Abstract
In this article, we tackle the network delays in the Internet of Things (IoT) for an enhanced Quality of Service (QoS) through a stable and optimized federated fog computing infrastructure. Network delays contribute to a decline in QoS for IoT applications and may even disrupt time-critical functions. This article addresses the challenge of establishing fog federations, which are designed to enhance QoS. However, instabilities within these federations can lead to the withdrawal of providers, thereby diminishing federation profitability and expected QoS. Additionally, the techniques used to form federations could potentially pose data leakage risks to end-users whose data is involved in the process. In response, we propose a stable and comprehensive federated fog architecture that considers federated network profiling of the environment to enhance the QoS for IoT applications. This article introduces a decentralized evolutionary game theoretic algorithm built on the top of a genetic algorithm mechanism that addresses the fog federation formation issue. Furthermore, we present a decentralized federated learning algorithm that predicts the QoS between fog servers without the need to expose users' location to external entities. Such a predictor module enhances the decision-making process when allocating resources during the federation formation phases without exposing the data privacy of the users/servers. Notably, our approach demonstrates superior stability and improved QoS when compared to other benchmark approaches.
| Original language | English |
|---|---|
| Pages (from-to) | 4183-4196 |
| Number of pages | 14 |
| Journal | IEEE Internet of Things Journal |
| Volume | 12 |
| Issue number | 4 |
| DOIs | |
| Publication status | Published - 2025 |
!!!Keywords
- Cloud federation
- Nash equilibrium
- evolutionary game theory
- federated learning (FL)
- fog computing
- fog federation
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