Blockchain-Empowered Digital Twins Collaboration: Smart Transportation Use Case

Digital twins (DTs) is a promising technology in the revolution of the industry and essential for Industry 4.0. DTs play a vital role in improving distributed manufacturing, providing up-to-date operational data representation of physical assets, supporting decision-making, and avoiding the potential risks in distributed manufacturing systems. Furthermore, DTs need to collaborate within distributed manufacturing systems to predict the risks and reach consensus-based decision-making. However, DTs collaboration suffers from single failure due to attack and connection in a centralized manner, data interoperability, authentication, and scalability. To overcome the above challenges, we have discussed the major high-level requirements for the DTs collaboration. Then, we have proposed a conceptual framework to fulfill the DTs collaboration requirements by using the combination of blockchain, predictive analysis techniques, and DTs technologies. The proposed framework aims to empower more intelligence DTs based on blockchain technology. In particular, we propose a concrete ledger-based collaborative DTs framework that focuses on real-time operational data analytics and distributed consensus algorithms. Furthermore, we describe how the conceptual framework can be applied using smart transportation system use cases, i.e., smart logistics and railway predictive maintenance. Finally, we highlighted the future direction to guide interested researchers in this interesting area.

[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 .