Deep Multi-Emitter Spectrum Occupancy Mapping that is Robust to the
Number of Sensors, Noise and Threshold
- URL: http://arxiv.org/abs/2212.10444v1
- Date: Sun, 27 Nov 2022 14:08:11 GMT
- Title: Deep Multi-Emitter Spectrum Occupancy Mapping that is Robust to the
Number of Sensors, Noise and Threshold
- Authors: Abbas Termos and Bertrand Hochwald
- Abstract summary: One of the primary goals in spectrum occupancy mapping is to create a system that is robust to assumptions about the number of sensors, occupancy threshold (in dBm), sensor noise, number of emitters and the propagation environment.
We show that such a system may be designed with neural networks using a process of aggregation to allow a variable number of sensors during training and testing.
- Score: 32.880113150521154
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: One of the primary goals in spectrum occupancy mapping is to create a system
that is robust to assumptions about the number of sensors, occupancy threshold
(in dBm), sensor noise, number of emitters and the propagation environment. We
show that such a system may be designed with neural networks using a process of
aggregation to allow a variable number of sensors during training and testing.
This process transforms the variable number of measurements into log-likelihood
ratios (LLRs), which are fed as a fixed-resolution image into a neural network.
The use of LLRs provides robustness to the effects of noise and occupancy
threshold. In other words, a system may be trained for a nominal number of
sensors, threshold and noise levels, and still operate well at various other
levels without retraining. Our system operates without knowledge of the number
of emitters and does not explicitly attempt to estimate their number or power.
Receiver operating curves with realistic propagation environments using
topographic maps with commercial network design tools show how performance of
the neural network varies with the environment. The use of low-resolution
sensors in this system does not significantly hurt performance.
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