Fast Time-Varying Sparse Channel Estimation Based on Kalman Filter

被引:0
|
作者
Yuan W. [1 ]
Wang J. [1 ]
机构
[1] School of Information Science and Engineering, East China University of Science and Technology, Shanghai
来源
| 2018年 / Science Press卷 / 53期
关键词
Basic expansion model; Channel estimation; Compressed sensing; Kalman filter;
D O I
10.3969/j.issn.0258-2724.2018.04.023
中图分类号
学科分类号
摘要
A fast time-varying sparse channel estimation method based on the Kalman filter is proposed for channel estimation of an orthogonal frequency division multiplexing communication system operating in high-speed railways and mountain areas. Based on the basic expansion model (BEM), compressed sensing (CS) was employed for the estimation of sparse delays, and a Kalman filter (KF) estimator was utilised for estimating the BEM coefficients. The channel gains were then computed easily. The simulation results show that under the same signal-to-ratio (SNR) condition, with the increase in frequency-normalised Doppler shift (FND), the MSE of the new method is superior to that of traditional methods, such as SNR is 20 dB and FND is 0.1, and a 4 dB performance improvement is achieved. Under the same Doppler shift condition, the same result is obtained as that with the increase in SNR, such as FND is 0.2 and MSE is 0.06, and a 6 dB SNR gain is achieved. These results show that the new method is more robust to variation in channel time and stronger against noise compared with traditional methods. © 2018, Editorial Department of Journal of Southwest Jiaotong University. All right reserved.
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页码:835 / 841
页数:6
相关论文
共 17 条
  • [1] Wu J., Fan P., A survey on high mobility wireless communications: challenges, opportunities and solutions, IEEE Access, 4, 1, pp. 450-476, (2016)
  • [2] Fan P., Erdal P., Guest editorial: special issue on high mobility wireless communications, Journal of Modern Transportation, 20, 4, pp. 197-198, (2012)
  • [3] Zhou G., Fan P., Hao L., 0FDM based DFT scrambling vector code division multiple access, Joumal of Southwest Jiaotong University, 52, 1, pp. 148-155, (2017)
  • [4] Roozbeh M., Arash A., Compressive sensing-based pilot design for sparce channel estimation in OFDM systems, IEEE Communications Letters, 21, 1, pp. 4-7, (2017)
  • [5] Lee D., MIMO OFDM channel estimation via bock stagewise orthogonal mnatching pursuit, IEEE Communications Letters, 20, 10, pp. 2115-2118, (2016)
  • [6] Roozbeh M., Arash A., Determinitic pilot design for sparce channel estimation in MISO/multi-user OFDM systems, IEEE Transactions on Wireless Communications, 16, 1, pp. 129-140, (2017)
  • [7] Ye X., Zhu W., Zhang A., Et al., Compressed sensing based on doubly-selective slow-fading channel estimation in ofdm systems cbannel estimation, Journal of Electronics and Information, 37, 1, pp. 169-174, (2015)
  • [8] Tan G., Herfet T., A framework of analyzing OMP-based channel estimations in mobile OFDM systems, IEEE Wireless Communications Letters, 5, 4, pp. 408-411, (2016)
  • [9] Ma X., Yang F., Liu S., Et al., Structured compressive sensing-based channel estimation for time frequency training OFDM systems over doubly selective channel, IEEE Wireless Communications Letters, 6, 2, pp. 266-269, (2017)
  • [10] Chen B., Cui Q., Yang F., Et al., A novel channel estimation method based on Kalman filter compressed sensing for time-varying OFDM system, International Conference on Wireless Communications & Signal Processing, pp. 1-5, (2014)