Saved in:
Bibliographic Details
Main Authors: Yashaswinee, D. Sree, Tambe, Gargie, Reddy, Y. Raghu, Vaidhyanathan, Karthik
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.23009
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917111473897472
author Yashaswinee, D. Sree
Tambe, Gargie
Reddy, Y. Raghu
Vaidhyanathan, Karthik
author_facet Yashaswinee, D. Sree
Tambe, Gargie
Reddy, Y. Raghu
Vaidhyanathan, Karthik
contents Digital twins (DT) have emerged as a transformative technology, enabling real-time monitoring, simulations, and predictive maintenance across various domains, though their Application in the networking domain remains underexplored. This paper focuses on issues such as increasing client density and traffic congestion by proposing a digital twin for computer networks. Our Digital Twin, named Access Point Digital Twin (APDT) is used for tracking user behavior and changing bandwidth demands, directly impacting network performance and Quality of Service (QoS) parameters like latency, jitter, etc. APDT captures the real-time state of networks with data from access points (APs), enabling simulation-based analyses and predictive modelling. APDT facilitates the simulation of various what-if scenarios thereby providing a better understanding of various aspects of the network characteristics. We tested APDT on our University network. APDT uses data collected from three access points via the Ruckus SmartZone API and incorporates NS-3 based simulations. The simulation replicates a real-time snapshot from a Ruckus access point and models metrics such as latency and inter-packet transfer time. Additionally, a forecasting model predicts traffic congestion and suggests proactive client offloading, enhancing network management and performance optimization. Preliminary results indicate that APDT can successfully predict short-term traffic surges, leading to improved QoS and reduced traffic congestion.
format Preprint
id arxiv_https___arxiv_org_abs_2511_23009
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle APDT: A Digital Twin for Assessing Access Point Characteristics in a Network
Yashaswinee, D. Sree
Tambe, Gargie
Reddy, Y. Raghu
Vaidhyanathan, Karthik
Software Engineering
Digital twins (DT) have emerged as a transformative technology, enabling real-time monitoring, simulations, and predictive maintenance across various domains, though their Application in the networking domain remains underexplored. This paper focuses on issues such as increasing client density and traffic congestion by proposing a digital twin for computer networks. Our Digital Twin, named Access Point Digital Twin (APDT) is used for tracking user behavior and changing bandwidth demands, directly impacting network performance and Quality of Service (QoS) parameters like latency, jitter, etc. APDT captures the real-time state of networks with data from access points (APs), enabling simulation-based analyses and predictive modelling. APDT facilitates the simulation of various what-if scenarios thereby providing a better understanding of various aspects of the network characteristics. We tested APDT on our University network. APDT uses data collected from three access points via the Ruckus SmartZone API and incorporates NS-3 based simulations. The simulation replicates a real-time snapshot from a Ruckus access point and models metrics such as latency and inter-packet transfer time. Additionally, a forecasting model predicts traffic congestion and suggests proactive client offloading, enhancing network management and performance optimization. Preliminary results indicate that APDT can successfully predict short-term traffic surges, leading to improved QoS and reduced traffic congestion.
title APDT: A Digital Twin for Assessing Access Point Characteristics in a Network
topic Software Engineering
url https://arxiv.org/abs/2511.23009