Publication | Open Access
Modulation Mode Recognition Method of Non-Cooperative Underwater Acoustic Communication Signal Based on Spectral Peak Feature Extraction and Random Forest
18
Citations
11
References
2022
Year
EngineeringUnderwater Acoustic CommunicationAcoustic CommunicationsPattern RecognitionBiometricsFeature ExtractionModulation Mode RecognitionUnderwater AcousticModulation CodingMulti-channel ProcessingWaveform AnalysisModulation TechniqueRadio Frequency CommunicationsUnderwater CommunicationSignal ProcessingRandom ForestSpeech Recognition
The modulation mode recognition of non-cooperative underwater acoustic (UWA) communication signal faces great challenges due to the influence of the UWA channel and the demand for efficient recognition. This work proposes a recognition method for UWA orthogonal frequency division multiplexing (OFDM), binary frequency shift keying (2FSK), four-frequency shift keying (4FSK), and eight-frequency shift keying (8FSK) by using spectral peak feature extraction combined with random forest (RF). First, a new spectral peak feature extraction method is proposed. In this method, pre-processing, waveform optimization, and feature extraction are used to ensure that the extracted feature maintains high robustness in the UWA channel. Then, we designed an RF classifier that can meet the demand for high-efficiency recognition and good performance. Finally, simulation and experimental results verified the feasibility of the recognition method.
| Year | Citations | |
|---|---|---|
Page 1
Page 1