Abstract

Automatic modulation classification (AMC) is an essential factor in dynamic spectrum access to fulfill the spectrum demand of 5G wireless communications for achieving high data rate and low latency. Many deep learning (DL)-based AMC methods have achieved improved accuracy for classifying analog modulation schemes, single-carrier-based modulation schemes, and multi-carrier signals using several DL architectures such as the convolutional neural network (CNN) and long-short term memory (LSTM). However, most conventional DL-based AMC methods have confused the orthogonal frequency multiplexing division (OFDM)-based signals with different OFDM useful symbol lengths. To resolve the issue, we propose a CNN model operating on the fast Fourier transformation window bank (FWB) to extract the useful symbol length in OFDM, which represents the identification of each OFDM-based wireless communication technology. After extracting the OFDM useful symbol length, we propose a DL-based AMC system combined with FWB and in-phase and quadrature-phase signals to classify the OFDM symbol length and single-carrier modulation schemes simultaneously. Furthermore, we explore the constraints of the FWB parameters according to the length and the fast Fourier transformation (FFT) size of the OFDM signal to achieve good classification accuracy through the experiment. We constructed a dataset by generating OFDM signals of different lengths while changing the FFT size in a fixed bandwidth and selecting only quadrature amplitude modulation (QAM) schemes from RadioML2016.10a. Experimental results show the improved classification accuracy by about 30% over conventional classifiers in additive white Gaussian noise, synchronization impairments, and fading environments.

Highlights

  • T HE fifth generation (5G) wireless communication system is an attractive technology to achieve high performance in terms of high data rate and low latency

  • MODIFIED RADIOML2016.10A Based on RadioML2016.10a, which generated the singlecarrier-based modulation dataset considered in the real environments, we selected only the modulation method used for the subcarrier in the Orthogonal frequency-division multiplexing (OFDM)-based wireless communication system and configured single-carrier modulation dataset as QPSK, 16QAM, 32QAM, and 64QAM

  • We proposed an fast Fourier transform (FFT) window bank consisted of several different FFT window lengths and fixed FFT size and the convolutional neural network (CNN) model operating on in-phase and quadrature phase (IQ) and Fourier transformation window banks (FWB) simultaneously to improve the classification accuracy for identifying the OFDM-based signal such as longterm evolution (LTE), digital video broadcasting (DVB), WLAN, and 5G, which the prior works have confused

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Summary

INTRODUCTION

T HE fifth generation (5G) wireless communication system is an attractive technology to achieve high performance in terms of high data rate and low latency. Many deep learning (DL)-based AMC schemes have been proposed to improve the classification accuracy in the dynamic channel using the raw time-series in-phase & quadrature phase (IQ) signals without hand-crafted expert features. Peihan et al [15] proposed a waveform-spectrum multimodal fusion (WSMF) method that extracts features from multiple information using ResNet. The aforementioned DL-based AMC systems have improved performance for classifying between single-carrier-based modulation classification and multi-carrier signals. We propose a CNN-based AMC using a fast Fourier transform window banks (FWB) to identify the OFDM-based wireless communication technology with different OFDM useful symbol lengths. We propose a CNN model that operates on the time-domain IQ data and FWB for classifying single carrier modulation schemes and the OFDM useful symbol length at the same time.

RELATED WORK
TRANSMITTER
WIRELESS CHANNEL
RECEIVER
SIGNAL CLASSIFICATION MODELS
BASELINE MODEL
DATASET GENERATION
RESULTS AND DISCUSSION
DISCUSSION ABOUT THE LIMITATION OF THE PROPOSED IQ-FWB-CNN
CONCLUSION

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