4.5 Article

An Energy-Aware High Performance Task Allocation Strategy in Heterogeneous Fog Computing Environments

Journal

IEEE TRANSACTIONS ON COMPUTERS
Volume 70, Issue 4, Pages 626-639

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TC.2020.2993561

Keywords

Edge computing; Task analysis; Cloud computing; Resource management; Servers; Computational modeling; Encoding; Fog computing; energy-aware; resource management; heterogeneous computing; allocation strategy

Funding

  1. U.S. National Science Foundation [IIS-1618669, OAC-1642133, CCF-0845257]
  2. National Natural Science Foundation of China [61972034]
  3. Natural Science Foundation of Beijing Municipality [20D20116]
  4. Natural Science Foundation of Shandong Province [ZR2019ZD10]
  5. Guangxi Key Laboratory of Cryptography and Information Security [GCIS201803]
  6. Henan Key Laboratory of Network Cryptography Technology [LNCT2019-A08]
  7. Beijing Institute of Technology Research Fund Program for Young Scholars

Ask authors/readers for more resources

Combining IoT technology with cloud computing is important for utilizing computing resources in a connected environment, but big data poses challenges to communication. This article proposes a novel approach called EFRO to optimize resource management in fog computing, improving energy efficiency and time consumption significantly. Experimental results show that EFRO is adept at making near-optimal decisions, surpassing existing schemes in various aspects.
Combining the Internet-of-Things (IoT) technology with cloud computing is a significant alternative for powering the utilization of computing resources in a connected environment. A grand challenge in communications is raised by the emergence of big data, due to the large-sized data transmissions and frequent data exchanges. Applying fog computing is considered an option for resolving the communication challenge. However, a high extent of available heterogeneous computing attached to fog computing servers leads to a restriction of the resource management. This Article addresses the resource management issue by proposing a novel approach - named Energy-aware Fog Resource Optimization (EFRO) model- to optimizing the utilization of connected devices in fog computing. We develop a heuristic algorithm minimizing both energy cost and time consumption in a holistic way. A salient feature of EFRO lies in the integration of the standardization and smart shift operations fueled by a hill-climbing mechanism to produce near-optimal resource allocation solutions. Experimental results demonstrate that our EFRO is adroit at making near-optimal decisions in managing resources in fog computing environments. In particular, EFRO boosts the energy efficiency of the existing MESF and RR schemes by 54.83 and 71.28 percent, respectively. EFRO shortens DECM's allocation-generation time by up to a factor of 507.

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