Survey on digital twins for Internet of Vehicles: Fundamentals, challenges, and opportunities

Jiajie Guo , Muhammad Bilal , Yuying Qiu , Cheng Qian , Xiaolong Xu , Kim-Kwang Raymond Choo

›› 2024, Vol. 10 ›› Issue (2) : 237 -247.

PDF
›› 2024, Vol. 10 ›› Issue (2) :237 -247. DOI: 10.1016/j.dcan.2022.05.023
Research article
research-article

Survey on digital twins for Internet of Vehicles: Fundamentals, challenges, and opportunities

Author information +
History +
PDF

Abstract

As autonomous vehicles and the other supporting infrastructures (e.g., smart cities and intelligent transportation systems) become more commonplace, the Internet of Vehicles (IoV) is getting increasingly prevalent. There have been attempts to utilize Digital Twins (DTs) to facilitate the design, evaluation, and deployment of IoV-based systems, for example by supporting high-fidelity modeling, real-time monitoring, and advanced predictive capabilities. However, the literature review undertaken in this paper suggests that integrating DTs into IoV-based system design and deployment remains an understudied topic. In addition, this paper explains how DTs can benefit IoV system designers and implementers, as well as describes several challenges and opportunities for future researchers.

Keywords

Internet of vehicles / Digital twin / Simulation / Traffic systems

Cite this article

Download citation ▾
Jiajie Guo, Muhammad Bilal, Yuying Qiu, Cheng Qian, Xiaolong Xu, Kim-Kwang Raymond Choo. Survey on digital twins for Internet of Vehicles: Fundamentals, challenges, and opportunities. , 2024, 10(2): 237-247 DOI:10.1016/j.dcan.2022.05.023

登录浏览全文

4963

注册一个新账户 忘记密码

References

[1]

K.M. Alam, M. Saini, A. El Saddik, Toward social internet of vehicles: concept, architecture, and applications, IEEE Access 3 (2015) 343-357.

[2]

L. Atzori, A. Iera, G. Morabito, The internet of things: a survey, Comput. Network. 54 (15) (2010) 2787-2805.

[3]

F.C. Yang, S.G. Wang, J.L. Li, Z.H. Liu, Q.B. Sun, An overview of internet of vehicles, China Commun. 11 (10) (2014) 1-15.

[4]

O. Kaiwartya, A.H. Abdullah, Y. Cao, A. Altameem, M. Prasad, C.T. Lin, X.L. Liu, Internet of vehicles : motivation, layered architecture, network model, challenges, and future aspects, IEEE Access 4 (2016) 5356-5373.

[5]

B. Shen, X. Xu, L. Qi, X. Zhang, G. Srivastava, Dynamic server placement in edge computing toward internet of vehicles, Comput. Commun. 178 (2021) 114-123.

[6]

M. Batty, Digital twins, Environ. Plan. B 45 (5) (2018) 817-820.

[7]

R. Minerva, G.M. Lee, N. Crespi, Digital twin in the iot context: a survey on technical features, scenarios, and architectural models, Proc. IEEE 108 (10) (2020) 1785-1824.

[8]

L.I. Jing-Lin, Z.H. Liu, F. Y, Internet of vehicles: The framework and key technology, J. Beijing Univ. Posts Telecommun. 6 (2014) 95-100.

[9]

S. Halder, A. Ghosal, M. Conti, Secure over-the-air software updates in connected vehicles: a survey, Comput. Network. 178 (4) (2020) 107343. 1-107343.19.

[10]

S. Tuohy, M. Glavin, E. Jones, M. Trivedi, L. Kilmartin, Next generation wired intra-vehicle networks, a review, in: 2013 IEEE Intelligent Vehicles Symposium (IV), IEEE Intelligent Vehicles Symposium, 2013, pp. 777-782.

[11]

S. Tuohy, M. Glavin, C. Hughes, E. Jones, M. Trivedi, L. Kilmartin, Intra-vehicle networks: a review, IEEE Trans. Intell. Transport. Syst. 16 (2) (2015) 534-545.

[12]

J.D. Wang, J.J. Liu, N. Kato, Networking and communications in autonomous driving: a survey, IEEE Commun. Surv. Tutorials 21 (2) (2019) 1243-1274.

[13]

M. Chen, Y.W. Tian, G. Fortino, J. Zhang, I. Humar, Cognitive internet of vehicles, Comput. Commun. 120 (2018) 58-70.

[14]

H. Tian, X. Xu, T. Lin, Y. Cheng, C. Qian, L. Ren, M. Bilal, DIMA: Distributed Cooperative Microservice Caching for internet of things in edge computing by deep reinforcement learning, World Wide Web-Intern. Web Inform. Syst. 25 (5)(2022) 1769-1792.

[15]

T.L. Willke, P. Tientrakool, N.F. Maxemchuk, A survey of inter-vehicle communication protocols and their applications, IEEE Commun. Surv. Tutorials 11 (2) (2009) 3-20.

[16]

K. Bian, G. Zhang, L. Song, Toward secure crowd sensing in vehicle-to-everything networks, IEEE Network 32 (2) (2018) 126-131.

[17]

X. Xia, E. Hashemi, L. Xiong, A. Khajepour, N. Xu, Autonomous vehicles sideslip angle estimation: single antenna GNSS/IMU fusion with observability analysis, IEEE Internet Things J. 8 (19) (2021) 14845-14859.

[18]

H. Zhou, W. Xu, J. Chen, W. Wang, Evolutionary v2x technologies toward the internet of vehicles: challenges and opportunities, Proc. IEEE 108 (2) (2020) 308-323.

[19]

S.Z. Chen, J.L. Hu, Y. Shi, L. Zhao, Lte-v: a td-lte-based v2x solution for future vehicular network, IEEE Internet Things J. 3 (6) (2016) 997-1005.

[20]

E. Glaessgen, D. Stargel, The digital twin paradigm for future NASA and U. S. air force vehicles, in:53rd Structures, Structural Dynamics and Materials Conference: Special Session on the Digital Twin, 2012. https://doi.org/10.2514/6.2012-1818.

[21]

M. Shafto, M. Conroy, R. Doyle, E. Glaessgen, C. Kemp, J. Lemoigne, L. Wang, Draft Modeling, Simulation, Information technology & processing roadmap (Technology area 11), NASA, Washington, DC, 2010.

[22]

E.J. Tuegel, A.R. Ingraffea, T.G. Eason, S.M. Spottswood, Reengineering aircraft structural life prediction using a digital twin, Int. J. Aerospace Eng. (2011) 1687-5966.

[23]

J. Hochhalter, W.P. Leser, J. Newman, V.K. Gupta, V. Yamakov, S. Cornell, G. Heber. Willard, Coupling Damage-Sensing Particles to the Digitial Twin Concept, National Aeronautics and Space Administration, 2014. https://ntrs.nasa.gov/citations/20140006408. (Accessed 12 December 2020).

[24]

J. Ríos, J. Hernandez, M. Oliva, F. Mas, Product avatar as digital counterpart of a physical individual product: literature review and implications in an aircraft,in:22nd ISPE Inc. International Conference on Concurrent Engineering (CE2015), 2015, pp. 657-666.

[25]

R. Rosen, G. von Wichert, G. Lo, K.D. Bettenhausen, About the importance of autonomy and digital twins for the future of manufacturing, IFAC-PapersOnLine 48 (3) (2015) 567-572.

[26]

T. Gabor, L. Belzner, M. Kiermeier, M.T. Beck, A. Neitz, A simulation-based architecture for smart cyber-physical systems, in: 2016 IEEE International Conference on Autonomic Computing (ICAC), 2016, pp. 374-379.

[27]

S. Boschert, R.J.M.F. Rosen, Digital Twin—The Simulation Aspect, Mechatronic Futures:Challenges and Solutions for Mechatronic Systems and their Designers, Springer International Publishing, Cham, 2016.

[28]

E. Negri, L. Fumagalli, M. Macchi, A review of the roles of digital twin in cps-based production systems, Procedia Manuf. 11 (2017) 939-948.

[29]

F. Tao, M. Zhang, Digital twin shop-floor: a new shop-floor paradigm towards smart manufacturing, IEEE Access 5 (2017) 20418-20427.

[30]

J. Vachalek, L. Bartalsky, O. Rovny, D. Sismisova, M. Morhac, M. Loksik, The digital twin of an industrial production line within the industry 4.0 concept, in: 2017 21st International Conference on Process Control (PC), 2017 21st International Conference on Process Control, 2017, pp. 258-262.

[31]

I. Rojek, D. Mikolajewski, E. Dostatni, Digital twins in product lifecycle for sustainability in manufacturing and maintenance, Appl. Sci. Basel 11 (1) (2020) 1-19.

[32]

F. Tao, H. Zhan, A. Liu, A.Y.C. Nee, Digital twin in industry: state-of-the-art, IEEE Trans. Ind. Inf. 15 (4) (2019) 2405-2415.

[33]

F. Tao, Q. Qi, New it driven service-oriented smart manufacturing: framework and characteristics, IEEE Trans. Syst. Man Cybernet. Syst. 49 (1) (2019) 81-91.

[34]

Q.L. Qi, F. Tao,Digital twin and big data towards smart manufacturing and industry 4.0: 360 degree comparison, IEEE Access 6 (2018) 3585-3593.

[35]

F. Tao, J.F. Cheng, Q.L. Qi, M. Zhang, H. Zhang, F.Y. Sui, Digital twin-driven product design, manufacturing and service with big data, Int. J. Adv. Manuf. Technol. 94 (9-12) (2018) 3563-3576.

[36]

L.D. Xu, W. He, S. Li, Internet of things in industries: a survey, IEEE Trans. Ind. Inf. 10 (4) (2014) 2233-2243.

[37]

F. Alam, R. Mehmood, I. Katib, N.N. Albogami, A. Albeshri, Data fusion and iot for smart ubiquitous environments: a survey, IEEE Access 5 (2017) 9533-9554.

[38]

C.B. Zhuang, T. Miao, J.H. Liu, H. Xiong, The connotation of digital twin, and the construction and application method of shop-floor digital twin, Robot. Comput. Integr. Manuf. 68 (2021) 1-16.

[39]

K. Ding, F.T.S. Chan, X.D. Zhang, G.H. Zhou, F.Q. Zhang, Defining a digital twin-based cyber-physical production system for autonomous manufacturing in smart shop floors, Int. J. Prod. Res. 57 (20) (2019) 6315-6334.

[40]

F. Tao, Q.L. Qi, L.H. Wang, A.Y.C. Nee,Digital twins and cyber-physical systems toward smart manufacturing and industry 4.0: correlation and comparison, Engineering 5 (4) (2019) 653-661.

[41]

J. Cheng, H. Zhang, F. Tao, C.F. Juang, Dt-ii:digital twin enhanced industrial internet reference framework towards smart manufacturing, Robot. Comput. Integr. Manuf. 62 (2020) 101881.

[42]

V. Damjanovic-Behrendt, W. Behrendt, An open source approach to the design and implementation of digital twins for smart manufacturing, Int. J. Comput. Integrated Manuf. 32 (4-5) (2019) 366-384.

[43]

D.Q. Guo, R.Y. Zhong, P. Lin, Z.Y. Lyu, Y.M. Rong, G.Q. Huang, Digital twin-enabled graduation intelligent manufacturing system for fixed-position assembly islands, Robot. Comput. Integr. Manuf. 63 (2020) 101917.

[44]

R.B. Roy, D. Mishra, S.K. Pal, T. Chakravarty, S. Panda, M.G. Chandra, A. Pal, P. Misra, D. Chakravarty, S. Misra, Digital twin: current scenario and a case study on a manufacturing process, Int. J. Adv. Manuf. Technol. 107 (9-10) (2020) 3691-3714.

[45]

Y.L. Fang, C. Peng, P. Lou, Z.D. Zhou, J.M. Hu, J.W. Yan, Digital-twin-based job shop scheduling toward smart manufacturing, IEEE Trans. Ind. Inf. 15 (12) (2019) 6425-6435.

[46]

E. Negri, S. Berardi, L. Fumagalli, M. Macchi, Mes-integrated digital twin frameworks, J. Manuf. Syst. 56 (2020) 58-71.

[47]

K.T. Park, D.G. Lee, S.D. Noh, Operation procedures of a work-center-level digital twin for sustainable and smart manufacturing, Int. J. Precision Eng. Manuf. Green Technol. 7 (3) (2020) 791-814.

[48]

M. Zhang, Y. Zuo, F. Tao, Equipment energy consumption management in digital twin shop-floor: a framework and potential applications, in: 2018 IEEE 15th International Conference on Networking, Sensing and Control, IEEE, 2018, pp. 1-5.

[49]

W.C. Luo, T.L. Hu, Y.X. Ye, C.R. Zhang, Y.L. Wei, A hybrid predictive maintenance approach for cnc machine tool driven by digital twin, Robot. Comput. Integr. Manuf. 65 (2020) 101974.

[50]

F. Tao, M. Zhang, Y.S. Liu, A.Y.C. Nee, Digital twin driven prognostics and health management for complex equipment, CIRP Ann. - Manuf. Technol. 67 (1) (2018) 169-172.

[51]

K.Y.H. Lim, P. Zheng, C.H. Chen, A state-of-the-art survey of digital twin: techniques, engineering product lifecycle management and business innovation perspectives, J. Intell. Manuf. 31 (6) (2020) 1313-1337.

[52]

Y. Liu, Y.F. Zhang, S. Ren, M.Y. Yang, Y.T. Wang, D. Huisingh, How can smart technologies contribute to sustainable product lifecycle management? J. Clean. Prod. 249 (2020) 119423.

[53]

H. Laaki, Y. Miche, K. Tammi, Prototyping a digital twin for real time remote control over mobile networks: application of remote surgery, IEEE Access 7 (2019) 20325-20336.

[54]

C. Liu, P.Y. Jiang, W.L. Jiang, Web-based digital twin modeling and remote control of cyber-physical production systems, Robot. Comput. Integr. Manuf. 64 (2020) 101956.

[55]

Y.F. Tan, W.H. Yang, K. Yoshida, S. Takakuwa, Application of iot-aided simulation to manufacturing systems in cyber-physical system, Machines 7 (1) (2018) 4082-4083.

[56]

B.R. Barricelli, E. Casiraghi, J. Gliozzo, A. Petrini, S. Valtolina, Human digital twin for fitness management, IEEE Access 8 (2020) 26637-26664.

[57]

Y.M. Ge, Y. Wang, R.D. Yu, Q.W. Hang, Y.Q. Chen, Demo:research on test method of autonomous driving based on digital twin, in: 2019 IEEE Vehicular Networking Conference, IEEE, 2019, pp. 1-2.

[58]

J. Du, Q. Zhu, Y.M. Shi, Q. Wang, Y.Z. Lin, D. Zhao, Cognition digital twins for personalized information systems of smart cities: proof of concept, J. Manag. Eng. 36 (2) (2020) 04019052.

[59]

Q.C. Lu, A.K. Parlikad, P. Woodall, G.D. Ranasinghe, X. Xie, Z.L. Liang, E. Konstantinou, J. Heaton, J. Schooling, Developing a digital twin at building and city levels: case study of west cambridge campus, J. Manag. Eng. 36 (3) (2020) 05020004.

[60]

C. Kan, C.J. Anumba, Digital Twins as the Next Phase of Cyber-Physical Systems in Construction, Computing in Civil Engineering 2019: Data, Sensing, and Analytics, AMER SOC CIVIL ENGINEERS, 2019, pp. 256-264.

[61]

M.M. Rathore, S.A. Shah, D. Shukla, E. Bentafat, S. Bakiras, The role of ai, machine learning, and big data in digital twinning: a systematic literature review, challenges, and opportunities, IEEE Access 9 (2021) 32030-32052.

[62]

J.F. Uhlenkamp, K. Hribernik, S. Wellsandt, K.D. Thoben, IEEE, Digital twin applications: a first systemization of their dimensions, in: 2019 IEEE International Conference on Engineering, Technology and Innovation, IEEE, 2019, pp. 1-8.

[63]

M. Jacoby, T. Uslander, Digital twin and internet of things-current standards landscape, Appl. Sci. 10 (18) (2020) 6519.

[64]

O. Chukhno, N. Chukhno, G. Araniti, C. Campolo, A. Iera, A. Molinaro, Optimal placement of social digital twins in edge iot networks, Sensors 20 (21) (2020) 6181.

[65]

A.R. Al-Ali, R. Gupta, T.Z. Batool, T. Landolsi, F. Aloul, A. Al Nabulsi, Digital twin conceptual model within the context of internet of things, Future Intern. 12 (10)(2020) 163.

[66]

W. Duan, J.Y. Gu, M.W. Wen, G.A. Zhang, Y.C. Ji, S. Mumtaz,Emerging technologies for 5g-iov networks: applications, trends and opportunities, IEEE Network 34 (5) (2020) 283-289.

[67]

W.C. Xu, H.B. Zhou, N. Cheng, F. Lyu, W.S. Shi, J.Y. Chen, X.M. Shen, Internet of vehicles in big data era, IEEE-Caa J. Automatica Sinica 5 (1) (2018) 19-35.

[68]

H. Dai, X. Wu, G. Chen, L. Xu, S. Lin, Minimizing the number of mobile chargers for large-scale wireless rechargeable sensor networks, Comput. Commun. 46 (2014) 54-65.

[69]

H. Dai, G. Chen, C. Wang, S. Wang, X. Wu, F. Wu, Quality of energy provisioning for wireless power transfer, IEEE Trans. Parallel Distr. Syst. 26 (2) (2015) 527-537.

[70]

N. Lu, N. Cheng, N. Zhang, X.M. Shen, J.W. Mark, Connected vehicles: solutions and challenges, IEEE Internet Things J. 1 (4) (2014) 289-299.

[71]

X. Xia, F. Chen, Q. He, G. Cui, J. Grundy, M. Abdelrazek, X. Xu, H. Jin, Data, user and power allocations for caching in multi-access edge computing, IEEE Trans. Parallel Distr. Syst. 33 (5) (2021) 1144-1155.

[72]

X. Xu, B. Shen, S. Ding, G. Srivastava, M. Bilal, M. Khosravi, V. Menon, A. Jan, M. Wang, Service offloading with deep q-network for digital twinning empowered internet of vehicles in edge computing, IEEE Trans. Ind. Inf. 18 (2022) 1414-1423.

[73]

C. Dai, X.G. Liu, W.T. Chen, C.F. Lai, A low-latency object detection algorithm for the edge devices of iov systems, IEEE Trans. Veh. Technol. 69 (10) (2020) 11169-11178.

[74]

H.L. Yang, X.Z. Xie, M. Kadoch, Intelligent resource management based on reinforcement learning for ultra-reliable and low-latency iov communication networks, IEEE Trans. Veh. Technol. 68 (5) (2019) 4157-4169.

[75]

E. Tuegel, The airframe digital twin: some challenges to realization,in:53rd AIAA/ASME/ASCE/AHS/ASC Structures, Structural Dynamics and Materials Conference, AIAA, 2013, pp. 1-8.

[76]

R. Song, Y.C. Fang, Vehicle state estimation for ins/gps aided by sensors fusion and sckf-based algorithm, Mech. Syst. Signal Process. 150 (2021) 13.

[77]

J. Zhang, K.B. Letaief, Mobile edge intelligence and computing for the internet of vehicles, Proc. IEEE 108 (2) (2020) 246-261.

[78]

X. Xu, Z. Fang, J. Zhang, Q. He, D. Yu, L. Qi, W. Dou, Edge content caching with deep spatiotemporal residual network for iov in smart city, ACM Trans. Sens. Netw. 17 (3) (2021) 29.

[79]

K. Abboud, H.A. Omar, W.H. Zhuang, Interworking of dsrc and cellular network technologies for v2x communications: a survey, IEEE Trans. Veh. Technol. 65 (12)(2016) 9457-9470.

[80]

C.R. Storck, F. Duarte-Figueiredo, A 5g v2x ecosystem providing internet of vehicles, Sensors 19 (3) (2019) 550.

[81]

J. Dong, D.F. Zhuang, Y.H. Huang, J.Y. Fu, Advances in multi-sensor data fusion: algorithms and applications, Sensors 9 (10) (2009) 7771-7784.

[82]

R. Atat, L.J. Liu, J.S. Wu, G.Y. Li, C.X. Ye, Y. Yi, Big data meet cyber-physical systems: a panoramic survey, IEEE Access 6 (2018) 73603-73636.

[83]

Y.Z. Ni, L. Cai, J.P. He, A. Vinel, Y. Li, H. Mosavat-Jahromi, J.P. Pan, Toward reliable and scalable internet of vehicles: performance analysis and resource management, Proc. IEEE 108 (2) (2020) 324-340.

[84]

E. Benalia, S. Bitam, A. Mellouk, Data dissemination for internet of vehicle based on 5g communications: a survey, Trans. Emerg. Telecommun. Technol. 31 (5)(2020) e3881.

[85]

S.H. Wan, X. Li, Y. Xue, W.M. Lin, X.L. Xu, Efficient computation offloading for internet of vehicles in edge computing-assisted 5g networks, J. Supercomput. 76 (4) (2020) 2518-2547.

[86]

J. Mi, K. Wang, P. Li, S. Guo, Y. Sun, Software-defined green 5g system for big data, IEEE Commun. Mag. 56 (11) (2018) 116-123.

[87]

M. Giordani, M. Mezzavilla, C.N. Barati, S. Rangan, M. Zorzi, IEEE, Comparative analysis of initial access techniques in 5g mmwave cellular networks, in: 2016 Annual Conference on Information Science and Systems, 2016, pp. 268-273.

[88]

J.H. Zhao, Q.P. Li, Y. Gong, K. Zhang, Computation offloading and resource allocation for cloud assisted mobile edge computing in vehicular networks, IEEE Trans. Veh. Technol. 68 (8) (2019) 7944-7956.

[89]

X.L. Xu, R.H. Gu, F. Dai, L.Y. Qi, S.H. Wan, Multi-objective computation offloading for internet of vehicles in cloud-edge computing, Wireless Network 26 (3) (2020) 1611-1629.

[90]

X. Xu, Z. Fang, L. Qi, X. Zhang, Q. He, X. Zhou, TripRes: traffic flow prediction driven resource reservation for multimedia IoV with edge computing, ACM Trans. Multimed. Comput. Commun. Appl. 17 (2) (2021) 41. 1-41.21.

[91]

C.M. Chen, B. Xiang, Y.N. Liu, K.H. Wang, A secure authentication protocol for internet of vehicles, IEEE Access 7 (2019) 12047-12057.

[92]

J.T. Isaac, S. Zeadally, J.S. Camara, Security attacks and solutions for vehicular ad hoc networks, IET Commun. 4 (7) (2010) 894-903.

[93]

H. Liu, Y. Zhang, T. Yang, Blockchain-enabled security in electric vehicles cloud and edge computing, IEEE Network 32 (3) (2018) 78-83.

[94]

M. Wazid, P. Bagga, A.K. Das, S. Shetty, J.J.P.C. Rodrigues, Y. Park, Akm-iov: authenticated key management protocol in fog computing-based internet of vehicles deployment, IEEE Internet Things J. 6 (5) (2019) 8804-8817.

[95]

S. Sharma, K.K. Ghanshala, S. Mohan, A security system using deep learning approach for internet of vehicles (iov), in: 2018 9th IEEE Annual Ubiquitous Computing, Electronics & Mobile Communication Conference, IEEE, 2018, pp. 1-5.

[96]

S. Sharma, B. Kaushik, A survey on internet of vehicles: applications, security issues & solutions, Vehicular Commun. 20 (2019) 100182.

[97]

A. Bhargava, S. Verma, B.K. Chaurasia, G.S. Tomar, Computational trust model for internet of vehicles, in: 2017 Conference on Information and Communication Technology (CICT), 2017 Conference on Information and Communication Technology, IEEE, 2017, p. 5.

[98]

H.F. Zhu, X.Y. Wang, C.M. Chen, S. Kumari, Two novel semi-quantum-reflection protocols applied in connected vehicle systems with blockchain, Comput. Electr. Eng. 86 (2020) 106714.

[99]

Q.K. Zhang, Y.J. Li, R.F. Wang, J.Y. Li, Y. Gan, Y.H. Zhang, X. Yu, Blockchain-based asymmetric group key agreement protocol for internet of vehicles, Comput. Electr. Eng. 86 (2020) 106713.

[100]

J. Liu, G. Zhang, R. Sun, X. Du, M. Guizani,A blockchain-based conditional privacy-preserving traffic data sharing in cloud, in: ICC 2020-2020 IEEE International Conference on Communications (ICC), IEEE, 2020, pp. 1-6.

[101]

S. Bao, A. Lei, H. Cruickshank, Z. Sun, P. Asuquo, W. Hathal, A pseudonym certificate management scheme based on blockchain for internet of vehicles, in: 2019 IEEE Intl Conf on Dependable, Autonomic and Secure Computing, Intl Conf on Pervasive Intelligence and Computing, Intl Conf on Cloud and Big Data Computing, Intl Conf on Cyber Science and Technology Congress (DASC/PiCom/CBDCom/CyberSciTech), IEEE Computer Soc, 2019, pp. 28-35.

[102]

X. Xu, Q. Huang, H. Zhu, S. Sharma, X. Zhang, L. Qi, M.Z.A. Bhuiyan, Secure service offloading for Internet of Vehicles in SDN-enabled mobile edge computing, IEEE Trans. Intell. Transport. Syst. 22 (6) (2021) 3720-3729.

[103]

G. Raja, Y. Manaswini, G.D. Vivekanandan, H. Sampath, K. Dev, A.K. Bashir,Ai-powered blockchain - a decentralized secure multiparty computation protocol for iov, in: IEEE Infocom 2020 - IEEE Conference on Computer Communications Workshops, IEEE, 2020, pp. 865-870.

[104]

Y.B. Liu, Y.H. Wang, G.H. Chang, Efficient privacy-preserving dual authentication and key agreement scheme for secure v2v communications in an iov paradigm, IEEE Trans. Intell. Transport. Syst. 18 (10) (2017) 2740-2749.

[105]

L.S. Nie, Z.L. Ning, X.J. Wang, X.P. Hu, J. Cheng, Y.K. Li, Data-driven intrusion detection for intelligent internet of vehicles: a deep convolutional neural network-based method, IEEE Trans. Network Sci. Eng. 7 (4) (2020) 2219-2230.

[106]

D.K. Kwon, S.J. Yu, J.Y. Lee, S.H. Son, Y.H. Park, Wsn-slap: secure and lightweight mutual authentication protocol for wireless sensor networks, Sensors 21 (3) (2020) 936.

[107]

J. Cui, W.Y. Xu, H. Zhong, J. Zhang, Y. Xu, L. Liu, Privacy-preserving authentication using a double pseudonym for internet of vehicles, Sensors 18 (5)(2018) 1435.

[108]

S. Kumar, K. Singh, S. Kumar, M. Kaiwartya, Y. Cao, H. Zhou, Delimitated anti jammer scheme for internet of vehicle: machine learning based security approach, IEEE Access 7 (2019) 113311-113323.

[109]

Z.B. Zheng, S.A. Xie, H.N. Dai, X.P. Chen, H.M. Wang, An Overview of Blockchain Technology: Architecture, Consensus and Future Trends, 2017 IEEE 6th International Congress on Big Data, IEEE, 2017, pp. 557-564.

[110]

A. Braga, R.K. Logan, The emperor of strong ai has no clothes: limits to artificial intelligence, Information 8 (4) (2017) 156.

PDF

265

Accesses

0

Citation

Detail

Sections
Recommended

/