Physical-Layer Assisted Privacy-Preserving Offloading in Mobile-Edge Computing

IEEE International Conference on Communications(2019)

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摘要
As compared to the conventional cloud computing, the wireless offloading feature of the recently advocated mobile-edge computing (MEC) imposes a new risk of disclosing possibly private and sensitive user data to eavesdroppers. Physical-layer security approaches built on information theoretic methods are believed to provide a stronger notion of privacy than cryptography, and therefore, may be more suitable for defending eavesdropping in MEC. Nonetheless, incorporating a physical-layer security technique may fundamentally change the mobile users' offloading decisions. This suggests a compelling need for new judiciously designed offloading schemes that can jointly reap the benefits of both physical-layer security and MEC. With this consideration, a novel physical-layer assisted privacy-preserving offloading scheme is proposed in this work, in which the edge server proactively broadcasts jamming signals to impede eaves-dropping and leverages full-duplex communication technique to effectively suppress the self-interference. Finding the optimal jamming power of the edge server and the corresponding optimal offloading ratio of the mobile user turns out to be a challenging bilevel optimization problem. By exploiting the structure of the considered problem, two efficient algorithms are developed for delay optimal and energy optimal privacy-preserving offloading, respectively. Numerical results are presented to validate the effectiveness of the proposed schemes.
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关键词
MEC,edge server,eavesdropping,optimal jamming power,energy optimal privacy-preserving offloading,mobile-edge computing,wireless offloading feature,information theoretic methods,physical-layer security technique,cloud computing,full-duplex communication technique,physical-layer assisted privacy-preserving offloading scheme,self-interference suppression,bilevel optimization problem,cryptography
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