AdaptiveFog: A Modelling and Optimization Framework for Fog Computing in Intelligent Transportation Systems
Yong Xiao, Marwan Krunz

TL;DR
This paper introduces AdaptiveFog, a framework that dynamically switches LTE networks to optimize fog computing latency in intelligent transportation systems, significantly improving service confidence levels.
Contribution
The paper presents a novel adaptive switching framework and a new statistical metric, addressing wireless access latency issues in fog computing for smart vehicles.
Findings
AdaptiveFog improves latency confidence levels by 30-50%.
Introduces weighted Kantorovich-Rubinstein distance for network comparison.
Validates approach through extensive measurements and simulations.
Abstract
Fog computing has been advocated as an enabling technology for computationally intensive services in smart connected vehicles. Most existing works focus on analyzing the queueing and workload processing latencies associated with fog computing, ignoring the fact that wireless access latency can sometimes dominate the overall latency. This motivates the work in this paper, where we report on a five-month measurement study of the wireless access latency between connected vehicles and a fog/cloud computing system supported by commercially available LTE networks. We propose AdaptiveFog, a novel framework for autonomous and dynamic switching between different LTE networks that implement a fog/cloud infrastructure. AdaptiveFog's main objective is to maximize the service confidence level, defined as the probability that the latency of a given service type is below some threshold. To quantify…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Age of Information Optimization · Data Stream Mining Techniques
