JISE


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Journal of Information Science and Engineering, Vol. 40 No. 5, pp. 1057-1069


Multivariate Machine Learning Models for Accurate and Robust Multi-UAV Network Throughput Prediction


WEI JIAN LAU1,+, JOANNE MUN-YEE LIM1, CHUN YONG CHONG2,
NEE SHEN HO3 AND THOMAS WEI MIN OOI4 
1Department of Electrical and Robotics Engineering, School of Engineering
2School of Information Technology
Monash University Malaysia
Bandar Sunway, Selangor, 47500 Malaysia

3Client Computing Group
Intel Research and Development Ireland Ltd.
Leixlip, W23 N2T7 Ireland

4Network and Edge Group
Intel Microelectronics Sdn. Bhd.
Penang, 11900 Malaysia
E-mail: wei.lau@monash.edu
+; joanne.lim@monash.edu; chong.chunyong@monash.edu; nee.shen.ho@intel.com; thomas.wei.min.ooi@intel.com
 


Anticipatory Multi-Unmanned Aerial Vehicles (UAVs) Network is the key to the re-alization of high-bandwidth and demanding multi-UAV applications in the future. An ac-curate and robust Channel Quality Prediction (CQP) model is essential in such anticipatory networks to facilitate the eventual optimization step. However, the models that are pro-posed in the literature are typically designed for static cellular networks and do not con-sider robustness or the cross-domain CQP accuracy as a key performance indicator. In this paper, we investigate the efficacy of three different Machine Learning (ML) models in CQP for multi-UAV networks by training them with univariate and multivariate network metrics data curated through OMNeT++ simulations. The models are then evaluated in two-folds via in-domain and cross-domain evaluations to test their accuracies and robust-ness, respectively. The results from the in-domain evaluations show that multivariate data is key to improving the in-domain performance of the ML models for multi-UAV network throughput prediction, whereas the cross-domain evaluations reveal that more complex models like the Seq2seq are necessary for achieving good robustness against multi-UAV network environments that have different operating conditions, with a maximum improve-ment in cross-domain CQP performance of 200% over the other implemented ML models.


Keywords: multi-UAV network, channel quality prediction, machine learning, deep learning, time-series forecasting

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