Context-Aware Mobile Network Performance Prediction Using Network & Remote Sensing Data (2405.00220v1)
Abstract: Accurate estimation of Network Performance is crucial for several tasks in telecom networks. Telecom networks regularly serve a vast number of radio nodes. Each radio node provides services to end-users in the associated coverage areas. The task of predicting Network Performance for telecom networks necessitates considering complex spatio-temporal interactions and incorporating geospatial information where the radio nodes are deployed. Instead of relying on historical data alone, our approach augments network historical performance datasets with satellite imagery data. Our comprehensive experiments, using real-world data collected from multiple different regions of an operational network, show that the model is robust and can generalize across different scenarios. The results indicate that the model, utilizing satellite imagery, performs very well across the tested regions. Additionally, the model demonstrates a robust approach to the cold-start problem, offering a promising alternative for initial performance estimation in newly deployed sites.
- 3GPP, “The 3rd generation partnership project,” tech. rep., 2023.
- L. U. Khan, Z. Han, W. Saad, E. Hossain, M. Guizani, and C. S. Hong, “Digital twin of wireless systems: Overview, taxonomy, challenges, and opportunities,” IEEE Communications Surveys & Tutorials, 2022.
- P. Helber, B. Bischke, A. Dengel, and D. Borth, “Eurosat: A novel dataset and deep learning benchmark for land use and land cover classification,” 2019.
- A. Mourad, R. Yang, P. H. Lehne, and A. De La Oliva, “Towards 6g: Evolution of key performance indicators and technology trends,” in 2020 2nd 6G wireless summit (6G SUMMIT), pp. 1–5, IEEE, 2020.
- N. P. Tran, O. Delgado, B. Jaumard, and F. Bishay, “Ml kpi prediction in 5g and b5g networks,” in 2023 Joint European Conference on Networks and Communications & 6G Summit (EuCNC/6G Summit), pp. 502–507, IEEE, 2023.
- S. T. Nabi, M. R. Islam, M. G. R. Alam, M. M. Hassan, S. A. AlQahtani, G. Aloi, and G. Fortino, “Deep learning based fusion model for multivariate lte traffic forecasting and optimized radio parameter estimation,” IEEE Access, vol. 11, pp. 14533–14549, 2023.
- M. Yaqoob, R. Trestian, and H. X. Nguyen, “Data-driven network performance prediction for b5g networks: a graph neural network approach,” in 2022 IEEE Ninth International Conference on Communications and Electronics (ICCE), IEEE, 2022.
- T. Zanouda, S. Govindaraj, D. Budyn, and M. Rydar, “Methods and apparatuses for detecting and localizing faults using machine learning models,” 2022. PCT/EP2022/071544.
- R. Bourgerie and T. Zanouda, “Fault detection in telecom networks using bi-level federated graph neural networks,” in 2023 IEEE International Conference on Data Mining Workshops (ICDMW), pp. 1608–1617, 2023.
- J. Thrane, B. Sliwa, C. Wietfeld, and H. L. Christiansen, “Deep learning-based signal strength prediction using geographical images and expert knowledge,” in GLOBECOM 2020-2020 IEEE Global Communications Conference, pp. 1–6, IEEE, 2020.
- X. Zhang, X. Shu, B. Zhang, J. Ren, L. Zhou, and X. Chen, “Cellular network radio propagation modeling with deep convolutional neural networks,” in Proceedings of the 26th ACM SIGKDD International Conference on knowledge discovery & data mining, pp. 2378–2386, 2020.
- T. Zanouda, “Methods and nodes for predicting azimuth values of cells in communications networks,” 2022. PCT/EP2022/072279.
- E. S. Agency, “Sentinel-2,” 2015. Accessed on February 2, 2024.
- K. He, X. Zhang, S. Ren, and J. Sun, “Deep residual learning for image recognition,” 2015.
- M. Tan and Q. V. Le, “Efficientnet: Rethinking model scaling for convolutional neural networks,” 2020.
- A. Dosovitskiy, L. Beyer, A. Kolesnikov, D. Weissenborn, X. Zhai, T. Unterthiner, M. Dehghani, M. Minderer, G. Heigold, S. Gelly, J. Uszkoreit, and N. Houlsby, “An image is worth 16x16 words: Transformers for image recognition at scale,” 2021.