Neural Network-Based Fixed-Complexity Precoder Selection for Multiple Antenna Systems

被引:0
|
作者
Kim, Jaekwon [1 ]
Lim, Hyo-Sang [1 ]
机构
[1] Yonsei Univ, Div Software, Wonju 26493, South Korea
关键词
Precoder selection; neural network; network pruning; fixed complexity; multiple antenna; DESIGN;
D O I
10.1109/ACCESS.2022.3221800
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
In this paper, we propose a neural network-based precoder selection method for multiple antenna systems that are equipped with maximum likelihood detectors. We train a fully connected neural network by supervised learning with novel soft labels that are derived from the error probability of maximum likelihood detection. The dimension of the input data is reduced by QR decomposition of the channel matrices, thereby reducing the number of nodes of the input layer. Furthermore, the dimension reduction improves the network accuracy. The number of connections between the layers are reduced by applying the network pruning technique, after which the surviving connections are retrained to recover the degraded accuracy due to the pruning. We also optimize the regularization method, considering not only network overfitting but also pruning and retraining. Our method achieves a near optimal bit error performance of the previous sphere decoding (SD)-based symbolic algorithm, of which complexity fluctuates depending on channel matrices. Unlike the conventional SD-based method, the complexity of the proposed method is fixed by the intrinsic characteristic of neural network, which is desirable from the perspective of hardware implementation. And the fixed complexity is lowered by pruning unimportant connections of the networks. With the aid of computer simulations, we show that the fixed complexity of the proposed method is close to the average complexity of the conventional SD-based symbolic algorithm, allowing only negligible degradation of the error performance.
引用
收藏
页码:120343 / 120351
页数:9
相关论文
共 50 条
  • [41] A Lifecycle for Engineering IoT Neural Network-based Systems
    Nascimento, Nathalia
    Alencar, Paulo
    Cowan, Donald
    2021 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2021, : 2427 - 2433
  • [42] NEURAL NETWORK-BASED DESIGN OF CELLULAR MANUFACTURING SYSTEMS
    MALAVE, CO
    RAMACHANDRAN, S
    JOURNAL OF INTELLIGENT MANUFACTURING, 1991, 2 (05) : 305 - 314
  • [43] Neural network-based quality controllers for manufacturing systems
    Chinnam, RB
    Kolarik, WJ
    INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH, 1997, 35 (09) : 2601 - 2620
  • [44] Neural network-based systems for handprint OCR applications
    Garris, MD
    Wilson, CL
    Blue, JL
    IEEE TRANSACTIONS ON IMAGE PROCESSING, 1998, 7 (08) : 1097 - 1112
  • [45] Neural Network-Based Parameter Estimation in Dynamical Systems
    Kastoris, Dimitris
    Giotopoulos, Kostas
    Papadopoulos, Dimitris
    INFORMATION, 2024, 15 (12)
  • [46] Neural network-based calibration of electromagnetic tracking systems
    Kindratenko V.V.
    Sherman W.R.
    Virtual Reality, 2005, 9 (1) : 70 - 78
  • [47] Implementation of a neural network-based digital beamformer for a UMTS smart antenna
    García, LG
    Ariet, LDH
    Rodríguez-Osorio, RM
    2004 IEEE SENSOR ARRAY AND MULTICHANNEL SIGNAL PROCESSING WORKSHOP, 2004, : 119 - 123
  • [48] Convolutional Neural Network-Based Radar Antenna Scanning Period Recognition
    Wang, Bin
    Wang, Shunan
    Zeng, Dan
    Wang, Min
    ELECTRONICS, 2022, 11 (09)
  • [49] Performance analysis of a fixed-complexity sphere decoder in high-dimensional MIMO systems
    Barbero, Luis G.
    Thompson, John S.
    2006 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING, VOLS 1-13, 2006, : 4227 - 4230
  • [50] A Neural Network-Based Network Selection for QUIC to Enrich Gaming in NextGen Wireless Network
    Kanagarathinam, Madhan Raj
    Sivalingam, Krishna M.
    Lee, Sunghee
    IEEE TRANSACTIONS ON CONSUMER ELECTRONICS, 2024, 70 (01) : 4536 - 4547