Fog Computing Assisted for Enhancing Quality of Services Using Intelligent Systems in IoT Environment

ABSTRACT

This research presents an intelligent fog computing framework
designed to enhance Quality of Service (QoS) in Internet of Things (IoT)
environments through the integration of fuzzy logic, Deep Q-Network (DQN),
and Multi-Objective Evolutionary Algorithm based on Decomposition
(MOEA/D). The system employs fuzzy logic to classify tasks by priority using
parameters such as task size, device load, and network congestion; a DQN
scheduler then learns optimal task-to-node mappings, while MOEA/D
performs multi-objective resource allocation balancing latency, reliability, and
utilization. Implemented and tested in an iFogSim2 environment, the
proposed model achieved a task classification accuracy of 96.84%, task
success rate above 96%, deadline completion ratio exceeding 96%, and more
than 10% latency reduction compared with leading baseline models. The
framework demonstrated strong scalability, adaptability, and reliability,
achieving 90.1% resource utilization and rapid learning convergence. These
findings indicate that the proposed hybrid architecture provides an effective,
self-optimizing fog-IoT system suitable for real-time applications such as smart
healthcare, urban management, and vehicular coordination, with future
extensions envisioned for energy efficiency, trust-based computation, and
automated parameter tuning.