Abstract:
This research introduces novel federated learning
(FL)-based methods, namely FedAvgAMC, FedPerAMC, and
FedAvgAMCAug, to enhance automatic modulation classification
(AMC) in communication systems. By addressing data heterogeneity,
incorporating higher-order modulation schemes, and
exploring personalized models for clients, these methods overcome
challenges associated with centralized learning and data
leakage. Simulation results demonstrate significant improvements
in accuracy, particularly at low and moderate signal-to-noise
ratios (SNRs). FedAvgAMCAug, a privacy-preserving method,
achieves superior performance, outperforming CentAMC by 18%
in accuracy at an SNR of 5 dB and consistently surpassing
existing learning techniques across all clients and SNR values.
This research highlights the potential of federated learning to
enhance AMC accuracy in real-world scenarios, paving the way
for future optimizations and exploration of techniques to address
data uncertainty for even more robust performance.
Citation:
G. K. Siriwardana, H. D. Jayawardhana, W. U. Bandara, S. Atapattu and V. R. Herath, "Federated Learning for Improved Automatic Modulation Classification: Data Heterogeneity and Low SNR Accuracy," 2023 Moratuwa Engineering Research Conference (MERCon), Moratuwa, Sri Lanka, 2023, pp. 462-467, doi: 10.1109/MERCon60487.2023.10355464.