RME-GAN: A Learning Framework for Radio Map Estimation Based on Conditional Generative Adversarial Network

被引:34
作者
Zhang S. [1 ]
Wijesinghe A. [1 ]
Ding Z. [1 ]
机构
[1] University of California at Davis, Department of Electrical and Computer Engineering, Davis, 95616, CA
基金
美国国家科学基金会;
关键词
Conditional generative adversarial networks (cGANs); network planning; radio map estimation (RME); radio measurement;
D O I
10.1109/JIOT.2023.3278235
中图分类号
学科分类号
摘要
Outdoor radio coverage map estimation is an important tool for network planning and resource management in modern Internet of Things (IoT) and cellular systems. A radio map spatially describes radio signal strength distribution and provides network coverage information. A practical problem is to estimate fine-resolution radio maps from sparse radio strength measurements. However, nonuniformly positioned measurements and access constraints pose challenges to accurate radio map estimation (RME) and spectrum planning in many outdoor environments. In this work, we develop a two-phase learning framework for RME by integrating well-known radio propagation model and designing a conditional generative adversarial network (cGAN). We first explore global information to extract radio propagation patterns. Next, we focus on the local features to estimate the shadowing effect on radio maps in order to train and optimize the cGAN. Our experimental results demonstrate the efficacy of the proposed framework for RME based on generative models from sparse observations in outdoor scenarios. © 2014 IEEE.
引用
收藏
页码:18016 / 18027
页数:11
相关论文
共 51 条
[1]  
Deng Y., Et al., Radio environment map construction using super-resolution imaging for intelligent transportation systems, IEEE Access, 8, pp. 47272-47281, (2020)
[2]  
Bi S., Lyu J., Ding Z., Zhang R., Engineering radio maps for wireless resource management, IEEE Wireless Commun., 26, 2, pp. 133-141, (2019)
[3]  
Debroy S., Bhattacharjee S., Chatterjee M., Spectrum map and its application in resource management in cognitive radio networks, IEEE Trans. Cogn. Commun. Netw., 1, 4, pp. 406-419, (2015)
[4]  
Zhang S., Zhang R., Radio map-based 3D path planning for cellular-connected UAV, IEEE Trans. Wireless Commun., 20, 3, pp. 1975-1989, (2021)
[5]  
Nayak B.P., Hota L., Kumar A., Turuk A.K., Chong P.H.J., Autonomous vehicles: Resource allocation, security, and data privacy, IEEE Trans. Green Commun. Netw., 6, 1, pp. 117-131, (2022)
[6]  
Liao Q., SLAMORE: SLAM with object recognition for 3D radio environment reconstruction, Proc. IEEE Int. Conf. Commun. (ICC), pp. 1-7, (2020)
[7]  
Riaz M.S., Qureshi H.N., Masood U., Rizwan A., Abu-Dayya A., Imran A., Deep learning-based framework for multi-fault diagnosis in self-healing cellular networks, Proc. IEEE Wireless Commun. Netw. Conf. (WCNC), pp. 746-751, (2022)
[8]  
Lee M., Han D., Voronoi tessellation based interpolation method for Wi-Fi radio map construction, IEEE Commun. Lett., 16, 3, pp. 404-407, (2012)
[9]  
Bazerque J.A., Mateos G., Giannakis G.B., Group-Lasso on splines for spectrum cartography, IEEE Trans. Signal Process., 59, 10, pp. 4648-4663, (2011)
[10]  
Krumm J., Platt J., Minimizing calibration effort for an indoor 802.11 device location measurement system, Microsoft Res., Microsoft Corp., Redmond, WA, USA, Rep. MSR-TR-2003-82, (2003)