A review of prognostics and health management of machine tools
暂无分享,去创建一个
[1] Xiang Li,et al. Tool wear monitoring and prognostics challenges: a comparison of connectionist methods toward an adaptive ensemble model , 2018, J. Intell. Manuf..
[2] Jay Lee,et al. Watchdog Agent - an infotronics-based prognostics approach for product performance degradation assessment and prediction , 2003, Adv. Eng. Informatics.
[3] Loredana Cristaldi,et al. A comparative study on data-driven prognostic approaches using fleet knowledge , 2016, 2016 IEEE International Instrumentation and Measurement Technology Conference Proceedings.
[4] Binbin Xu,et al. Comparison between Bayesian Method and LSE in Estimating MTBF of NC Machine Tools , 2015, 2015 International Conference on Computer Science and Mechanical Automation (CSMA).
[5] Rui Kang,et al. Benefits analysis of prognostics in systems , 2010, 2010 Prognostics and System Health Management Conference.
[6] Konrad Wegener,et al. A fundamental approach for data acquisition on machine tools as enabler for analytical Industrie 4.0 applications , 2019, Procedia CIRP.
[7] M. G. Thurston. An open standard for Web-based condition-based maintenance systems , 2001, 2001 IEEE Autotestcon Proceedings. IEEE Systems Readiness Technology Conference. (Cat. No.01CH37237).
[8] Xiang Li,et al. An Intelligent Predictive Engine for Milling Machine Prognostic Monitoring , 2006, 2006 4th IEEE International Conference on Industrial Informatics.
[9] T. Kurfess,et al. Tool life predictions in milling using spindle power with the neural network technique , 2016 .
[10] Michael Pecht,et al. Modeling Approaches for Prognostics and Health Management of Electronics , 2010 .
[11] Steven X. Ding,et al. A Survey of Fault Diagnosis and Fault-Tolerant Techniques—Part I: Fault Diagnosis With Model-Based and Signal-Based Approaches , 2015, IEEE Transactions on Industrial Electronics.
[12] Enrico Zio,et al. Artificial intelligence for fault diagnosis of rotating machinery: A review , 2018, Mechanical Systems and Signal Processing.
[13] Raj Bhatnagar,et al. Data driven predictive analytics for a spindle's health , 2015, 2015 IEEE International Conference on Big Data (Big Data).
[14] Xu Jia,et al. Failure mode and effects analysis of CNC machine tools based on SPA , 2017, 2017 2nd International Conference on System Reliability and Safety (ICSRS).
[15] Geok Soon Hong,et al. Prognosis of the probability of failure in tool condition monitoring application-a time series based approach , 2015 .
[16] G. Kacprzynski,et al. Advances in uncertainty representation and management for particle filtering applied to prognostics , 2008, 2008 International Conference on Prognostics and Health Management.
[17] Dirk van Schrick,et al. Remarks on Terminology in the Field of Supervision, Fault Detection and Diagnosis , 1997 .
[18] L. Cristaldi,et al. Toward a new definition of FMECA approach , 2015, 2015 IEEE International Instrumentation and Measurement Technology Conference (I2MTC) Proceedings.
[19] Z. J. Yang,et al. Reliability analysis of machining center based on the field data , 2013 .
[20] K. Goebel,et al. Standardizing research methods for prognostics , 2008, 2008 International Conference on Prognostics and Health Management.
[21] Wei Zhang,et al. Systematic study of the prediction methods for machined surface topography and form error during milling process with flat-end cutter , 2019 .
[22] Noureddine Zerhouni,et al. Health assessment and life prediction of cutting tools based on support vector regression , 2015, J. Intell. Manuf..
[23] Hung-Cuong Trinh,et al. A Data-Independent Genetic Algorithm Framework for Fault-Type Classification and Remaining Useful Life Prediction , 2020, Applied Sciences.
[24] Max Kuhn,et al. Applied Predictive Modeling , 2013 .
[25] Roger Serra,et al. Cutting tools reliability and residual life prediction from degradation indicators in turning process , 2016 .
[26] Samy E. Oraby,et al. Tool life determination based on the measurement of wear and tool force ratio variation , 2004 .
[27] Xun Xu,et al. Machine Tool 4.0 for the new era of manufacturing , 2017 .
[28] Lin Li,et al. Industrial Big Data in an Industry 4.0 Environment: Challenges, Schemes, and Applications for Predictive Maintenance , 2017, IEEE Access.
[29] Robert X. Gao,et al. Deep learning and its applications to machine health monitoring , 2019, Mechanical Systems and Signal Processing.
[30] Colin Bradley,et al. A review of machine vision sensors for tool condition monitoring , 1997 .
[31] Sankalita Saha,et al. Evaluating algorithm performance metrics tailored for prognostics , 2009, 2009 IEEE Aerospace conference.
[32] K. Goebel,et al. Metrics for evaluating performance of prognostic techniques , 2008, 2008 International Conference on Prognostics and Health Management.
[33] Noureddine Zerhouni,et al. CNC machine tool's wear diagnostic and prognostic by using dynamic Bayesian networks , 2012 .
[34] X Li,et al. Fuzzy Regression Modeling for Tool Performance Prediction and Degradation Detection , 2010, Int. J. Neural Syst..
[35] Dong-Woo Cho,et al. Estimating cutting force from rotating and stationary feed motor currents on a milling machine , 2002 .
[36] S F Bush. Scale, order and complexity in polymer processing , 2000 .
[37] Eric Bechhoefer,et al. Lubrication Oil Condition Monitoring and Remaining Useful Life Prediction with Particle Filtering , 2020 .
[38] Carey Bunks,et al. CONDITION-BASED MAINTENANCE OF MACHINES USING HIDDEN MARKOV MODELS , 2000 .
[39] Hongli Gao,et al. Screw performance degradation assessment based on quantum genetic algorithm and dynamic fuzzy neural network , 2015 .
[40] Hongli Gao,et al. Remaining useful life prediction of the ball screw system based on weighted Mahalanobis distance and an exponential model , 2018, Journal of Vibroengineering.
[41] Laxman Yadu Waghmode,et al. Selection of time-to-failure model for computerized numerical control turning center based on the assessment of trends in maintenance data , 2018, Proceedings of the Institution of Mechanical Engineers, Part O: Journal of Risk and Reliability.
[42] Shaoping Wang,et al. Prognostic analysis based on hybrid prediction method for axial piston pump , 2012, IEEE 10th International Conference on Industrial Informatics.
[43] Peter W. Tse,et al. A Relevance Vector Machine-Based Approach with Application to Oil Sand Pump Prognostics , 2013, Sensors.
[44] Hongru Li,et al. Prognostic for hydraulic pump based upon DCT-composite spectrum and the modified echo state network , 2016, SpringerPlus.
[45] Sarangapani Jagannathan,et al. Mahalanobis-Taguchi System as a Multi-Sensor Based Decision Making Prognostics Tool for Centrifugal Pump Failures , 2011, IEEE Transactions on Reliability.
[46] Chuanhai Chen,et al. Reliability assessment of the spindle systems with a competing risk model , 2019 .
[47] Steven Y. Liang,et al. Damage mechanics approach for bearing lifetime prognostics , 2002 .
[48] Shuang Liang,et al. A weighted hidden Markov model approach for continuous-state tool wear monitoring and tool life prediction , 2016, The International Journal of Advanced Manufacturing Technology.
[49] Hugh McManus,et al. A framework for understanding uncertainty and its mitigation and exploitation in complex systems , 2006, IEEE Engineering Management Review.
[50] Ying Peng,et al. Current status of machine prognostics in condition-based maintenance: a review , 2010 .
[51] Vladimir Stojanovic,et al. Robust identification of OE model with constrained output using optimal input design , 2016, J. Frankl. Inst..
[52] Jose Vicente Abellan-Nebot,et al. A review of machining monitoring systems based on artificial intelligence process models , 2010 .
[53] Vladimir Stojanovic,et al. A nature inspired optimal control of pneumatic-driven parallel robot platform , 2017 .
[54] Dong-Chul Han,et al. Cutting Force Estimation by Measuring Spindle Displacement in Milling Process , 2005 .
[55] Linxia Liao,et al. Machinery time to failure prediction - Case study and lesson learned for a spindle bearing application , 2013, 2013 IEEE Conference on Prognostics and Health Management (PHM).
[56] Xiaodong Jia,et al. Prognosability study of ball screw degradation using systematic methodology , 2018, Mechanical Systems and Signal Processing.
[57] Vladimir Stojanovic,et al. Joint state and parameter robust estimation of stochastic nonlinear systems , 2016 .
[58] Hsuan-Tien Lin,et al. Learning From Data , 2012 .
[59] Chao Wang,et al. Design of an instrumented smart cutting tool and its implementation and application perspectives , 2014 .
[60] Takashi Yoneyama,et al. Prognostics and Health Monitoring for an electro-hydraulic flight control actuator , 2009, 2009 IEEE Aerospace conference.
[61] K. Goebel,et al. Fusing competing prediction algorithms for prognostics , 2006, 2006 IEEE Aerospace Conference.
[62] Brian A. Weiss,et al. A review of diagnostic and prognostic capabilities and best practices for manufacturing , 2019, J. Intell. Manuf..
[63] Daming Lin,et al. A review on machinery diagnostics and prognostics implementing condition-based maintenance , 2006 .
[64] George Vachtsevanos,et al. Methodologies for uncertainty management in prognostics , 2009, 2009 IEEE Aerospace conference.
[65] Yaguo Lei,et al. Machinery health prognostics: A systematic review from data acquisition to RUL prediction , 2018 .
[66] Christopher M. Bishop,et al. Pattern Recognition and Machine Learning (Information Science and Statistics) , 2006 .
[67] Jie Wang,et al. CHMM for tool condition monitoring and remaining useful life prediction , 2012 .
[68] T. Yoneyama,et al. Prognostics performance metrics and their relation to requirements, design, verification and cost-benefit , 2008, 2008 International Conference on Prognostics and Health Management.
[69] Brian A. Weiss,et al. The present status and future growth of maintenance in US manufacturing: results from a pilot survey , 2016, Manufacturing review.
[70] Sarangapani Jagannathan,et al. Mahalanobis Taguchi System (MTS) as a Prognostics Tool for Rolling Element Bearing Failures , 2010 .
[71] Pavol Tanuska,et al. Concept of predictive maintenance of production systems in accordance with industry 4.0 , 2017, 2017 IEEE 15th International Symposium on Applied Machine Intelligence and Informatics (SAMI).
[72] Chuanhai Chen,et al. Reliability Modelling of CNC Machine Tools Based on the Improved Maximum Likelihood Estimation Method , 2018 .
[73] David L. Iverson. Inductive System Health Monitoring , 2004, IC-AI.
[74] Noureddine Zerhouni,et al. Novel failure prognostics approach with dynamic thresholds for machine degradation , 2013, IECON 2013 - 39th Annual Conference of the IEEE Industrial Electronics Society.
[75] Douglas C. Montgomery,et al. Applied Statistics and Probability for Engineers, Third edition , 1994 .
[76] Loredana Cristaldi,et al. A root cause analysis and a risk evaluation of PV balance of system failures , 2017 .
[77] Jay Lee,et al. Intelligent prognostics tools and e-maintenance , 2006, Comput. Ind..
[78] Xinpeng Zhang,et al. Novelty detection methods for online health monitoring and post data analysis of turbopumps , 2013, Journal of Mechanical Science and Technology.
[79] Andreas Albrecht,et al. High frequency bandwidth cutting force measurement in milling using capacitance displacement sensors , 2005 .
[80] Yusuf Altintas,et al. Dynamic Compensation of Spindle Integrated Force Sensors With Kalman Filter , 2004 .
[81] Jeffrey Alun Jones,et al. Comparison of Computational Prognostic Methods for Complex Systems Under Dynamic Regimes: A Review of Perspectives , 2019, Archives of Computational Methods in Engineering.
[82] Dongfeng Shi,et al. Tool wear predictive model based on least squares support vector machines , 2007 .
[83] Peter Kipruto Chemweno,et al. A review on lubricant condition monitoring information analysis for maintenance decision support , 2019, Mechanical Systems and Signal Processing.
[84] Marcantonio Catelani,et al. FMECA technique on photovoltaic module , 2011, 2011 IEEE International Instrumentation and Measurement Technology Conference.
[85] Tarak Benkedjouh,et al. Tool Wear Condition Monitoring Based on Blind Source Separation and Wavelet Transform , 2017 .
[86] Yinhui Ao,et al. Prognostics for drilling process with wavelet packet decomposition , 2010 .
[87] Jay Lee,et al. Prognostics and health management design for rotary machinery systems—Reviews, methodology and applications , 2014 .
[88] B. S. Pabla,et al. Condition based maintenance of machine tools—A review , 2015 .
[89] Linxia Liao,et al. Discovering Prognostic Features Using Genetic Programming in Remaining Useful Life Prediction , 2014, IEEE Transactions on Industrial Electronics.
[90] Steven X. Ding,et al. A Survey of Fault Diagnosis and Fault-Tolerant Techniques—Part II: Fault Diagnosis With Knowledge-Based and Hybrid/Active Approaches , 2015, IEEE Transactions on Industrial Electronics.
[91] Noureddine Zerhouni,et al. The ISO 13381-1 standard's failure prognostics process through an example , 2010, 2010 Prognostics and System Health Management Conference.
[92] Scott Poll,et al. A Survey of Health Management User Objectives in Aerospace Systems Related to Diagnostic and Prognostic Metrics , 2021 .
[93] Leonardo Ramos Rodrigues,et al. Using Degradation Messages to Predict Hydraulic System Failures in a Commercial Aircraft , 2018, IEEE Transactions on Automation Science and Engineering.
[94] Daniel E. Hastings,et al. 3.4.1 A Framework for Understanding Uncertainty and its Mitigation and Exploitation in Complex Systems , 2005 .
[95] Mehdi Salehi,et al. Model-based broadband estimation of cutting forces and tool vibration in milling through in-process indirect multiple-sensors measurements , 2016 .
[96] Binbin Xu,et al. Reliability Analysis of Numerical Control Lathe Based On The Field Data , 2015 .
[97] Vladimir Stojanovic,et al. Optimal control of hydraulically driven parallel robot platform based on firefly algorithm , 2015 .
[98] George Chryssolouris,et al. Tool wear predictability estimation in milling based on multi-sensorial data , 2016 .
[99] J. Soulard,et al. An experimental investigation on ultra-precision instrumented smart aerostatic bearing spindle applied to high speed micro-drilling , 2018 .
[100] Donghua Zhou,et al. Remaining useful life estimation - A review on the statistical data driven approaches , 2011, Eur. J. Oper. Res..
[101] Linxia Liao,et al. Review of Hybrid Prognostics Approaches for Remaining Useful Life Prediction of Engineered Systems, and an Application to Battery Life Prediction , 2014, IEEE Transactions on Reliability.
[102] Noureddine Zerhouni,et al. Joint Prediction of Continuous and Discrete States in Time-Series Based on Belief Functions , 2013, IEEE Transactions on Cybernetics.
[103] Raphael T. Haftka,et al. Reducing Uncertainty in Damage Growth Properties by Structural Health Monitoring , 2009 .
[104] Jay Lee,et al. Service Innovation and Smart Analytics for Industry 4.0 and Big Data Environment , 2014 .
[105] Xuefeng Chen,et al. The concept and progress of intelligent spindles: A review , 2017 .
[106] M.J. Roemer,et al. Validation and verification of prognostic and health management technologies , 2005, 2005 IEEE Aerospace Conference.
[107] J. Dunsdon,et al. An Open System Architecture for Condition Based Maintenance Overview , 2007, 2007 IEEE Aerospace Conference.
[108] Peter W. Tse,et al. Prognostics of slurry pumps based on a moving-average wear degradation index and a general sequential Monte Carlo method , 2015 .
[109] Matthew J. Watson,et al. In-line health monitoring system for hydraulic pumps and motors , 2003, 2003 IEEE Aerospace Conference Proceedings (Cat. No.03TH8652).
[110] Binbin Xu,et al. Bayesian reliability modeling and assessment solution for NC machine tools under small-sample data , 2015 .
[111] Kamran Javed,et al. Robust, reliable and applicable tool wear monitoring and prognostic: Approach based on an improved-extreme learning machine , 2012, 2012 IEEE Conference on Prognostics and Health Management.
[112] Sankalita Saha,et al. Metrics for Offline Evaluation of Prognostic Performance , 2021, International Journal of Prognostics and Health Management.
[113] C.S. Byington,et al. A model-based approach to prognostics and health management for flight control actuators , 2004, 2004 IEEE Aerospace Conference Proceedings (IEEE Cat. No.04TH8720).
[114] Xifan Yao,et al. Tool Condition Monitoring and Remaining Useful Life Prognostic Based on a Wireless Sensor in Dry Milling Operations , 2016, Sensors.