Neural Network Based AMP Method for Multi-User Detection in Massive Machine-Type Communication
Abstract
:1. Introduction
2. System Model
- If , the problem has a unique s-sparse solution;
- If ,the solution of the problem is that of the problem.
3. AMP for MUD
4. AMP Based on LAMPnet for MUD
4.1. Studying the Update to Threshold Level
4.2. Detecting Active Users
Algorithm 1: AMP based on LAMPnets. |
Input:, Output: Active users , estimated channel Step 1. Initialize , , , . is an all-zero N-dimensional vetor; Step 2. ; Step 3. Use the n-th network to estimate with as its input; Step 4. ; Step 5. If , then and go back to Step 2; Step 6. Record the recovered signal; Step 7. If , then and go back to Step 2; Step 8. User i is declared to be possibly active if and declared to be inactive otherwise. Apply the criterion to all the recorded D recovered signals and get D sets of possible active users; Step 9. Count the occurrences f of the users in all the L sets. User i is declared to be active if . |
4.3. Channel Estimation
5. Simulation Results and Analysis
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Symbol | Quantity |
---|---|
M | number of antennas at the base station |
N | number of potentially active users |
L | length of the pilot sequence |
D | number of LAMPnets used in LAMPnet-AMP |
K | number of active users |
P | iterations threshold of LAMPnet-AMP |
number of iterations in BPDN-AMP | |
number of iterations in LAMPnet-AMP | |
number of iterations in OMP-MMV |
KR-BPDN-AMP | |
KR-LAMPnet-AMP | |
OMP-MMV |
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Sun, M.; Chen, P. Neural Network Based AMP Method for Multi-User Detection in Massive Machine-Type Communication. Electronics 2020, 9, 1286. https://doi.org/10.3390/electronics9081286
Sun M, Chen P. Neural Network Based AMP Method for Multi-User Detection in Massive Machine-Type Communication. Electronics. 2020; 9(8):1286. https://doi.org/10.3390/electronics9081286
Chicago/Turabian StyleSun, Mengjiang, and Peng Chen. 2020. "Neural Network Based AMP Method for Multi-User Detection in Massive Machine-Type Communication" Electronics 9, no. 8: 1286. https://doi.org/10.3390/electronics9081286
APA StyleSun, M., & Chen, P. (2020). Neural Network Based AMP Method for Multi-User Detection in Massive Machine-Type Communication. Electronics, 9(8), 1286. https://doi.org/10.3390/electronics9081286