Development of a Conditional Generative Adversarial Network Model for Television Spectrum Radio Environment Mapping

被引:0
|
作者
Dare, Oluwatobi Emmanuel [1 ,2 ]
Okokpujie, Kennedy [1 ,2 ]
Adetiba, Emmanuel [1 ,2 ,3 ]
Idowu-Bismark, Olabode [1 ,2 ]
Abayomi, Abdultaofeek [4 ,5 ]
Jules Kala, Raymond [6 ]
Owolabi, Emmanuel [7 ]
Christopher Ukpong, Udeme [1 ,2 ]
机构
[1] Covenant Univ, Coll Engn, Dept Elect & Informat Engn, Ota 112104, Nigeria
[2] Covenant Univ, Covenant Appl Informat & Commun African Ctr Excell, Ota 112104, Nigeria
[3] Durban Univ Technol, Inst Syst Sci, HRA, ZA-4001 Durban, South Africa
[4] Summit Univ, IASRG, Offa 250101, Kwara, Nigeria
[5] Walter Sisulu Univ, HRA, ZA-5200 East London, South Africa
[6] Int Univ Grand Bassam, STEM Fac, Grand Bassam, Cote Ivoire
[7] Univ Pretoria, Dept Sci Math & Technol Educ, ZA-0002 Pretoria, South Africa
来源
IEEE ACCESS | 2024年 / 12卷
关键词
Conditional generative adversarial network (CGAN); dynamic spectrum sharing (DSS); radio environment map (REM); received signal strength (RSS); television white spaces (TVWS);
D O I
10.1109/ACCESS.2024.3521998
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
To efficiently use the finite wireless communication resource (radio spectrum), a Radio Environment Map (REM) is needed to monitor, analyse and provide rich awareness of spectrum activities in a radio propagating environment. REM shows radio coverage metrics in a geographical region. A REM construction model with few constraints and optimal performance is needed to better support cognitive radio for dynamic spectrum sharing (DSS) and other benefits of REM. This study aims to estimate fine-resolution REM from sparse radio signal strength measurement. In this study, we utilised conditional generative adversarial network (CGAN) to create a television spectrum radio environment map in order to improve cognitive television white space (TVWS) radio performance in real-time propagation environments. Measurement campaign was carried out to acquire a TV-band (470-862MHz) radio frequency and geographical dataset at Covenant University, Ota, Nigeria. A preprocessing procedure which was implemented with Python script was employed to group the dataset using Nigerian Communications Commission TV spectrum channel spacing and to create incomplete spectrograms for 49 channels. Xgboost, SVM, and kriging variogram models were explored to generate ground truth datasets for the CGAN model training, and the best algorithm was employed. A CGAN REM model was developed using U-Net as a generator and PatchGan as a discriminator. The U-Net generator is a 3-channel input, 16-layer architecture while the PatchGan discriminator is a 6-channel input, 7-layer architecture. The model performance was evaluated using mean square error (MSE) and mean absolute error (MAE). 12 different experiments were carried out varying the training parameters of the CGAN architecture to obtain an optimal model. The achieved root mean square error (RMSE) is 0.1145dBm and MAE is 0.0820dBm, which shows the deviation between the ground truth and the generated REM. This low deviation means that the proposed CGAN REM model possesses an improved accuracy in predicting the spectrum activities within the television spectrum which is considered appropriate for DSS technology. This study also revealed that 41 channels within TV-band in Covenant University are totally unoccupied.
引用
收藏
页码:197632 / 197644
页数:13
相关论文
共 50 条
  • [41] Recovering reverberation interference striations by a conditional generative adversarial network
    Gao, Bo
    Pang, Jie
    Li, Xiaolei
    Song, Wenhua
    Gao, Wei
    JASA EXPRESS LETTERS, 2021, 1 (05):
  • [42] Semantic Segmentation of Colon Gland with Conditional Generative Adversarial Network
    Mei, Liye
    Guo, Xiaopeng
    Cheng, Chaowei
    2019 9TH INTERNATIONAL CONFERENCE ON BIOSCIENCE, BIOCHEMISTRY AND BIOINFORMATICS (ICBBB 2019), 2019, : 12 - 16
  • [43] Improved Wasserstein conditional generative adversarial network speech enhancement
    Qin, Shan
    Jiang, Ting
    EURASIP JOURNAL ON WIRELESS COMMUNICATIONS AND NETWORKING, 2018,
  • [44] Generative Adversarial Network for Class-Conditional Data Augmentation
    Lee, Jeongmin
    Yoon, Younkyoung
    Kwon, Junseok
    APPLIED SCIENCES-BASEL, 2020, 10 (23): : 1 - 15
  • [45] Improved Wasserstein conditional generative adversarial network speech enhancement
    Shan Qin
    Ting Jiang
    EURASIP Journal on Wireless Communications and Networking, 2018
  • [46] Multi-scale conditional reconstruction generative adversarial network
    Chen, Yanming
    Xu, Jiahao
    An, Zhulin
    Zhuang, Fuzhen
    IMAGE AND VISION COMPUTING, 2024, 141
  • [47] Underwater Image Enhancement Based on Conditional Generative Adversarial Network
    Jin Weipei
    Guo Jichang
    Qi Qing
    LASER & OPTOELECTRONICS PROGRESS, 2020, 57 (14)
  • [48] Using a Conditional Generative Adversarial Network (cGAN) for Prostate Segmentation
    Grall, Amelie
    Hamidinekoo, Azam
    Malcolm, Paul
    Zwiggelaar, Reyer
    MEDICAL IMAGE UNDERSTANDING AND ANALYSIS, MIUA 2019, 2020, 1065 : 15 - 25
  • [49] Self-attention generative adversarial network with the conditional constraint
    Jia Y.
    Ma L.
    Xi'an Dianzi Keji Daxue Xuebao/Journal of Xidian University, 2019, 46 (06): : 163 - 170
  • [50] Preset Conditional Generative Adversarial Network for Massive MIMO Detection
    Yu, Yongzhi
    Zhang, Shiqi
    Shang, Jiadong
    Wang, Ping
    IET SIGNAL PROCESSING, 2023, 2023 (01)