Hierarchical Reinforcement Learning for Integrated Cloud-Fog-Edge Computing in IoT Systems
By: Ameneh Zarei, Mahmood Ahmadi, Farhad Mardukhi
Potential Business Impact:
Makes smart devices work faster and safer together.
The Internet of Things (IoT) is transforming industries by connecting billions of devices to collect, process, and share data. However, the massive data volumes and real-time demands of IoT applications strain traditional cloud computing architectures. This paper explores the complementary roles of cloud, fog, and edge computing in enhancing IoT performance, focusing on their ability to reduce latency, improve scalability, and ensure data privacy. We propose a novel framework, the Hierarchical IoT Processing Architecture (HIPA), which dynamically allocates computational tasks across cloud, fog, and edge layers using machine learning. By synthesizing current research and introducing HIPA, this paper highlights how these paradigms can create efficient, secure, and scalable IoT ecosystems.
Similar Papers
A Survey on Cloud-Edge-Terminal Collaborative Intelligence in AIoT Networks
Networking and Internet Architecture
Connects smart devices for faster AI.
An Internet of Intelligent Things Framework for Decentralized Heterogeneous Platforms
Networking and Internet Architecture
Smart devices learn together without a boss.
Mist-Assisted Federated Learning for Intrusion Detection in Heterogeneous IoT Networks
Networking and Internet Architecture
Protects smart devices from hackers without sharing data.