Optimizing Resource Allocation and Energy Efficiency in Federated Fog Computing for IoT
By: Syed Sarmad Shah, Anas Ali
Potential Business Impact:
Makes smart devices work faster and use less power.
Fog computing significantly enhances the efficiency of IoT applications by providing computation, storage, and networking resources at the edge of the network. In this paper, we propose a federated fog computing framework designed to optimize resource management, minimize latency, and reduce energy consumption across distributed IoT environments. Our framework incorporates predictive scheduling, energy-aware resource allocation, and adaptive mobility management strategies. Experimental results obtained from extensive simulations using the OMNeT++ environment demonstrate that our federated approach outperforms traditional non-federated architectures in terms of resource utilization, latency, energy efficiency, task execution time, and scalability. These findings underline the suitability and effectiveness of the proposed framework for supporting sustainable and high-performance IoT services.
Similar Papers
Energy-Efficient Resource Management in Microservices-based Fog and Edge Computing: State-of-the-Art and Future Directions
Distributed, Parallel, and Cluster Computing
Makes smart devices work faster and use less power.
An efficient grey theory-driven path selection for energy efficiency control in the Internet of Things using fog and cloud computing
Networking and Internet Architecture
Makes internet devices send data faster.
A distributed routing protocol for sending data from things to the cloud leveraging fog technology in the large-scale IoT ecosystem
Networking and Internet Architecture
Makes smart devices last longer and respond faster.