Dynamic Optimization of Video Streaming Quality Using Network Digital Twin Technology
Zurh Farus, Betty Searcy, Tina Nassisid, Kevin Muhammad

TL;DR
This paper presents a real-time adaptive video streaming framework that uses Network Digital Twin technology and machine learning to predict network conditions and optimize video quality, significantly reducing buffering and enhancing user experience.
Contribution
It introduces a novel integration of Network Digital Twin with predictive analytics for dynamic video quality optimization under fluctuating wireless network conditions.
Findings
Reduces buffering times by up to 50%
Improves video resolution in variable network environments
Demonstrates enhanced Quality of Experience (QoE)
Abstract
This paper introduces a novel dynamic optimization framework for video streaming that leverages Network Digital Twin (NDT) technology to address the challenges posed by fluctuating wireless network conditions. Traditional adaptive streaming methods often struggle with rapid changes in network bandwidth, latency, and packet loss, leading to suboptimal user experiences characterized by frequent buffering and reduced video quality. Our proposed framework integrates a sophisticated NDT that models the wireless network in real-time and employs predictive analytics to forecast near-future network states. Utilizing machine learning techniques, specifically Random Forest and Neural Networks, the NDT predicts bandwidth availability, latency trends, and potential packet losses before they impact video transmission. Based on these predictions, our adaptive streaming algorithm dynamically adjusts…
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Taxonomy
TopicsDigital Transformation in Industry
