Machine Learning-Based GPR with LBFGS Kernel Parameters Selection for Optimal Throughput Mining in 5G Wireless Networks

被引:1
作者
Isabona, Joseph [1 ]
Imoize, Agbotiname Lucky [2 ,3 ]
Ojo, Stephen [4 ]
Do, Dinh-Thuan [5 ]
Lee, Cheng-Chi [6 ,7 ]
机构
[1] Fed Univ Lokokja, Dept Phys, Lokokja 260101, Nigeria
[2] Univ Lagos, Fac Engn, Dept Elect & Elect Engn, Lagos 100213, Nigeria
[3] Ruhr Univ, Inst Digital Commun, Dept Elect Engn & Informat Technol, D-44801 Bochum, Germany
[4] Anderson Univ, Coll Engn, Dept Elect & Comp Engn, Anderson, SC 29621 USA
[5] Univ Mt Union, Sch Engn, Alliance, OH 44601 USA
[6] Fu Jen Catholic Univ, Res & Dev Ctr Phys Educ Hlth & Informat Technol, Dept Lib & Informat Sci, New Taipei 24205, Taiwan
[7] Asia Univ, Dept Comp Sci & Informat Engn, Taichung 41354, Taiwan
关键词
5G wireless networks; throughput data; kernel hyperparameters selection; Gaussian process regression; machine learning; Bayesian optimization; LBFGS-KPS algorithm; MASSIVE MIMO; OPTIMIZATION;
D O I
10.3390/su15021678
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Considering the ever-growing demand for an efficient method of deductive mining and extrapolative analysis of large-scale dimensional datasets, it is very critical to explore advanced machine learning models and algorithms that can reliably meet the demands of modern cellular networks, satisfying computational efficiency and high precision requirements. One non-parametric supervised machine learning model that finds useful applications in cellular networks is the Gaussian process regression (GPR). The GPR model holds a key controlling kernel function whose hyperparameters can be tuned to enhance its supervised predictive learning and adaptive modeling capabilities. In this paper, the limited-memory Broyden-Fletcher-Goldfarb-Shanno (LBFGS) with kernel parameters selection (KPS) algorithm is employed to tune the GPR model kernel hyperparameters rather than using the standard Bayesian optimization (BOP), which is computationally expensive and does not guarantee substantive precision accuracy in the extrapolative analysis of a large-scale dimensional dataset. In particular, the hybrid GPR-LBFGS is exploited for adaptive optimal extrapolative learning and estimation of throughput data obtained from an operational 5G new radio network. The extrapolative learning accuracy of the proposed GPR-LBFGS with the KPS algorithm was analyzed and compared using standard performance metrics such as the mean absolute error, mean percentage error, root mean square error and correlation coefficient. Generally, results revealed that the GPR model combined with the LBFGS kernel hyperparameter selection is superior to the Bayesian hyperparameter selection method. Specifically, at a 25 m distance, the proposed GPR-LBFGS with the KPS method attained 0.16 MAE accuracy in throughput data prediction. In contrast, the other methods attained 46.06 and 53.68 MAE accuracies. Similarly, at 50 m, 75 m, 100 m, and 160 m measurement distances, the proposed method attained 0.24, 0.18, 0.25, and 0.11 MAE accuracies, respectively, in throughput data prediction, while the two standard methods attained 47.46, 49.93, 29.80, 53.92 and 47.61, 52.54, 53.43, 54.97, respectively. Overall, the GPR-LBFGS with the KPS method would find valuable applications in 5G and beyond 5 G wireless communication systems.
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页数:22
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共 69 条
  • [1] An Overview of Machine Learning within Embedded and Mobile Devices-Optimizations and Applications
    Ajani, Taiwo Samuel
    Imoize, Agbotiname Lucky
    Atayero, Aderemi A.
    [J]. SENSORS, 2021, 21 (13)
  • [2] Ajose S.O., 2013, Int. J. Wirel. Mob. Comput., V6, P165, DOI [DOI 10.1504/IJWMC.2013.054042, 10.1504/IJWMC.2013.054042]
  • [3] Alali Y., 2021, P 2021 INT C ICT SMA, P1
  • [4] Channel stability prediction to optimize signaling overhead in 5G networks using machine learning
    Bakri, Sihem
    Bouaziz, Maha
    Frangoudis, Pantelis A.
    Ksentini, Mien
    [J]. ICC 2020 - 2020 IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS (ICC), 2020,
  • [5] Basha SM, 2019, DEEP LEARNING AND PARALLEL COMPUTING ENVIRONMENT FOR BIOENGINEERING SYSTEMS, P153, DOI 10.1016/B978-0-12-816718-2.00016-6
  • [6] Reconfigurable Intelligent Surfaces: Potentials, Applications, and Challenges for 6G Wireless Networks
    Basharat, Sarah
    Hassan, Syed Ali
    Pervaiz, Haris
    Mahmood, Aamir
    Ding, Zhiguo
    Gidlund, Mikael
    [J]. IEEE WIRELESS COMMUNICATIONS, 2021, 28 (06) : 184 - 191
  • [7] Benassi Romain, 2011, Learning and Intelligent Optimization. 5th International Conference, LION 5. Selected Papers, P176, DOI 10.1007/978-3-642-25566-3_13
  • [8] Berk J, 2020, Arxiv, DOI arXiv:2006.04296
  • [9] Bayesian optimization with safety constraints: safe and automatic parameter tuning in robotics
    Berkenkamp, Felix
    Krause, Andreas
    Schoellig, Angela P.
    [J]. MACHINE LEARNING, 2023, 112 (10) : 3713 - 3747
  • [10] Blum M., 2013, EUROPEAN S ARTIFICIA