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Deep learning based Doppler frequency offset estimation for 5G-NR downlink in HSR scenario
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作者 YANG Lihua WANG Zenghao +1 位作者 ZHANG Jie JIANG Ting 《High Technology Letters》 EI CAS 2022年第2期115-121,共7页
In the fifth-generation new radio(5G-NR) high-speed railway(HSR) downlink,a deep learning(DL) based Doppler frequency offset(DFO) estimation scheme is proposed by using the back propagation neural network(BPNN).The pr... In the fifth-generation new radio(5G-NR) high-speed railway(HSR) downlink,a deep learning(DL) based Doppler frequency offset(DFO) estimation scheme is proposed by using the back propagation neural network(BPNN).The proposed method mainly includes pre-training,training,and estimation phases,where the pre-training and training belong to the off-line stage,and the estimation is the online stage.To reduce the performance loss caused by the random initialization,the pre-training method is employed to acquire a desirable initialization,which is used as the initial parameters of the training phase.Moreover,the initial DFO estimation is used as input along with the received pilots to further improve the estimation accuracy.Different from the training phase,the initial DFO estimation in pre-training phase is obtained by the data and pilot symbols.Simulation results show that the mean squared error(MSE) performance of the proposed method is better than those of the available algorithms,and it has acceptable computational complexity. 展开更多
关键词 fifth-generation new radio(5G-NR) high-speed railway(HSR) deep learning(DL) back propagation neural network(BPNN) doppler frequency offset(DFO)estimation
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