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Mobile and Ubiquitous Systems: Computing, Networking and Services. 18th EAI International Conference, MobiQuitous 2021, Virtual Event, November 8-11, 2021, Proceedings

Research Article

Optimizing Unlicensed Coexistence Network Performance Through Data Learning

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  • @INPROCEEDINGS{10.1007/978-3-030-94822-1_8,
        author={Srikant Manas Kala and Vanlin Sathya and Kunal Dahiya and Teruo Higashino and Hirozumi Yamaguchi},
        title={Optimizing Unlicensed Coexistence Network Performance Through Data Learning},
        proceedings={Mobile and Ubiquitous Systems: Computing, Networking and Services. 18th EAI International Conference, MobiQuitous 2021, Virtual Event, November 8-11, 2021, Proceedings},
        proceedings_a={MOBIQUITOUS},
        year={2022},
        month={2},
        keywords={LTE-WiFi coexistence Network optimization Machine learning},
        doi={10.1007/978-3-030-94822-1_8}
    }
    
  • Srikant Manas Kala
    Vanlin Sathya
    Kunal Dahiya
    Teruo Higashino
    Hirozumi Yamaguchi
    Year: 2022
    Optimizing Unlicensed Coexistence Network Performance Through Data Learning
    MOBIQUITOUS
    Springer
    DOI: 10.1007/978-3-030-94822-1_8
Srikant Manas Kala1,*, Vanlin Sathya2, Kunal Dahiya, Teruo Higashino1, Hirozumi Yamaguchi1
  • 1: Mobile Computing Laboratory
  • 2: The University of Chicago
*Contact email: manas_kala@ist.osaka-u.ac.jp

Abstract

Unlicensed LTE-WiFi coexistence networks are undergoing consistent densification to meet the rising mobile data demands. With the increase in coexistence network complexity, it is important to study network feature relationships (NFRs) and utilize them to optimize dense coexistence network performance. This work studies NFRs in unlicensed LTE-WiFi (LTE-U and LTE-LAA) networks through supervised learning of network data collected from real-world experiments. Different 802.11 standards and varying channel bandwidths are considered in the experiments and the learning model selection policy is precisely outlined. Thereafter, a comparative analysis of different LTE-WiFi network configurations is performed through learning model parameters such as R-sq, residual error, outliers, choice of predictor,etc.Further, a Network Feature Relationship based Optimization (NeFRO) framework is proposed. NeFRO improves upon the conventional optimization formulations by utilizing the feature-relationship equations learned from network data. It is demonstrated to be highly suitable for time-critical dense coexistence networks through two optimization objectives,viz.,network capacity and signal strength. NeFRO is validated against four recent works on network optimization. NeFRO is successfully able to reduce optimization convergence time by as much as 24% while maintaining accuracy as high as 97.16%, on average.

Keywords
LTE-WiFi coexistence Network optimization Machine learning
Published
2022-02-08
Appears in
SpringerLink
http://dx.doi.org/10.1007/978-3-030-94822-1_8
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