Multi-User Joint Detection Using Bi-Directional Deep Neural Network Framework in NOMA-OFDM System
Abstract
:1. Introduction
- Multiuser uplink CE and signal detection for NOMA-OFDM wireless communication is considered. The CE and signal detection is performed by the proposed Bi-LSTM model over the Rayleigh fading channel.
- The proposed Bi-LSTM model can jointly estimate and detect the transmission data from multiple UE signals directly instead of the traditional SIC method.
- To observe the effectiveness of the proposed model, a comparative analysis of convolutional neural network (CNN) and the proposed model in terms of SER is performed.
- Using the Monte Carlo simulation, the SER performance of Bi-LSTM is evaluated in terms of different SNR. It is observed that the performance of the proposed model is comparable to the outage performance of the conventional NOMA-SIC methods, including least square (LS) and minimum mean square error (MMSE) and CNN model.
2. Related Works
3. System Model
3.1. Signal and Channel Model
3.2. Problem Illustration
4. Proposed Deep-Learning Model
4.1. Data Generation
4.2. Model Architecture
4.2.1. Network Description
4.2.2. Internal Structure of LSTM
4.2.3. Offline Training and Online Testing Operation of the Model
Algorithm 1 BiLTSM Training Process |
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4.2.4. Testing Process
5. Simulation Results and Discussion
5.1. Performance Evaluation
5.2. Simulations Results
5.3. Complexity Analysis
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Parameter | Value |
---|---|
Simulation tool | MATLAB Deep-learning toolboxTM |
Operating system | Windows 10 Pro |
OFDM subcarriers | 64 |
Pilot symbols | 64 |
Channel path | 20 |
Noise | AWGN |
Length of CP | 20 |
Channel fading | Rayleigh channel |
NOMA UEs | 2 |
Modulation type | QPSK |
Total number of packets | 50,000 |
Total model layers | 5 |
Epochs number | 100 |
Learning rate | 0.01 |
Minibatch size | 2000 |
Optimizer | ADAM |
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Rahman, M.H.; Sejan, M.A.S.; Yoo, S.-G.; Kim, M.-A.; You, Y.-H.; Song, H.-K. Multi-User Joint Detection Using Bi-Directional Deep Neural Network Framework in NOMA-OFDM System. Sensors 2022, 22, 6994. https://doi.org/10.3390/s22186994
Rahman MH, Sejan MAS, Yoo S-G, Kim M-A, You Y-H, Song H-K. Multi-User Joint Detection Using Bi-Directional Deep Neural Network Framework in NOMA-OFDM System. Sensors. 2022; 22(18):6994. https://doi.org/10.3390/s22186994
Chicago/Turabian StyleRahman, Md Habibur, Mohammad Abrar Shakil Sejan, Seung-Geun Yoo, Min-A Kim, Young-Hwan You, and Hyoung-Kyu Song. 2022. "Multi-User Joint Detection Using Bi-Directional Deep Neural Network Framework in NOMA-OFDM System" Sensors 22, no. 18: 6994. https://doi.org/10.3390/s22186994
APA StyleRahman, M. H., Sejan, M. A. S., Yoo, S. -G., Kim, M. -A., You, Y. -H., & Song, H. -K. (2022). Multi-User Joint Detection Using Bi-Directional Deep Neural Network Framework in NOMA-OFDM System. Sensors, 22(18), 6994. https://doi.org/10.3390/s22186994