Blockchain-Empowered Digital Twins Collaboration: Smart Transportation Use Case
暂无分享,去创建一个
[1] Radhya Sahal,et al. Green IoT for Eco-Friendly and Sustainable Smart Cities: Future Directions and Opportunities , 2021, Mobile Networks and Applications.
[2] Norziana Jamil,et al. Blockchain Consensus: An Overview of Alternative Protocols , 2021, Symmetry.
[3] Vijayalakshmi Saravanan,et al. Multi-Variate Data Fusion Technique for Reducing Sensor Errors in Intelligent Transportation Systems , 2021, IEEE Sensors Journal.
[4] Mohsen Guizani,et al. Green internet of things using UAVs in B5G networks: A review of applications and strategies , 2021, Ad Hoc Networks.
[5] Kenneth N. Brown,et al. Digital Twins Collaboration for Automatic Erratic Operational Data Detection in Industry 4.0 , 2021, Applied Sciences.
[6] Alaa Omran Almagrabi,et al. Routing and scheduling of intelligent autonomous vehicles in industrial logistics systems , 2021, Soft Computing.
[7] Neeraj Kumar,et al. Blockchain for decentralized multi‐drone to combat COVID‐19 and future pandemics: Framework and proposed solutions , 2021, Trans. Emerg. Telecommun. Technol..
[8] Fei-Yue Wang,et al. Digital Twin and Parallel Intelligence Based on Location and Transportation: A Vision for New Synergy Between the IEEE CRFID and ITSS in Cyberphysical Social Systems [Society News] , 2021, IEEE Intell. Transp. Syst. Mag..
[9] Kari Tammi,et al. Towards Integrated Digital Twins for Industrial Products: Case Study on an Overhead Crane , 2021 .
[10] Itxaro Errandonea,et al. Digital Twin for maintenance: A literature review , 2020, Comput. Ind..
[11] Yan Cao,et al. Manufacturing Blockchain of Things for the Configuration of a Data- and Knowledge-Driven Digital Twin Manufacturing Cell , 2020, IEEE Internet of Things Journal.
[12] G. Mezzour,et al. SMART PANDEMIC MANAGEMENT THROUGH A SMART, RESILIENT AND FLEXIBLE DECISION-MAKING SYSTEM , 2020 .
[13] Janusz Szpytko,et al. A digital twins concept model for integrated maintenance: a case study for crane operation , 2020, Journal of Intelligent Manufacturing.
[14] Giancarlo Fortino,et al. Multi-user activity recognition: Challenges and opportunities , 2020, Inf. Fusion.
[15] Hager Saleh,et al. Predicting Systolic Blood Pressure in Real-Time Using Streaming Data and Deep Learning , 2020, Mob. Networks Appl..
[16] Khaled Salah,et al. Blockchain for Digital Twins: Recent Advances and Future Research Challenges , 2020, IEEE Network.
[17] Hichem Snoussi,et al. Digital twin improved via visual question answering for vision-language interactive mode in human–machine collaboration , 2020 .
[18] Ashutosh Tiwari,et al. Applying a 6 DoF Robotic Arm and Digital Twin to Automate Fan-Blade Reconditioning for Aerospace Maintenance, Repair, and Overhaul , 2020, Sensors.
[19] Tsung-Ting Kuo,et al. The anatomy of a distributed predictive modeling framework: online learning, blockchain network, and consensus algorithm , 2020, JAMIA open.
[20] Mohammad Heidarinejad,et al. Architecting Smart City Digital Twins: Combined Semantic Model and Machine Learning Approach , 2020 .
[21] Seifedine Kadry,et al. Internet of things assisted public security management platform for urban transportation using hybridised cryptographic‐integrated steganography , 2020, IET Intelligent Transport Systems.
[22] S. H. Alsamhi,et al. Convergence of Machine Learning and Robotics Communication in Collaborative Assembly: Mobility, Connectivity and Future Perspectives , 2020, J. Intell. Robotic Syst..
[23] Bin He,et al. Digital twin-based sustainable intelligent manufacturing: a review , 2020, Advances in Manufacturing.
[24] Feng Xiang,et al. Research on Key Technologies of Logistics Information Traceability Model Based on Consortium Chain , 2020, IEEE Access.
[25] Khaled Salah,et al. A Blockchain-Based Approach for the Creation of Digital Twins , 2020, IEEE Access.
[26] Kevin I-Kai Wang,et al. Digital Twin-driven smart manufacturing: Connotation, reference model, applications and research issues , 2020, Robotics Comput. Integr. Manuf..
[27] Karen E. Willcox,et al. Toward predictive digital twins via component-based reduced-order models and interpretable machine learning , 2020 .
[28] Qiang Liu,et al. ManuChain: Combining Permissioned Blockchain With a Holistic Optimization Model as Bi-Level Intelligence for Smart Manufacturing , 2020, IEEE Transactions on Systems, Man, and Cybernetics: Systems.
[29] Tim Verbelen,et al. A Survey on Distributed Machine Learning , 2019, ACM Comput. Surv..
[30] Halim Yanikomeroglu,et al. Liberalization of Digital Twins of IoT-Enabled Home Appliances via Blockchains and Absolute Ownership Rights , 2019, IEEE Communications Magazine.
[31] Ou Ma,et al. Survey on artificial intelligence based techniques for emerging robotic communication , 2019, Telecommun. Syst..
[32] Bulent Tavli,et al. Social Internet of Digital Twins via Distributed Ledger Technologies: Application of Predictive Maintenance , 2019, 2019 27th Telecommunications Forum (TELFOR).
[33] Zhong Fan,et al. Digital Twin: Enabling Technologies, Challenges and Open Research , 2019, IEEE Access.
[34] Andrew Y. C. Nee,et al. Enabling technologies and tools for digital twin , 2019 .
[35] Pingyu Jiang,et al. Makerchain: A blockchain with chemical signature for self-organizing process in social manufacturing , 2019, Journal of Cleaner Production.
[36] Sergiy Obushnyi,et al. Blockchain as a Transaction Protocol for Guaranteed Transfer of Values in Cluster Economic Systems with Digital Twins , 2019, 2019 IEEE International Scientific-Practical Conference Problems of Infocommunications, Science and Technology (PIC S&T).
[37] S. H. Alsamhi,et al. Survey on Collaborative Smart Drones and Internet of Things for Improving Smartness of Smart Cities , 2019, IEEE Access.
[38] Günther Pernul,et al. A Distributed Ledger Approach to Digital Twin Secure Data Sharing , 2019, DBSec.
[39] Tiziana Catarci,et al. A Conceptual Architecture and Model for Smart Manufacturing Relying on Service-Based Digital Twins , 2019, 2019 IEEE International Conference on Web Services (ICWS).
[40] Carolina Del-Valle-Soto,et al. Decentralization: The Failed Promise of Cryptocurrencies , 2019, IT Professional.
[41] Robert X. Gao,et al. Digital Twin for rotating machinery fault diagnosis in smart manufacturing , 2018, Int. J. Prod. Res..
[42] Priyan Malarvizhi Kumar,et al. Enhancing the security and performance of nodes in Internet of Vehicles , 2018, Concurr. Comput. Pract. Exp..
[43] Feras Naser,et al. REVIEW : THE POTENTIAL USE OF BLOCKCHAIN TECHNOLOGY IN RAILWAY APPLICATIONS : AN INTRODUCTION OF A MOBILITY AND SPEECH RECOGNITION PROTOTYPE , 2018, 2018 IEEE International Conference on Big Data (Big Data).
[44] Muhammad Murtaza Yousaf,et al. Consensus Algorithms in Blockchain: Comparative Analysis, Challenges and Opportunities , 2018, 2018 12th International Conference on Open Source Systems and Technologies (ICOSST).
[45] George Chryssolouris,et al. The digital twin implementation for linking the virtual representation of human-based production tasks to their physical counterpart in the factory-floor , 2018, Int. J. Comput. Integr. Manuf..
[46] T. Andreassen,et al. Business model innovation and value-creation: the triadic way , 2018, Journal of Service Management.
[47] Gaoqi LIANG,et al. Blockchain: a secure, decentralized, trusted cyber infrastructure solution for future energy systems , 2018, Journal of Modern Power Systems and Clean Energy.
[48] Andrew Kusiak,et al. Data-driven smart manufacturing , 2018, Journal of Manufacturing Systems.
[49] Mark de Reuver,et al. The digital platform: a research agenda , 2018, J. Inf. Technol..
[50] Nezih Mrad,et al. The role of data fusion in predictive maintenance using digital twin , 2018 .
[51] Hergen Pargmann,et al. Intelligent big data processing for wind farm monitoring and analysis based on cloud-technologies and digital twins: A quantitative approach , 2018, 2018 IEEE 3rd International Conference on Cloud Computing and Big Data Analysis (ICCCBDA).
[52] Dimitris Mourtzis,et al. A cloud-based cyber-physical system for adaptive shop-floor scheduling and condition-based maintenance , 2018 .
[53] Marco Sepulveda,et al. A Review and Methodology Development for Remaining Useful Life Prediction of Offshore Fixed and Floating Wind turbine Power Converter with Digital Twin Technology Perspective , 2018, 2018 2nd International Conference on Green Energy and Applications (ICGEA).
[54] Randy A. Freeman,et al. Distributed Fault Detection and Accommodation in Dynamic Average Consensus , 2018, 2018 Annual American Control Conference (ACC).
[55] Marc Priggemeyer,et al. Experimentable Digital Twins—Streamlining Simulation-Based Systems Engineering for Industry 4.0 , 2018, IEEE Transactions on Industrial Informatics.
[56] Fei Tao,et al. Digital Twin and Big Data Towards Smart Manufacturing and Industry 4.0: 360 Degree Comparison , 2018, IEEE Access.
[57] Ray Y. Zhong,et al. Intelligent Manufacturing in the Context of Industry 4.0: A Review , 2017 .
[58] Vincent Gramoli,et al. From blockchain consensus back to Byzantine consensus , 2017, Future Gener. Comput. Syst..
[59] Paolo Pedrazzoli,et al. A Networked Production System to Implement Virtual Enterprise and Product Lifecycle Information Loops , 2017 .
[60] Jaime A. Camelio,et al. An approach to cyber-physical vulnerability assessment for intelligent manufacturing systems , 2017 .
[61] Esko Hakanen,et al. Using Platforms to Pursue Strategic Opportunities in Service-Driven Manufacturing , 2016 .
[62] Fiona Charnley,et al. Distributed manufacturing: scope, challenges and opportunities , 2016 .
[63] Buyue Qian,et al. Improving rail network velocity: A machine learning approach to predictive maintenance , 2014 .
[64] Kesheng Wang,et al. SCADA data based condition monitoring of wind turbines , 2014 .
[65] Theodore Tryfonas,et al. A Distributed Consensus Algorithm for Decision Making in Service-Oriented Internet of Things , 2014, IEEE Transactions on Industrial Informatics.
[66] Hager Saleh,et al. Real-Time System Prediction for Heart Rate Using Deep Learning and Stream Processing Platforms , 2021, Complex..
[67] John G. Breslin,et al. Big data and stream processing platforms for Industry 4.0 requirements mapping for a predictive maintenance use case , 2020 .
[68] B. Feng,et al. Agent-Based Digital Twins (ABM-Dt) In Synchromodal Transport and Logistics: the Fusion of Virtual and Pysical Spaces , 2020, 2020 Winter Simulation Conference (WSC).
[69] S. Alsamhi,et al. Blockchain for Multi-Robot Collaboration to Combat COVID-19 and Future Pandemics , 2020, ArXiv.
[70] Yan Yan,et al. Blockchain-based data management for digital twin of product , 2020 .
[71] Mark Goh,et al. Digital Twinning for Productivity Improvement Opportunities with Robotic Process Automation: Case of Greenfield Hospital , 2020 .
[72] Akshita Gupta,et al. Collaboration of UAV and HetNet for better QoS: a comparative study , 2020, International Journal of Vehicle Information and Communication Systems.
[73] Janusz Szpytko,et al. Digital Twins Model for Cranes Operating in Container Terminal , 2019, IFAC-PapersOnLine.
[74] K. Georgoulias,et al. Methodology for enabling Digital Twin using advanced physics-based modelling in predictive maintenance , 2019, Procedia CIRP.
[75] Ou Ma,et al. Collaboration of Drone and Internet of Public Safety Things in Smart Cities: An Overview of QoS and Network Performance Optimization , 2019, Drones.
[76] Alois Knoll,et al. Modular Fault Ascription and Corrective Maintenance Using a Digital Twin , 2018 .
[77] Jérôme Maloberti,et al. Design of a Scalable Distributed Ledger , 2018 .
[78] Mohamed Mbarki,et al. Toward Leveraging Smart Logistics Collaboration with a Multi-Agent System Based Solution , 2017, ANT/SEIT.
[79] Diego Galar,et al. Maintenance 4.0 in Railway Transportation Industry , 2016, WCE 2016.
[80] Waguih ElMaraghy,et al. Architecture Framework for Manufacturing System Design , 2014 .