Artificial Intelligence in Advanced Manufacturing: Current Status and Future Outlook
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Robert X. Gao | Jorge Arinez | Qing Chang | Chengying Xu | Jianjing Zhang | J. Arinez | R. Gao | Chengyi Xu | Q. Chang | Jianjing Zhang
[1] Yeou-Ren Shiue,et al. Data-mining-based dynamic dispatching rule selection mechanism for shop floor control systems using a support vector machine approach , 2009 .
[2] Lihui Wang,et al. Towards Robust Human-Robot Collaborative Manufacturing: Multimodal Fusion , 2018, IEEE Access.
[3] S. H. Huang,et al. Applications of neural networks in manufacturing: a state-of-the-art survey , 1995 .
[4] Yoshua Bengio,et al. Generative Adversarial Nets , 2014, NIPS.
[5] Yung C. Shin,et al. A self-tuning fuzzy controller for a class of multi-input multi-output nonlinear systems , 2011, Eng. Appl. Artif. Intell..
[6] Thomas B. Sheridan,et al. Human–Robot Interaction , 2016, Hum. Factors.
[7] Sushil Kumar,et al. Cognitive Robotics in Artificial Intelligence , 2018, 2018 8th International Conference on Cloud Computing, Data Science & Engineering (Confluence).
[8] Stanley B. Gershwin,et al. A decomposition method for approximate evaluation of continuous flow multi-stage lines with general Markovian machines , 2013, Ann. Oper. Res..
[9] Peng Wang,et al. Long short-term memory for machine remaining life prediction , 2018, Journal of Manufacturing Systems.
[10] Michael J. Shaw,et al. An Artificial Intelligence Approach to the Scheduling of Flexible Manufacturing Systems , 1989 .
[11] Jia Liu,et al. Online Real-Time Quality Monitoring in Additive Manufacturing Processes Using Heterogeneous Sensors , 2015 .
[12] Robert X. Gao,et al. Virtualization and deep recognition for system fault classification , 2017 .
[13] Robert X. Gao,et al. Deep learning and its applications to machine health monitoring , 2019, Mechanical Systems and Signal Processing.
[14] Robert X. Gao,et al. Current envelope analysis for defect identification and diagnosis in induction motors , 2012 .
[15] Chuang Sun,et al. Discriminative Deep Belief Networks with Ant Colony Optimization for Health Status Assessment of Machine , 2017, IEEE Transactions on Instrumentation and Measurement.
[16] Bo-Suk Yang,et al. Machine performance degradation assessment and remaining useful life prediction using proportional hazard model and support vector machine , 2012, WCE 2010.
[17] Stephan Biller,et al. Event-based modelling of distributed sensor networks in battery manufacturing , 2014 .
[18] Md Atiqur Rahman Chowdhury,et al. Electrical Conductivity and Structural Evolution of Polymer-Derived SiC Ceramics Pyrolyzed From 1200 °C to 1800 °C , 2020 .
[19] Peter Butala,et al. Interpretative identification of the faulty conditions in a cyclic manufacturing process , 2017 .
[20] Stanley B. Gershwin,et al. Analysis of a general Markovian two-stage continuous-flow production system with a finite buffer , 2009 .
[21] Michael A. Goodrich,et al. Human-Robot Interaction: A Survey , 2008, Found. Trends Hum. Comput. Interact..
[22] Lihui Wang,et al. Big data analytics based fault prediction for shop floor scheduling , 2017 .
[23] Vadim Shapiro,et al. The new frontiers in computational modeling of material structures , 2016, Comput. Aided Des..
[24] J. R. Llata,et al. Working Together: A Review on Safe Human-Robot Collaboration in Industrial Environments , 2017, IEEE Access.
[25] Dazhong Wu,et al. Deep learning for smart manufacturing: Methods and applications , 2018, Journal of Manufacturing Systems.
[26] Ohyung Kwon,et al. A deep neural network for classification of melt-pool images in metal additive manufacturing , 2018, J. Intell. Manuf..
[27] Qingbo He,et al. Energy-Fluctuated Multiscale Feature Learning With Deep ConvNet for Intelligent Spindle Bearing Fault Diagnosis , 2017, IEEE Transactions on Instrumentation and Measurement.
[28] Hongwen He,et al. Long Short-Term Memory Recurrent Neural Network for Remaining Useful Life Prediction of Lithium-Ion Batteries , 2018, IEEE Transactions on Vehicular Technology.
[29] Germano Veiga,et al. Online inspection system based on machine learning techniques: real case study of fabric textures classification for the automotive industry , 2019, J. Intell. Manuf..
[30] Mohammad Reza Soleymani Yazdi,et al. Tool Life Prediction in Face Milling Machining of 7075 Al by Using Artificial Neural Networks (ANN) and Taguchi Design of Experiment (DOE) , 2011 .
[31] Thomas B. Sheridan,et al. Telerobotics, Automation, and Human Supervisory Control , 2003 .
[32] Jay Lee,et al. Prognostics and health management design for rotary machinery systems—Reviews, methodology and applications , 2014 .
[33] Yue Liu,et al. Materials discovery and design using machine learning , 2017 .
[34] Ahmed El-Bouri,et al. A neural network for dispatching rule selection in a job shop , 2006 .
[35] Binqiang Chen,et al. An Intelligent Gear Fault Diagnosis Methodology Using a Complex Wavelet Enhanced Convolutional Neural Network , 2017, Materials.
[36] Changjun Li,et al. Performance prediction of a production line with variability based on grey model artificial neural network , 2016, 2016 35th Chinese Control Conference (CCC).
[37] Anand Nayyar,et al. Internet of Robotic Things: Driving Intelligent Robotics of Future - Concept, Architecture, Applications and Technologies , 2018, 2018 4th International Conference on Computing Sciences (ICCS).
[38] Adele H. Marshall,et al. A Bayesian network based learning system for modelling faults in large-scale manufacturing , 2018, 2018 IEEE International Conference on Industrial Technology (ICIT).
[39] Sanem Sariel,et al. Robust task execution through experience-based guidance for cognitive robots , 2015, 2015 International Conference on Advanced Robotics (ICAR).
[40] Jiafu Wan,et al. Implementing Smart Factory of Industrie 4.0: An Outlook , 2016, Int. J. Distributed Sens. Networks.
[41] Chengying Xu,et al. Survey on various control techniques in micro grinding processes , 2009 .
[42] Martin A. Riedmiller,et al. Distributed policy search reinforcement learning for job-shop scheduling tasks , 2012 .
[43] Feng Duan,et al. A new human-robot collaboration assembly system for cellular manufacturing , 2011, Proceedings of the 30th Chinese Control Conference.
[44] Byeng D. Youn,et al. A New Parameter Repurposing Method for Parameter Transfer With Small Dataset and Its Application in Fault Diagnosis of Rolling Element Bearings , 2019, IEEE Access.
[45] Yunyi Jia,et al. Facilitating Human–Robot Collaborative Tasks by Teaching-Learning-Collaboration From Human Demonstrations , 2019, IEEE Transactions on Automation Science and Engineering.
[46] J. Geoffrey Chase,et al. Human-Robot Collaboration: A Literature Review and Augmented Reality Approach in Design , 2008 .
[47] Jorge Arinez,et al. Knowledge-guided Reinforcement Learning for Gantry Work Cell Scheduling , 2018 .
[48] Bilge Mutlu,et al. Anticipatory robot control for efficient human-robot collaboration , 2016, 2016 11th ACM/IEEE International Conference on Human-Robot Interaction (HRI).
[49] Alberto Gómez,et al. Learning-based scheduling of flexible manufacturing systems using ensemble methods , 2018, Comput. Ind. Eng..
[50] Robert X. Gao,et al. Probabilistic Transfer Factor Analysis for Machinery Autonomous Diagnosis Cross Various Operating Conditions , 2020, IEEE Transactions on Instrumentation and Measurement.
[51] Ravi Shankar,et al. A big data driven sustainable manufacturing framework for condition-based maintenance prediction , 2017, J. Comput. Sci..
[52] Fu Zhang,et al. Genetic Algorithms for Manufacturing Process Planning , 2012, Variants of Evolutionary Algorithms for Real-World Applications.
[53] Richard Leach,et al. Review of in-situ process monitoring and in-situ metrology for metal additive manufacturing , 2016 .
[54] Shane Legg,et al. Human-level control through deep reinforcement learning , 2015, Nature.
[55] Robert X. Gao,et al. Prognosis of Defect Propagation Based on Recurrent Neural Networks , 2011, IEEE Transactions on Instrumentation and Measurement.
[56] Chun-Wei Yang,et al. Applications of artificial intelligence in intelligent manufacturing: a review , 2017, Frontiers of Information Technology & Electronic Engineering.
[57] Jay Lee,et al. Industrial Artificial Intelligence for industry 4.0-based manufacturing systems , 2018, Manufacturing Letters.
[58] Robert X. Gao,et al. Markov Nonlinear System Estimation for Engine Performance Tracking , 2016 .
[59] Katharina Morik,et al. Quality Prediction in Interlinked Manufacturing Processes based on Supervised & Unsupervised Machine Learning , 2013 .
[60] Robert X. Gao,et al. Recurrent neural network for motion trajectory prediction in human-robot collaborative assembly , 2020 .
[61] Lifeng Xi,et al. A reinforcement learning based approach for a multiple-load carrier scheduling problem , 2015, J. Intell. Manuf..
[62] Michael Brady,et al. Artificial Intelligence and Robotics , 1985, Artif. Intell..
[63] Meiabadi Mohammad Saleh,et al. Optimization of Plastic Injection Molding Process by Combination of Artificial Neural Network and Genetic Algorithm , 2013 .
[64] Jose Barata,et al. Multistage Quality Control Using Machine Learning in the Automotive Industry , 2019, IEEE Access.
[65] Leon F. McGinnis,et al. Performance evaluation for general queueing networks in manufacturing systems: Characterizing the trade-off between queue time and utilization , 2012, Eur. J. Oper. Res..
[66] Yang Liu,et al. Re-entrant lines with unreliable asynchronous machines and finite buffers: performance approximation and bottleneck identification , 2012 .
[67] Jeremy A. Marvel,et al. Characterizing Task-Based Human–Robot Collaboration Safety in Manufacturing , 2015, IEEE Transactions on Systems, Man, and Cybernetics: Systems.
[68] Robert X. Gao,et al. Symbiotic human-robot collaborative assembly , 2019, CIRP Annals.
[69] Robert X. Gao,et al. Cloud Computing for Cloud Manufacturing: Benefits and Limitations , 2015 .
[70] Jianjun Shi,et al. Quality control and improvement for multistage systems: A survey , 2009 .
[71] Jean-Philippe Cointet,et al. Neurons spike back: The Invention of Inductive Machines and the Artificial Intelligence Controversy , 2018 .
[72] Zoe Doulgeri,et al. A Machine Learning Framework for Real-Time Identification of Successful Snap-Fit Assemblies , 2020, IEEE Transactions on Automation Science and Engineering.
[73] Brian Scassellati,et al. Transparent role assignment and task allocation in human robot collaboration , 2017, 2017 IEEE International Conference on Robotics and Automation (ICRA).
[74] Jamal Shahrabi,et al. A reinforcement learning approach to parameter estimation in dynamic job shop scheduling , 2017, Comput. Ind. Eng..
[75] Fei Shen,et al. Knowledge Transfer for Rotary Machine Fault Diagnosis , 2020, IEEE Sensors Journal.
[76] Ronay Ak,et al. A Survey of the Advancing Use and Development of Machine Learning in Smart Manufacturing. , 2018, Journal of manufacturing systems.
[77] Andrés Bustillo,et al. Artificial intelligence for automatic prediction of required surface roughness by monitoring wear on face mill teeth , 2017, Journal of Intelligent Manufacturing.
[78] Andrew Kusiak,et al. Data-driven smart manufacturing , 2018, Journal of Manufacturing Systems.
[79] Lihui Wang,et al. From Intelligence Science to Intelligent Manufacturing , 2019, Engineering.
[80] Chengying Xu,et al. Electromagnetic property of polymer derived SiC–C solid solution formed at ultra-high temperature , 2020 .
[81] Stanley B. Gershwin,et al. An approximate analytical method for evaluating the performance of closed-loop flow systems with unreliable machines and finite buffers , 2007 .
[82] Robert X. Gao,et al. Interpretable Convolutional Neural Network Through Layer-wise Relevance Propagation for Machine Fault Diagnosis , 2020, IEEE Sensors Journal.
[83] Lenz Belzner,et al. Optimization of global production scheduling with deep reinforcement learning , 2018 .
[84] M. Hagele,et al. rob@work: Robot assistant in industrial environments , 2002, Proceedings. 11th IEEE International Workshop on Robot and Human Interactive Communication.
[85] Klaus-Dieter Thoben,et al. Machine learning in manufacturing: advantages, challenges, and applications , 2016 .
[86] Xiao Wang,et al. Multi-agent reinforcement learning based maintenance policy for a resource constrained flow line system , 2016, J. Intell. Manuf..
[87] Ray Y. Zhong,et al. Intelligent Manufacturing in the Context of Industry 4.0: A Review , 2017 .
[88] Carlos Martínez,et al. Human-robot collaboration in manufacturing: Quantitative evaluation of predictable, convergent joint action , 2013, IEEE ISR 2013.
[89] Jorge Arinez,et al. Production performance prognostics through model-based analytical method and recency-weighted stochastic approximation method , 2018 .
[90] Klaus-Dieter Thoben,et al. An approach to monitoring quality in manufacturing using supervised machine learning on product state data , 2013, Journal of Intelligent Manufacturing.
[91] John G. Wacker,et al. A Theoretical Model of Manufacturing Lead Times and Their Relationship to a Manufacturing Goal Hierarchy , 1996 .
[92] Robert X. Gao,et al. Transferable two-stream convolutional neural network for human action recognition , 2020 .
[93] Brigitte Chebel-Morello,et al. Direct Remaining Useful Life Estimation Based on Support Vector Regression , 2017, IEEE Transactions on Industrial Electronics.
[94] Hongzhou Wang,et al. A survey of maintenance policies of deteriorating systems , 2002, Eur. J. Oper. Res..
[95] Alessio Micheli,et al. Evaluation of hierarchical structured representations for QSPR studies of small molecules and polymers by recursive neural networks. , 2009, Journal of molecular graphics & modelling.
[96] Jing Zou,et al. Gantry Work Cell Scheduling through Reinforcement Learning with Knowledge-guided Reward Setting , 2018, IEEE Access.
[97] Yinhua Liu,et al. Application of Bayesian networks for diagnostics in the assembly process by considering small measurement data sets , 2013 .
[98] C. T. Papadopoulos,et al. An artificial neural network based decision support system for solving the buffer allocation problem in reliable production lines , 2013, Comput. Ind. Eng..
[99] Michael Buchholz,et al. Health diagnosis and remaining useful life prognostics of lithium-ion batteries using data-driven methods , 2013 .
[100] Qing Chang,et al. Simulation study on reward function of reinforcement learning in gantry work cell scheduling , 2019, Journal of Manufacturing Systems.
[101] A. S. Xanthopoulos,et al. Reinforcement Learning-Based and Parametric Production-Maintenance Control Policies for a Deteriorating Manufacturing System , 2018, IEEE Access.
[102] Niels Lohse,et al. Distributed Bayesian diagnosis for modular assembly systems—A case study , 2013 .
[103] João Aires-de-Sousa,et al. Exploration of quantitative structure–property relationships (QSPR) for the design of new guanidinium ionic liquids , 2008 .
[104] Chao Hu,et al. Ensemble of data-driven prognostic algorithms for robust prediction of remaining useful life , 2011, 2011 IEEE Conference on Prognostics and Health Management.
[105] Noureddine Zerhouni,et al. Remaining useful life estimation based on nonlinear feature reduction and support vector regression , 2013, Eng. Appl. Artif. Intell..
[106] Yue Wang,et al. A regret-based autonomy allocation scheme for human-robot shared vision systems in collaborative assembly in manufacturing , 2016, 2016 IEEE International Conference on Automation Science and Engineering (CASE).
[107] Stephan Biller,et al. Supervisory Factory Control Based on Real-Time Production Feedback , 2007 .
[108] Robert X. Gao,et al. Machine learning-based image processing for on-line defect recognition in additive manufacturing , 2019, CIRP Annals.
[109] Peng Wang,et al. Transfer learning for enhanced machine fault diagnosis in manufacturing , 2020 .
[110] Ashwin P. Dani,et al. Human intention inference and motion modeling using approximate E-M with online learning , 2015, 2015 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS).
[111] Xi Zhang,et al. An Automatic Process Monitoring Method Using Recurrence Plot in Progressive Stamping Processes , 2016, IEEE Transactions on Automation Science and Engineering.
[112] Chengying Xu,et al. Investigation on the Effect of SiC Nanoparticles on Cutting Forces for Micro-Milling Magnesium Matrix Composites , 2011 .
[113] Jun Wang,et al. An intelligent diagnosis scheme based on generative adversarial learning deep neural networks and its application to planetary gearbox fault pattern recognition , 2018, Neurocomputing.
[114] Connor Jennings,et al. A Comparative Study on Machine Learning Algorithms for Smart Manufacturing: Tool Wear Prediction Using Random Forests , 2017 .
[115] Md Atiqur Rahman Chowdhury,et al. Semiconductor‐conductor transition of pristine polymer‐derived ceramics SiC pyrolyzed at temperature range from 1200°C to 1800°C , 2020 .
[116] Yung C. Shin,et al. A Fuzzy Inverse Model Construction Method for General Monotonic Multi-Input-- Single-Output (MISO) Systems , 2008, IEEE Transactions on Fuzzy Systems.
[117] Donald B. Malkoff,et al. A framework for real-time fault detection and diagnosis using temporal data , 1987, Artif. Intell. Eng..
[118] Jing Zou,et al. Production System Performance Identification Using Sensor Data , 2018, IEEE Transactions on Systems, Man, and Cybernetics: Systems.
[119] Jong-Duk Son,et al. A Comparison of Classifier Performance for Fault Diagnosis of Induction Motor using Multi-type Signals , 2007 .
[120] Yung C. Shin,et al. An Adaptive Fuzzy Controller for Constant Cutting Force in End-Milling Processes , 2008 .
[121] Ali Azadeh,et al. An integrated neural network–simulation algorithm for performance optimisation of the bi-criteria two-stage assembly flow-shop scheduling problem with stochastic activities , 2012 .
[122] Lihui Wang,et al. Classification, personalised safety framework and strategy for human-robot collaboration , 2018 .
[123] B.H.M. Sadeghi,et al. A BP-neural network predictor model for plastic injection molding process , 2000 .
[124] Geoffrey E. Hinton,et al. Deep Learning , 2015, Nature.
[125] Chengying Xu,et al. Cutting Force Prediction on Micromilling Magnesium Metal Matrix Composites With Nanoreinforcements , 2013 .
[126] Jeffrey S. Smith,et al. Simulation for manufacturing system design and operation: Literature review and analysis , 2014 .
[127] Robert X. Gao,et al. An Image Processing Approach to Machine Fault Diagnosis Based on Visual Words Representation , 2018 .
[128] Soundar R. T. Kumara,et al. Cyber-physical systems in manufacturing , 2016 .
[129] Zhiheng Li,et al. A particle filter and long short term memory fusion algorithm for failure prognostic of proton exchange membrane fuel cells , 2017, 2017 29th Chinese Control And Decision Conference (CCDC).
[130] Yue Wang,et al. Collaborative Assembly in Hybrid Manufacturing Cells: An Integrated Framework for Human–Robot Interaction , 2018, IEEE Transactions on Automation Science and Engineering.
[131] Han Zhang,et al. Sparse Feature Identification Based on Union of Redundant Dictionary for Wind Turbine Gearbox Fault Diagnosis , 2015, IEEE Transactions on Industrial Electronics.
[132] Liang Guo,et al. A recurrent neural network based health indicator for remaining useful life prediction of bearings , 2017, Neurocomputing.
[133] Robert X. Gao,et al. Cloud-enabled prognosis for manufacturing , 2015 .
[134] Han-Pang Huang,et al. Dynamic scheduling of flexible manufacturing system using support vector machines , 2005, IEEE International Conference on Automation Science and Engineering, 2005..
[135] Feng Yang,et al. Neural network metamodeling for cycle time-throughput profiles in manufacturing , 2010, Eur. J. Oper. Res..
[136] Radu Grosu,et al. A generative neural network model for the quality prediction of work in progress products , 2019, Appl. Soft Comput..
[137] Gisela Lanza,et al. Reinforcement learning for opportunistic maintenance optimization , 2018, Prod. Eng..
[138] Enrico Zio,et al. Artificial intelligence for fault diagnosis of rotating machinery: A review , 2018, Mechanical Systems and Signal Processing.
[139] Péter Galambos,et al. Unsupervised real-time classification of cycle stages in collaborative robot applications , 2018, 2018 IEEE 16th World Symposium on Applied Machine Intelligence and Informatics (SAMI).
[140] Yung C. Shin,et al. Control of Cutting Force for Creep-Feed Grinding Processes Using a Multi-Level Fuzzy Controller , 2007 .
[141] Chandrasekharan Rajendran,et al. A comparative study of dispatching rules in dynamic flowshops and jobshops , 1999, Eur. J. Oper. Res..
[142] Qing Chang,et al. Machine Preventive Replacement Policy for Serial Production Lines Based on Reinforcement Learning , 2019, 2019 IEEE 15th International Conference on Automation Science and Engineering (CASE).
[143] Lamjed Ben Said,et al. A Self Adaptive Neural Agent Based Decision Support System for Solving Dynamic Real Time Scheduling Problems , 2015, 2015 10th International Conference on Intelligent Systems and Knowledge Engineering (ISKE).
[144] Jorge Arinez,et al. Data-driven modeling and real-time distributed control for energy efficient manufacturing systems , 2017 .
[145] Jorge Arinez,et al. A Real-Time Maintenance Policy for Multi-Stage Manufacturing Systems Considering Imperfect Maintenance Effects , 2018, IEEE Access.
[146] Weiming Shen,et al. Agent-based distributed manufacturing process planning and scheduling: a state-of-the-art survey , 2006, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews).
[147] Damien Trentesaux,et al. Dynamic scheduling of maintenance tasks in the petroleum industry: A reinforcement approach , 2009, Eng. Appl. Artif. Intell..
[148] Serkan Kiranyaz,et al. A Generic Intelligent Bearing Fault Diagnosis System Using Compact Adaptive 1D CNN Classifier , 2018, Journal of Signal Processing Systems.
[149] Yung C. Shin,et al. Intelligent Systems: Modeling, Optimization, and Control , 2008 .
[150] Tianyou Zhang,et al. Health Index-Based Prognostics for Remaining Useful Life Predictions in Electrical Machines , 2016, IEEE Transactions on Industrial Electronics.
[151] Ernesto C. Martínez,et al. SmartGantt - An intelligent system for real time rescheduling based on relational reinforcement learning , 2012, Expert Syst. Appl..
[152] Zhang Xuewu,et al. A vision inspection system for the surface defects of strongly reflected metal based on multi-class SVM , 2011 .
[153] Zbigniew Michalewicz,et al. Variants of Evolutionary Algorithms for Real-World Applications , 2011, Variants of Evolutionary Algorithms for Real-World Applications.
[154] Nasser Mebarki,et al. Data mining based job dispatching using hybrid simulation-optimization approach for shop scheduling problem , 2012, Eng. Appl. Artif. Intell..
[155] Batu Akan,et al. Towards robust human robot collaboration in industrial environments , 2010, HRI 2010.
[156] Jean-Philippe Cointet,et al. La revanche des neurones , 2018 .
[157] Godwin J. Udo,et al. Neural networks applications in manufacturing processes , 1992 .
[158] Roger Woods,et al. A new data analytics framework emphasising preprocessing of data to generate insights into complex manufacturing systems , 2019, Proceedings of the Institution of Mechanical Engineers, Part C: Journal of Mechanical Engineering Science.
[159] Hyoung-Ho Doh,et al. Decision Tree Based Scheduling for Flexible Job Shops with Multiple Process Plans , 2014 .
[160] Robert X. Gao,et al. A sparse approach to fault severity classification for gearbox monitoring , 2016, 2016 19th International Conference on Information Fusion (FUSION).
[161] Jong-Myon Kim,et al. Bearing Fault Diagnosis under Variable Rotational Speeds Using Stockwell Transform-Based Vibration Imaging and Transfer Learning , 2018, Applied Sciences.
[162] Paulo Leitão,et al. Agent-based distributed manufacturing control: A state-of-the-art survey , 2009, Eng. Appl. Artif. Intell..
[163] Jan Reimann,et al. The Intelligent Factory Space – A Concept for Observing, Learning and Communicating in the Digitalized Factory , 2019, IEEE Access.
[164] Deniz Türsel Eliiyi,et al. The state of the art on buffer allocation problem: a comprehensive survey , 2014, J. Intell. Manuf..