@inproceedings{7d991cc436b84d669447b56a899387f5,
title = "SABES: Statistical Available Bandwidth EStimation from passive TCP measurements",
abstract = "Estimating available network resources is fundamental when adapting the sending rate both at the application and transport layer. Traditional approaches either rely on active probing techniques or iteratively adapting the average sending rate, as is the case for modern TCP congestion control algorithms. In this paper, we propose a statistical method based on the inter-packet arrival time analysis of TCP acknowledgments to estimate a path available bandwidth. SABES first estimates the bottleneck link capacity exploiting the TCP flow slow start traffic patterns. Then, an heuristic based on the capacity estimation, provides an approximation of the end-to-end available bandwidth. Exhaustive experimentation on both simulations and real-world scenarios were conducted to validate our technique, and our results are promising. Furthermore, we train an artificial neural network to improve the estimation accuracy.",
keywords = "Available bandwidth, network machine learning, passive probing",
author = "Francesco Ciaccia and Ivan Romero and Oriol Arcas-Abella and Diego Montero and Rene Serral-Gracia and Mario Nemirovsky",
note = "Publisher Copyright: {\textcopyright} 2020 IFIP.; 2020 IFIP Networking Conference and Workshops, Networking 2020 ; Conference date: 22-06-2020 Through 25-06-2020",
year = "2020",
month = jun,
language = "Ingl{\'e}s",
series = "IFIP Networking 2020 Conference and Workshops, Networking 2020",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
pages = "743--748",
booktitle = "IFIP Networking 2020 Conference and Workshops, Networking 2020",
}