Various Task Allocation Simulator for Resource High-Performance based on Mobile Cloud Infrastructure

  • Authors

    • Hyun-Woo Kim
    • Eun-Ha Song
    2018-12-13
    https://doi.org/10.14419/ijet.v7i4.39.24371
  • Resource High-Performance, Various Task Allocation, Mobile Cloud Computing, Task Allocation Simulation
  • Background/Objectives: We describe VTAS for efficiency of resource management, high availability in mobile cloud environment based on collaborative architecture.

    Methods/Statistical analysis: VTAS sets performance normalization for task allocation according to CPU, memory, and remaining battery power of mobile resources for various task processing. Visualize task allocation information and processing time when requesting work according to performance normalization.

    Findings: Research has been carried out in consideration of resource configuration, network connection status, number of tasks, and simulations for cloud resource management. There are insufficient studies to allocate various work processes based on mobile cloud. By assigning user task allocation criteria to simulation, task allocation for various task processing is possible.

    Improvements/Applications: In this paper, it is possible to apply user arbitrary task allocation criterion of limited integrated resources in mobile cloud, and more work can be processed by task allocation considering static and dynamic performance and remaining battery capacity.

     

  • References

    1. [1] Rubens, M., Jean, A., Danilo, O., Paulo, M., Kishor, T.(2015). Sensitivity analysis of a hierarchical model for mobile cloud computing. Simulation Modeling Practice and Theory, 50, 151-164.

      [2] Abolfazli, S., Sanaei, Z., Sanaei, M.H., Shojafar, M., Gani, A. (2015). Mobile cloud computing: The-state-of-the-art, challenges, and future research. In Encyclopedia of Cloud Computing, Willeys and Sons: Hoboken.

      [3] Lo’ai, T., Waseem, B., Houbing, S. (2016). A Mobile Cloud Computing Model Using the Cloudlet Scheme for Big Data Applications.In Proceedings of the Conference on Connected Health: Applications, Systems and Engineering Technologies, 2016 IEEE First International Conference on, IEEE, 73-77.

      [4] Kim, B., Byun, H., Heo, Y.-A., Jeong, Y.-S.(2017). Adaptive Job Load Balancing Scheme on Mobile Cloud Computing with Collaborative Architecture, Symmetry, 9(5), 1-14.

      [5] Yi, G., Heo, Y.-A., Byun, H., Jeong, Y.-S. (2017). MRM: mobile resource management scheme on mobile cloud computing, Journal of Ambient Intelligence and Humanized Computing, 1-13.

      [6] Buyya, R., Murshed, M. (2002).GridSim: a toolkit for the modeling and simulation of distributed resource management and scheduling for Grid computing,Concurrency and Computation: Practice and Experience, 14(13-15), 1175-1220.

      [7] Góes, L. F. W., Ramos,L. E. S., Martins, C. A. P. S. (2004). ClusterSim: A Java-Based Parallel Discrete-Event Simulation Tool for Cluster Computing. In Proceedings of the 2004 IEEE International Conference on Cluster Computing, 401-410.

      [8] Calheiros,R. N., Ranjan,R., Beloglazov,A., Rose, C. A. F. D., Buyya, R. (2011).CloudSim: a toolkit for modeling and simulation of cloud computing environments and evaluation or resource provisioning algorithms,Software: Practice and Experience, 41(1), 23-50.

  • Downloads

  • How to Cite

    Kim, H.-W., & Song, E.-H. (2018). Various Task Allocation Simulator for Resource High-Performance based on Mobile Cloud Infrastructure. International Journal of Engineering & Technology, 7(4.39), 535-538. https://doi.org/10.14419/ijet.v7i4.39.24371