Privacy-Aware Data Offloading for Mobile Devices in Edge Computing

To fulfill peoples requirements for low latency and strong computing power in mobile devices, edge computing emerges as a paradigm for realizing service provisioning in the edge of mobile cloud near the activity area of the mobile subscribers. Despite numerous advantages of edge computing, there is still a risk of leaking private user data, including identity information, address, etc., during the process of data offloading from mobile devices to edge nodes, which threatens personal and property security potentially. Therefore, it is of great importance of prohibiting privacy leakage for data offloading in edge computing. In repose to this requirement, a privacy-aware data offloading method (PDO) in edge computing is proposed in this paper. Technically, the privacy of the data offloading in edge computing is analyzed in a formalized way. Then, an improved of strength pareto evolutionary algorithm (SPEA2) is employed to realize joint optimization of the average time of transmission and the privacy entropy. Finally, experimental evaluations are conducted to verify reliability and efficiency of PDO.

[1]  Xuyun Zhang,et al.  An edge computing-enabled computation offloading method with privacy preservation for internet of connected vehicles , 2019, Future Gener. Comput. Syst..

[2]  Khaled Ben Letaief,et al.  Dynamic Computation Offloading for Mobile-Edge Computing With Energy Harvesting Devices , 2016, IEEE Journal on Selected Areas in Communications.

[3]  Jie Zhang,et al.  Hybrid computation offloading for smart home automation in mobile cloud computing , 2018, Personal and Ubiquitous Computing.

[4]  Xiaojiang Du,et al.  Preserving Location Privacy in Mobile Edge Computing , 2018, ICC 2019 - 2019 IEEE International Conference on Communications (ICC).

[5]  Honggang Zhang,et al.  Analysis of Multiple Clients’ Behaviors in Edge Computing Environment , 2018, IEEE Transactions on Vehicular Technology.

[6]  Khaled Ben Letaief,et al.  Delay-optimal computation task scheduling for mobile-edge computing systems , 2016, 2016 IEEE International Symposium on Information Theory (ISIT).

[7]  Xuyun Zhang,et al.  EnReal: An Energy-Aware Resource Allocation Method for Scientific Workflow Executions in Cloud Environment , 2016, IEEE Transactions on Cloud Computing.

[8]  Lei Ren,et al.  Multi-scale Dense Gate Recurrent Unit Networks for bearing remaining useful life prediction , 2019, Future Gener. Comput. Syst..

[9]  Tao Huang,et al.  An energy-aware computation offloading method for smart edge computing in wireless metropolitan area networks , 2019, J. Netw. Comput. Appl..

[10]  Laurence T. Yang,et al.  A Cloud-Edge Computing Framework for Cyber-Physical-Social Services , 2017, IEEE Communications Magazine.

[11]  Laurence T. Yang,et al.  A Tensor-Based Big Service Framework for Enhanced Living Environments , 2016, IEEE Cloud Computing.

[12]  Mahadev Satyanarayanan,et al.  Towards wearable cognitive assistance , 2014, MobiSys.

[13]  Rodrigo Roman,et al.  Mobile Edge Computing, Fog et al.: A Survey and Analysis of Security Threats and Challenges , 2016, Future Gener. Comput. Syst..

[14]  Dario Pompili,et al.  Deep Learning with Edge Computing for Localization of Epileptogenicity Using Multimodal rs-fMRI and EEG Big Data , 2017, 2017 IEEE International Conference on Autonomic Computing (ICAC).

[15]  Dario Pompili,et al.  Collaborative Mobile Edge Computing in 5G Networks: New Paradigms, Scenarios, and Challenges , 2016, IEEE Communications Magazine.

[16]  Xuyun Zhang,et al.  A computation offloading method over big data for IoT-enabled cloud-edge computing , 2019, Future Gener. Comput. Syst..