Generating more Realistic Packet Loss Patterns for Wireless links using Neural Networks
Autor(en): | Otten, Daniel Hanel, Thomas Romer, Tim Aschenbruck, Nils |
Herausgeber: | Franklin, M. Chun, S.A. |
Stichwörter: | Packet loss; Loss patterns; Network connection; Neural-networks; Packets loss; Parametrizations; Real world experiment; Real-world; Simple++; Statistic modeling; Wireless link; Machine learning | Erscheinungsdatum: | 2023 | Herausgeber: | Florida OJ | Journal: | Proceedings of the International Florida Artificial Intelligence Research Society Conference, FLAIRS | Volumen: | 36 | Zusammenfassung: | Simulations of wireless network connections are essential for the development of new technologies because they are far more scalable than real-world experiments and reproducible. Modeling packet loss realistically provides a highly abstract yet powerful tool for the simulation of wirelesses links. Typically, simple statistical models or replaying of recorded traces are used for the simulation. For a proper parametrization of simple statistical models, recorded traces are required, too. Both approaches have drawbacks: replaying traces is limited to the length of the traces, a repetition may lead to unwanted effects in the simulation. The statistical models solve this, but the resulting packet loss patterns significantly differ from real ones. In this paper, we propose using a neural network instead. It takes the same kind of input, i.e., a real-world trace, but it can generate longer traces with more realistic loss patterns. We share pre-trained neural networks for multiple links in office and industry scenarios with the community for use in future research. © 2023 by the authors. All rights reserved. |
Beschreibung: | Cited by: 0; Conference name: 36th International Florida Artificial Intelligence Research Society Conference, FLAIRS-36 2023; Conference date: 14 May 2023 through 17 May 2023; Conference code: 294329 |
ISSN: | 2334-0754 | DOI: | 10.32473/flairs.36.133099 | Externe URL: | https://www.scopus.com/inward/record.uri?eid=2-s2.0-85161363043&doi=10.32473%2fflairs.36.133099&partnerID=40&md5=8504cb625f076de8fac8de8293cffc1d |
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geprüft am 17.05.2024