Intelligent Computation Offloading for IoT Applications in Scalable Edge Computing Using Artificial Bee Colony Optimization

Complexity 2021:1-12 (2021)
  Copy   BIBTEX

Abstract

Most of the IoT-based smart systems require low latency and crisp response time for their applications. Achieving the demand of this high Quality of Service becomes quite challenging when computationally intensive tasks are offloaded to the cloud for execution. Edge computing therein plays an important role by introducing low network latency, quick response, and high bandwidth. However, offloading computations at a large scale overwhelms the edge server with many requests and the scalability issue originates. To address the above issues, an efficient resource management technique is required to maintain the workload over the edge and ensure the reduction of response time for IoT applications. Therefore, in this paper, we introduce a metaheuristic and nature-inspired Artificial Bee Colony optimization technique that effectively manages the workload over the edge server under the strict constraints of low network latency and quick response time. The numerical results show that the proposed ABC algorithm has outperformed Particle Swarm Optimization, Ant Colony Optimization, and Round-Robin Scheduling algorithms by producing low response time and effectively managing the workload over the edge server. Furthermore, the proposed technique scales the edge server to meet the demand of high QoS for IoT applications.

Other Versions

No versions found

Links

PhilArchive



    Upload a copy of this work     Papers currently archived: 106,716

External links

Setup an account with your affiliations in order to access resources via your University's proxy server

Through your library

Similar books and articles

Edge-Cloud Convergence: Architecting Hybrid Systems for Real-Time Data Processing and Latency Optimization.Dutta Shaunot - 2023 - International Journal of Advanced Research in Arts, Science, Engineering and Management (Ijarasem) 10 (1):1147-1151.
Transforming Edge Computing With Machine Learning: Real-Time Analytics for IoT In.Priya U. Hari - 2024 - International Journal of Multidisciplinary Research in Science, Engineering, Technology and Management 11 (6):9367-9372.
The Role of Edge Computing in IOT: Enhancing Real Time Data Processing Capabilities.Mittal Mohit - 2017 - International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering 6 (12):8811-8819.
Decentralized AI: The role of edge intelligence in next-gen computing.V. Talati Dhruvitkumar - 2021 - International Journal of Science and Research Archive 2 (1):216-232.
IoT-enabled edge computing model for smart irrigation system.A. N. Sigappi & S. Premkumar - 2022 - Journal of Intelligent Systems 31 (1):632-650.
Cloud-Assisted Edge AI: Enhancing Decision Making in IoT Devices with Cloud-Powered Machine Learning Models.Hitesh A. Solanki Urvi C. Gupta, Roshni P. Adiyecha - 2024 - International Journal of Innovative Research in Science, Engineering and Technology 13 (12):20850-20857.
Internet of Things future in Edge Computing.C. Pvandana & Ajeet Chikkamannur - 2016 - International Journal of Advanced Engineering Research and Science 3 (12):148-154.
5G-Enabled Cloud Services: Unlocking New Frontiers for Low-Latency Applications and Network Slicing.Eneeyasri D. S. - 2025 - International Journal of Multidisciplinary Research in Science, Engineering and Technology 8 (2):1105-1110.

Analytics

Added to PP
2021-05-05

Downloads
24 (#1,012,167)

6 months
4 (#1,015,689)

Historical graph of downloads
How can I increase my downloads?

Author's Profile

Muhammad Khan
University of Leicester

Citations of this work

No citations found.

Add more citations

References found in this work

No references found.

Add more references