A Hybrid LSTM-ResNet Deep Neural Network for Noise Reduction and Classification of V-Band Receiver Signals

被引:6
作者
Arab, Homa [1 ]
Ghaffari, Iman [1 ]
Evina, Romaric Mvone [2 ]
Tatu, Serioja Ovidiu [2 ]
Dufour, Steven [1 ]
机构
[1] Ecole Polytech Montreal, Dept Math & Genie Ind, Montreal, PQ H3T 1J4, Canada
[2] Inst Natl Rech Sci, Telecommun Dept, Montreal, PQ G1K 9A9, Canada
关键词
Receivers; Noise reduction; Phase shift keying; Solid modeling; Quadrature amplitude modulation; Predictive models; Millimeter wave technology; Artificial intelligence; convolutional neural network (CNN); deep learning; denoising; Doppler frequency; long short-term memory (LSTM); machine learning; millimeter wave; modulator; receiver; recurrent neural network (RNN); ResNet; signal classification; signal processing; FRONT-END; DESIGN;
D O I
10.1109/ACCESS.2022.3147980
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Noise reduction is one of the most important process used for signal processing in communication systems. The signal-to-noise ratio (SNR) is a key parameter to consider for minimizing the bit error rate (BER). The inherent noise found in millimeter-wave systems is mainly a combination of white noise and phase noise. Increasing the SNR in wireless data transfer systems can lead to reliability and performance improvements. To address this issue, we propose to use a recurrent neural network (RNN) with a long short-term memory (LSTM) autoencoder architecture to achieve signal noise reduction. This design is based on a composite LSTM autoencoder with a single encoder layer and two decoder layers. A V-band receiver test bench is designed and fabricated to provide a high-speed wireless communication system. Constellation diagrams display the output signals measured for various random sequences of PSK and QAM modulated signals. The LSTM autoencoder is trained in real time using various noisy signals. The trained system is then used to reduce noise levels in the tested signals. The SNR of the designed receiver is of the order of 11.8dB, and it increases to 13.66dB using the three-level LSTM autoencoder. Consequently, the proposed algorithm reduces the bit error rate from 10(-8) to 10(-11). The performance of the proposed algorithm is comparable to other noise reduction strategies. Augmented denoised signals are fed into a ResNet-152 deep convolutional network to perform the final classification. The demodulation types are classified with an accuracy of 99.93%. This is confirmed by experimental measurements.
引用
收藏
页码:14797 / 14806
页数:10
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