Abstract

The substantial advancements offered by the edge computing has indicated serious evolutionary improvements for the internet of things (IoT) technology. The rigid design philosophy of the traditional network architecture limits its scope to meet future demands. However, information centric networking (ICN) is envisioned as a promising architecture to bridge the huge gaps and maintain IoT networks, mostly referred as ICN-IoT. The edge-enabled ICN-IoT architecture always demands efficient in-network caching techniques for supporting better user’s quality of experience (QoE). In this paper, we propose an enhanced ICN-IoT content caching strategy by enabling artificial intelligence (AI)-based collaborative filtering within the edge cloud to support heterogeneous IoT architecture. This collaborative filtering-based content caching strategy would intelligently cache content on edge nodes for traffic management at cloud databases. The evaluations has been conducted to check the performance of the proposed strategy over various benchmark strategies, such as LCE, LCD, CL4M, and ProbCache. The analytical results demonstrate the better performance of our proposed strategy with average gain of 15% for cache hit ratio, 12% reduction in content retrieval delay, and 28% reduced average hop count in comparison to best considered LCD. We believe that the proposed strategy will contribute an effective solution to the related studies in this domain.

Highlights

  • In recent years, the advancements in the internet of things (IoT) technology has gained a lot of popularity

  • Considering benefits associated with the combination of all these technologies, such as information centric networking (ICN)-IoT, cloud computing, and edge computing, along with the deployment of artificial intelligence (AI), our main focus is on designing AI-enabled edge model for intelligent content caching strategy which is suitable for heterogeneous IoT architectures to effectively manage massive traffic flow on central clouds

  • We propose an enhanced ICN-IoT content caching strategy by enabling AI’s collaborative filtering within edge cloud to support heterogeneous IoT architectures for traffic management at conventional cloud computing model

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Summary

Introduction

The advancements in the internet of things (IoT) technology has gained a lot of popularity. Considering benefits associated with the combination of all these technologies, such as ICN-IoT, cloud computing, and edge computing, along with the deployment of AI, our main focus is on designing AI-enabled edge model for intelligent content caching strategy which is suitable for heterogeneous IoT architectures to effectively manage massive traffic flow on central clouds. To this end, following are the contributions made in this paper:.

Related Work
IoT and ICN
IoT and Edge Computing
Artificial Intelligence in Edge Caching
System Model
Edge Clustering
Edge Caching
Content Fetching
Evaluation Scenario
Performance Metrics
Simulation Results
Conclusions
Full Text
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