian network approach , 2017 .
[38] Chen Lu,et al. Study on prediction of surface quality in machining process , 2008 .
[39] Qingsong Xu,et al. Modeling and Predicting Surface Roughness in Hard Turning Using a Bayesian Inference-Based HMM-SVM Model , 2015, IEEE Transactions on Automation Science and Engineering.
[40] Christian Brecher,et al. Surface roughness prediction through internal kernel information and external accelerometers using artificial neural networks , 2011 .
[41] Furong Gao,et al. Review of Recent Research on Data-Based Process Monitoring , 2013 .
[42] A. S. Asl,et al. Applying a multi sensor system to predict and simulate the tool wear using of artificial neural networks , 2017 .
[43] A Arendra,et al. On-line Tool Wear Detection on DCMT070204 Carbide Tool Tip Based on Noise Cutting Audio Signal using Artificial Neural Network , 2018 .
[44] László Monostori,et al. Artificial neural network based tool condition monitoring in micro mechanical peck drilling using thrust force signals , 2017 .
[45] Zhiqiang Ge,et al. Adaptive soft sensors for quality prediction under the framework of Bayesian network , 2018 .
[46] Bouraoui Ouni,et al. A comparison between ANN and SVM classifier for drowsiness detection based on single EEG channel , 2016, 2016 2nd International Conference on Advanced Technologies for Signal and Image Processing (ATSIP).
[47] H. Zhao,et al. A study of flank wear in orthogonal cutting with internal cooling , 2002 .
[48] Ł. Rypina,et al. Modelling of surface roughness and grinding forces using artificial neural networks with assessment of the ability to data generalisation , 2017, The International Journal of Advanced Manufacturing Technology.
[49] Damien McParland,et al. Prediction of tool-wear in turning of medical grade cobalt chromium molybdenum alloy (ASTM F75) using non-parametric Bayesian models , 2016, J. Intell. Manuf..
[50] Haci Saglam,et al. Tool wear monitoring in bandsawing using neural networks and Taguchi’s design of experiments , 2011 .
[51] Yan Wang,et al. An integrated multi-sensor fusion-based deep feature learning approach for rotating machinery diagnosis , 2018 .
[52] Rodolfo E. Haber,et al. An investigation of tool-wear monitoring in a high-speed machining process , 2004 .
[53] Chi Fai Cheung,et al. A theoretical and experimental investigation of the tool-tip vibration and its influence upon surface generation in single-point diamond turning , 2010 .
[54] Tien-I Liu,et al. Tool condition monitoring (TCM) using neural networks , 2015 .
[55] P. Collet,et al. On Concentration Inequalities and Their Applications for Gibbs Measures in Lattice Systems , 2016 .
[56] Zhiqiang Ge,et al. Data Mining and Analytics in the Process Industry: The Role of Machine Learning , 2017, IEEE Access.
[57] Xu Yang,et al. Wear state recognition of drills based on K-means cluster and radial basis function neural network , 2010, Int. J. Autom. Comput..
[58] U. Natarajan,et al. Prediction of surface roughness in CNC end milling by machine vision system using artificial neural network based on 2D Fourier transform , 2011 .
[59] Comparison of various tool wear prediction methods during end milling of metal matrix composite , 2018 .