Real-Time Radio Technology and Modulation Classification via an LSTM Auto-Encoder

Identification of the type of communication technology and/or modulation scheme based on detected radio signal are challenging problems encountered in a variety of applications including spectrum allocation and radio interference mitigation. They are rendered difficult due to a growing number of emi...

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Veröffentlicht in:IEEE transactions on wireless communications 2022-01, Vol.21 (1), p.370-382
Hauptverfasser: Ke, Ziqi, Vikalo, Haris
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Vikalo, Haris
description Identification of the type of communication technology and/or modulation scheme based on detected radio signal are challenging problems encountered in a variety of applications including spectrum allocation and radio interference mitigation. They are rendered difficult due to a growing number of emitter types and varied effects of real-world channels upon the radio signal. Existing spectrum monitoring techniques are capable of acquiring massive amounts of radio and real-time spectrum data using compact sensors deployed in a variety of settings. However, state-of-the-art methods that use such data to classify emitter types and detect communication schemes struggle to achieve required levels of accuracy at a computational efficiency that would allow their implementation on low-cost computational platforms. In this paper, we present a learning framework based on an LSTM denoising auto-encoder designed to automatically extract stable and robust features from noisy radio signals, and infer modulation or technology type using the learned features. The algorithm utilizes a compact neural network architecture readily implemented on a low-cost computational platform while exceeding state-of-the-art accuracy. Results on realistic synthetic as well as over-the-air radio data demonstrate that the proposed framework reliably and efficiently classifies received radio signals, often demonstrating superior performance compared to state-of-the-art methods. Source codes are available at https://github.com/WuLoli/LSTMDAE .
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subjects Algorithms
Coders
Computational modeling
Computer architecture
denoising auto-encoder
Emitters
Feature extraction
Low cost
LSTM
Modulation
Modulation/technology classification
Neural networks
Noise reduction
Phase modulation
Radio frequency interference
Radio signals
Real time
Signal classification
Signal monitoring
Spectrum allocation
Task analysis
Wireless communication
Wireless sensor networks
title Real-Time Radio Technology and Modulation Classification via an LSTM Auto-Encoder
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