Journal on Communications ›› 2022, Vol. 43 ›› Issue (5): 166-176.doi: 10.11959/j.issn.1000-436x.2022097
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Yong LIAO, Shiyi WANG
Revised:
2022-04-02
Online:
2022-05-25
Published:
2022-05-01
Supported by:
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Yong LIAO, Shiyi WANG. CSI feedback algorithm based on RM-Net for massive MIMO systems in high-speed mobile environment[J]. Journal on Communications, 2022, 43(5): 166-176.
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压缩率 | DCT-OMP/s | DCT-SP/s | FFT-OMP/s | FFT-SP/s | CsiNet/s | RM-Net/s |
0.046 111 | 0.113 320 | 0.354 618 | 0.509 470 | 0.000 041 | 0.000 050 | |
0.029 846 | 0.090 926 | 0.089 616 | 0.210 245 | 0.000 039 | 0.000 058 | |
0.019 217 | 0.077 054 | 0.053 133 | 0.166 253 | 0.000 038 | 0.000 670 | |
0.013 105 | 0.051 884 | 0.032 966 | 0.110 745 | 0.000 037 | 0.000 059 | |
0.010 936 | 0.002 812 | 0.025 075 | 0.005 312 | 0.000 037 | 0.000 620 |
"
压缩率 | DCT-OMP/s | DCT-SP/s | FFT-OMP/s | FFT-SP/s | CsiNet/s | RM-Net/s |
0.058 612 | 0.139 869 | 0.385 385 | 0.553 002 | 0.000 029 | 0.000 053 | |
0.036 871 | 0.107 178 | 0.110 933 | 0.243 348 | 0.000 027 | 0.000 068 | |
0.024 685 | 0.095 483 | 0.066 412 | 0.198 248 | 0.000 021 | 0.000 044 | |
0.017 630 | 0.065 788 | 0.042 496 | 0.127 908 | 0.000 025 | 0.000 058 | |
0.014 217 | 0.073 280 | 0.029 348 | 0.046 163 | 0.000 026 | 0.000 051 |
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