Journal
INTERNATIONAL JOURNAL OF COMMUNICATION SYSTEMS
Volume 30, Issue 10, Pages -Publisher
WILEY
DOI: 10.1002/dac.3241
Keywords
computation offloading; energy efficiency; mobile cloud computing; near optimal partitioning
Ask authors/readers for more resources
Mobile cloud computing is a promising approach to improve the mobile device's efficiency in terms of energy consumption and execution time. In this context, mobile devices can offload the computation-intensive parts of their applications to powerful cloud servers. However, they should decide what computation-intensive parts are appropriate for offloading to be beneficial instead of local execution on the mobile device. Moreover, in the real world, different types of clouds/servers with heterogeneous processing speeds are available that should be considered for offloading. Because making offloading decision in multisite context is an NP-complete, obtaining an optimal solution is time consuming. Hence, we use a near optimal decision algorithm to find the best-possible partitioning for offloading to multisite clouds/servers. We use a genetic algorithm and adjust it for multisite offloading problem. Also, genetic operators are modified to reduce the ineffective solutions and hence obtain the best-possible solutions in a reasonable time. We evaluated the efficiency of the proposed method using graphs of real mobile applications in simulation experiments. The evaluation results demonstrate that our proposal outperforms other counterparts in terms of energy consumption, execution time, and weighted cost model.
Authors
I am an author on this paper
Click your name to claim this paper and add it to your profile.
Reviews
Recommended
No Data Available