Security modeling and efficient computation offloading for service workflow in mobile edge computing
July 04, 2019 Β· Declared Dead Β· π Future generations computer systems
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Authors
Binbin Huang, Zhongjin Lia, Peng Tang, Shangguang Wang, Jun Zhao, Haiyang Hua, Wanqing Lia, Victor Chang
arXiv ID
1907.02506
Category
cs.DC: Distributed Computing
Cross-listed
cs.CR,
cs.NI
Citations
92
Venue
Future generations computer systems
Last Checked
4 months ago
Abstract
It is a big challenge for resource-limited mobile devices (MDs) to execute various complex and energy-consumed mobile applications. Fortunately, as a novel computing paradigm, edge computing (MEC) can provide abundant computing resources to execute all or parts of the tasks of MDs and thereby can greatly reduce the energy of MD and improve the QoS of applications. However, offloading workflow tasks to the MEC servers are liable to external security threats (e.g., snooping, alteration). In this paper, we propose a security and energy efficient computation offloading (SEECO) strategy for service workflows in MEC environment, the goal of which is to optimize the energy consumption under the risk probability and deadline constraints. First, we build a security overhead model to measure the execution time of security services. Then, we formulate the computation offloading problem by incorporating the security, energy consumption and execution time of workflow application. Finally, based on the genetic algorithm (GA), the corresponding coding strategies of SEECO are devised by considering tasks execution order and location and security services selection. Extensive experiments with the variety of workflow parameters demonstrate that SEECO strategy can achieve the security and energy efficiency for the mobile applications.
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