Model-Based Controlling Approaches for Manufacturing Processes
暂无分享,去创建一个
Mark P. Sanders | J. Pennekamp | Ike Kunze | T. Bergs | D. Abel | C. Brecher | U. Reisgen | R. Schmitt | S. Mann | Sven Schiller | M. Landwehr | Tiandong Xi | M. Ay | A. Rüppel | D. Scheurenberg | Klaus Wehrle | Benedikt Biernat | Pascal Rabe
[1] D. Emonts,et al. Model-Based, Experimental Thermoelastic Analysis of a Large Scale Turbine Housing , 2022, Journal of Machine Engineering.
[2] Wil M.P. van der Aalst,et al. A Computer Science Perspective on Digital Transformation in Production , 2022, ACM Trans. Internet Things.
[3] B. Montavon,et al. FAIR sensor services - Towards sustainable sensor data management , 2021, Measurement: Sensors.
[4] Thomas Bergs,et al. Recurrent Online and Transfer Learning of a CNC-Machining Center with Support Vector Machines , 2021, 2021 IEEE 30th International Symposium on Industrial Electronics (ISIE).
[5] T. Bergs,et al. Knowledge-Based Adaptation of Product and Process Design in Blisk Manufacturing , 2021, Journal of Engineering for Gas Turbines and Power.
[6] Klaus Wehrle,et al. Investigating the Applicability of In-Network Computing to Industrial Scenarios , 2021, 2021 4th IEEE International Conference on Industrial Cyber-Physical Systems (ICPS).
[7] Mark P. Sanders,et al. On-Machine Measurements im Internet of Production , 2021, Zeitschrift für wirtschaftlichen Fabrikbetrieb.
[8] Christian Brecher,et al. Tool wear monitoring in roughing and finishing processes based on machine internal data , 2021, The International Journal of Advanced Manufacturing Technology.
[9] David Stenger,et al. Robust Parametrization of a Model Predictive Controller for a CNC Machining Center Using Bayesian Optimization , 2020, IFAC-PapersOnLine.
[10] U. Reisgen,et al. Study on identifying GMAW process deviations by means of optical and electrical process data using ANN , 2020, 2020 IEEE 16th International Conference on Automation Science and Engineering (CASE).
[11] Philipp DAHLEM,et al. A review on enabling technologies for resilient and traceable on-machine measurements , 2020 .
[12] Rudy R. Negenborn,et al. Adaptive predictive path following control based on least squares support vector machines for underactuated autonomous vessels , 2019, Asian Journal of Control.
[13] Lennart Ljung,et al. Nonlinear System Identification: A User-Oriented Road Map , 2019, IEEE Control Systems.
[14] Christian Brecher,et al. Dataflow Challenges in an Internet of Production: A Security & Privacy Perspective , 2019, CPS-SPC@CCS.
[15] R. Findeisen,et al. Online learning‐based model predictive control with Gaussian process models and stability guarantees , 2019, International Journal of Robust and Nonlinear Control.
[16] Christian Hopmann,et al. Cross-phase Model-based Predictive Cavity Pressure Control in Injection Molding , 2019, 2019 IEEE Conference on Control Technology and Applications (CCTA).
[17] Alexander Liniger,et al. Learning-Based Model Predictive Control for Autonomous Racing , 2019, IEEE Robotics and Automation Letters.
[18] U. Reisgen,et al. Connected, digitalized welding production—Industrie 4.0 in gas metal arc welding , 2019, Welding in the World.
[19] Jan Rüth,et al. Towards In-Network Industrial Feedback Control , 2018, NetCompute@SIGCOMM.
[20] Tianqi Chen,et al. XGBoost: A Scalable Tree Boosting System , 2016, KDD.
[21] Sebti Foufou,et al. OntoSTEP: Enriching product model data using ontologies , 2012, Comput. Aided Des..
[22] Inês Pires,et al. Reduction of fume and gas emissions using innovative gas metal arc welding variants , 2010 .
[23] Peter Pruschek,et al. Lebenszykluskostenreduzierung durch zustandsorientierte Instandhaltung , 2009 .
[24] Steven Y. Liang,et al. Machining Process Monitoring and Control: The State-of-the-Art , 2004 .
[25] James B. Rawlings,et al. Tutorial overview of model predictive control , 2000 .
[26] Yusuf Altintas,et al. Manufacturing Automation: Metal Cutting Mechanics, Machine Tool Vibrations, and CNC Design , 2000 .
[27] J. Richalet,et al. Industrial applications of model based predictive control , 1993, Autom..
[28] Johannes Lipp,et al. Towards Ontology-based Lifecycle Management in Blisk Manufacturing , 2022, Procedia CIRP.
[29] Production at the leading edge of technology , 2021, Lecture Notes in Production Engineering.
[30] R. H. Schmitt,et al. Domain-Specific Language for Sensors in the Internet of Production , 2020 .
[31] M. Herty,et al. Identifying trending model coefficients with an ensemble Kalman filter – a demonstration on a force model for milling , 2020 .
[32] Aidan Hogan,et al. The Semantic Web: Two decades on , 2020, Semantic Web.
[33] Klaus Wehrle,et al. Connected, Digitalized Welding Production—Secure, Ubiquitous Utilization of Data Across Process Layers , 2020, Advanced Structured Materials.
[34] Thomas Bergs,et al. Model Predictive Control in Milling based on Support Vector Machines , 2019, IFAC-PapersOnLine.
[35] Thomas Bergs,et al. Kernel Selection for Support Vector Machines for System Identification of a CNC Machining Center , 2019, IFAC-PapersOnLine.
[36] Thomas Gries,et al. Model Predictive Control of the Weft Insertion in Air-jet Weaving , 2019, IFAC-PapersOnLine.
[37] Thomas Bergs,et al. A Method of Cutting Power Monitoring for Feed Axes in Milling by Power Measurement Device , 2019, IFAC-PapersOnLine.
[38] Christian Brecher,et al. Process-parallel virtual quality evaluation for metal cutting in series production , 2018 .
[39] Christian Brecher,et al. Digital Shadows in the Internet of Production , 2018, ERCIM News.
[40] Maciej Lawrynczuk,et al. Modelling and predictive control of a neutralisation reactor using sparse support vector machine Wiener models , 2016, Neurocomputing.
[41] Fritz Klocke,et al. Modeling and simulation of tool engagement and prediction of process forces in milling , 2016 .
[42] Oliver Adams,et al. Macroscopic Simulation of Multi-axis Machining Processes , 2013, ICINCO.
[43] Alexander Huf,et al. Kumulative Lastermittlung aus Antriebsdaten zur Bewertung des Zustands von Werkzeugmaschinenkomponenten , 2012 .
[44] Johan A. K. Suykens,et al. Identification of Wiener-Hammerstein Systems using LS-SVMs , 2009 .
[45] J. Suykens. Support vector machines and kernel-based learning for dynamical systems modelling , 2009 .
[46] Pascal Vasseur,et al. Introduction to Multisensor Data Fusion , 2005, The Industrial Information Technology Handbook.
[47] Deborah L. McGuinness,et al. OWL Web ontology language overview , 2004 .
[48] Michael Grüninger,et al. Ontology of the Process Specification Language , 2004, Handbook on Ontologies.
[49] Gael D. Ulrich,et al. Fume Formation Rates in Gas Metal Arc Welding A new fume chamber design improves the accuracy of fume generation data , 1999 .
[50] A. Palmgren,et al. Dynamic capacity of rolling bearings , 1947 .