Page 32 - ITU Journal Future and evolving technologies – Volume 2 (2021), Issue 2
P. 32

ITU Journal on Future and Evolving Technologies, Volume 2 (2021), Issue 2




          [20] A. Gani, G. M. Nayeem, M. Shiraz, M. Sookhak,        of the 34th ACM/SIGAPP Symposium on Applied Com‑
              M. Whaiduzzaman, and S. Khan, “A review on inter‑     puting, pp. 1996–2000, 2019.
              working and mobility techniques for seamless con‑
              nectivity in mobile cloud computing,” Journal of Net‑  [32] A. Kapsalis, P. Kasnesis, I. S. Venieris, D. I. Kaklamani,
              work and Computer Applications, vol. 43, pp. 84–102,  and C. Z. Patrikakis, “A cooperative fog approach for
              2014.                                                 effective workload balancing,” IEEE Cloud Comput‑
                                                                    ing, vol. 4, no. 2, pp. 36–45, 2017.
          [21] T. Shon, J. Cho, K. Han, and H. Choi, “Toward ad‑
              vanced mobile cloud computing for the internet of  [33] M. Sookhak, F. R. Yu, Y. He, H. Talebian, N. Sohrabi
              things: Current issues and future direction,” Mobile  Safa, N. Zhao, M. K. Khan, and N. Kumar, “Fog vehic‑
              Networks and Applications, vol. 19, no. 3, pp. 404–   ular computing: Augmentation of fog computing us‑
              413, 2014.                                            ing vehicular cloud computing,” IEEE Vehicular Tech‑
                                                                    nology Magazine, vol. 12, no. 3, pp. 55–64, 2017.
          [22] F. Rebecchi, M. D. De Amorim, V. Conan, A. Passarella,
              R. Bruno, and M. Conti, “Data of loading techniques  [34] R. Bruschi, F. Davoli, P. Lago, A. Lombardo, C. Lom‑
              in cellular networks: A survey,” IEEE Communica‑      bardo, C. Rametta, and G. Schembra, “An sdn/nfv
              tions Surveys & Tutorials, vol. 17, no. 2, pp. 580–603,  platform for personal cloud services,” IEEE Transac‑
              2014.                                                 tions on Network and Service Management, vol. 14,
                                                                    no. 4, pp. 1143–1156, 2017.
          [23] E. Ahmed, A. Gani, M. K. Khan, R. Buyya, and S. U.
              Khan, “Seamless application execution in mobile  [35] R. Bruschi, F.Davoli, P. Lago, and J. F.Pajo, “Movewith
              cloud computing: Motivation, taxonomy, and open       me: Scalably keeping virtual objects close to users
              challenges,” Journal of Network and Computer Appli‑   on the move,” in 2018 IEEE International Conference
              cations, vol. 52, pp. 154–172, 2015.                  on Communications (ICC), pp. 1–6, 2018.
          [24] M. Chiang and T. Zhang, “Fog and iot: An overview of  [36] J. Santa, J. Ortiz, P. J. Fernandez, M. Luis, C. Gomes,
              research opportunities,” IEEE Internet of things jour‑  J. Oliveira, D. Gomes, R. Sanchez‑Iborra, S. Sargento,
              nal, vol. 3, no. 6, pp. 854–864, 2016.                and A. F. Skarmeta, “Migrate: Mobile device virtu‑
                                                                    alisation through state transfer,” IEEE Access, vol. 8,
          [25] Y. Mao, C. You, J. Zhang, K. Huang, and K. B. Letaief,  pp. 25848–25862, 2020.
              “A survey on mobile edge computing: The commu‑
              nication perspective,” IEEE Communications Surveys  [37] S. Wang, Y. Zhao, J. Xu, J. Yuan, and C.‑H. Hsu, “Edge
              & Tutorials, vol. 19, no. 4, pp. 2322–2358, 2017.     server placement in mobile edge computing,” Jour‑
                                                                    nal of Parallel and Distributed Computing, vol. 127,
          [26] K. Akher i, M. Gerndt, and H. Harroud, “Mobile       pp. 160–168, 2019.
              cloud computing for computation of loading: Issues
              and challenges,” Applied computing and informatics,  [38] D. Lee, H. Lee, D. Park, and Y.‑S. Jeong, “Proxy based
              vol. 14, no. 1, pp. 1–16, 2018.                       seamless connection management method in mo‑
                                                                    bile cloud computing,” Cluster computing, vol. 16,
          [27] A. Shakarami, M. Ghobaei‑Arani, M. Masdari, and
              M. Hosseinzadeh, “A survey on the computation of‑     no. 4, pp. 733–744, 2013.
               loading approaches in mobile edge/cloud comput‑  [39] Y. Guo, S. Wang, A. Zhou, J. Xu, J. Yuan, and C.‑H. Hsu,
              ing environment: a stochastic‑based perspective,”     “User allocation‑aware edge cloud placement in mo‑
              Journal of Grid Computing, pp. 1–33, 2020.            bile edge computing,” Software: Practice and Experi‑
          [28] K. Wan, D. Tuninetti, M. Ji, and G. Caire, “A novel  ence, vol. 50, no. 5, pp. 489–502, 2020.
              cache‑aided fog‑ran architecture,” in 2019 IEEE In‑  [40] H.‑J. Jeong, C. H. Shin, K. Y. Shin, H.‑J. Lee, and S.‑
              ternationalSymposiumonInformationTheory(ISIT),        M. Moon, “Seamless of loading of web app compu‑
              pp. 2977–2981, IEEE, 2019.
                                                                    tations from mobile device to edge clouds via html5
          [29] S. Zhang, P. He, K. Suto, P. Yang, L. Zhao, and X. Shen,  web worker migration,” in Proceedings of the ACM
              “Cooperative edge caching in user‑centric clustered   Symposium on Cloud Computing, pp. 38–49, 2019.
              mobile networks,” IEEE Transactions on Mobile Com‑  [41] Q. D. La, M. V. Ngo, T. Q. Dinh, T. Q. Quek, and H. Shin,
              puting, vol. 17, no. 8, pp. 1791–1805, 2017.
                                                                    “Enabling intelligence in fog computing to achieve
          [30] T. H. Luan, L. Gao, Z. Li, Y. Xiang, G. Wei, and L. Sun,  energy and latency reduction,” Digital Communica‑
              “Fog computing: Focusing on mobile users at the       tions and Networks, vol. 5, no. 1, pp. 3–9, 2019.
              edge,” arXiv preprint arXiv:1502.01815, 2015.
                                                               [42] A. Erfan Eshratifar, A. Esmaili, and M. Pedram, “Bot‑
          [31] M. R. Palattella, R. Soua, A. Khelil, and T. Engel, “Fog  tlenet: A deep learning architecture for intelligent
              computing as the key for seamless connectivity han‑   mobile cloud computing services,” arXiv e‑prints,
              dover in future vehicular networks,” in Proceedings   pp. arXiv–1902, 2019.





          18                                 © International Telecommunication Union, 2021
   27   28   29   30   31   32   33   34   35   36   37