Path Loss Prediction Based on Machine Learning Techniques: Principal Component Analysis, Artificial Neural Network, and Gaussian Process

被引:86
|
作者
Jo, Han-Shin [1 ]
Park, Chanshin [2 ]
Lee, Eunhyoung [3 ]
Choi, Haing Kun [4 ]
Park, Jaedon [3 ]
机构
[1] Hanbat Natl Univ, Dept Elect & Control Engn, Dajeon 34158, South Korea
[2] Univ Southern Calif, Dept Comp Sci, Los Angeles, CA 90089 USA
[3] Agcy Def Dev, Daejeon 34186, South Korea
[4] TnB Radio Tech, Seoul 08511, South Korea
关键词
wireless sensor network; path loss; machine learning; artificial neural network (ANN); principle component analysis (PCA); Gaussian process; multi-dimensional regression; shadowing; feature selection; QUASI-NEWTON MATRICES; REPRESENTATIONS; APPROXIMATION;
D O I
10.3390/s20071927
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Although various linear log-distance path loss models have been developed for wireless sensor networks, advanced models are required to more accurately and flexibly represent the path loss for complex environments. This paper proposes a machine learning framework for modeling path loss using a combination of three key techniques: artificial neural network (ANN)-based multi-dimensional regression, Gaussian process-based variance analysis, and principle component analysis (PCA)-aided feature selection. In general, the measured path loss dataset comprises multiple features such as distance, antenna height, etc. First, PCA is adopted to reduce the number of features of the dataset and simplify the learning model accordingly. ANN then learns the path loss structure from the dataset with reduced dimension, and Gaussian process learns the shadowing effect. Path loss data measured in a suburban area in Korea are employed. We observe that the proposed combined path loss and shadowing model is more accurate and flexible compared to the conventional linear path loss plus log-normal shadowing model.
引用
收藏
页数:23
相关论文
共 50 条
  • [41] Neural network learning for principal component analysis: A multistage decomposition approach
    Feng, DZ
    Zhang, XD
    Bao, Z
    CHINESE JOURNAL OF ELECTRONICS, 2004, 13 (01): : 1 - 7
  • [42] Predicting octane numbers relying on principal component analysis and artificial neural network
    Tipler, S.
    D'Alessio, G.
    Van Haute, Q.
    Parente, A.
    Contino, F.
    Coussement, A.
    COMPUTERS & CHEMICAL ENGINEERING, 2022, 161
  • [44] Principal component analysis based probability neural network optimization
    Xing, Jie
    Xiao, Deyun
    Yu, Jiaxiang
    ADVANCES IN NEURAL NETWORKS - ISNN 2007, PT 2, PROCEEDINGS, 2007, 4492 : 1072 - +
  • [45] Water quality modelling using principal component analysis and artificial neural network
    Ibrahim, Aminu
    Ismail, Azimah
    Juahir, Hafizan
    Iliyasu, Aisha B.
    Wailare, Balarabe T.
    Mukhtar, Mustapha
    Aminu, Hassan
    MARINE POLLUTION BULLETIN, 2023, 187
  • [46] Online Signature Recognition Using Principal Component Analysis and Artificial Neural Network
    Hwang, Seung-Jun
    Park, Seung-Je
    Baek, Joong-Hwan
    PROCEEDINGS OF THE INTERNATIONAL CONFERENCE OF COMPUTATIONAL METHODS IN SCIENCES AND ENGINEERING 2016 (ICCMSE-2016), 2016, 1790
  • [47] Right Whale Detection Using Artificial Neural Network and Principal Component Analysis
    Pylypenko, Kostiantyn
    2015 IEEE 35TH INTERNATIONAL CONFERENCE ON ELECTRONICS AND NANOTECHNOLOGY (ELNANO), 2015, : 370 - 373
  • [48] Efficient Neural Network Based Principal Component Analysis Algorithm
    Pandey, Padmakar
    Chakraborty, Akash
    Nandi, G. C.
    2018 CONFERENCE ON INFORMATION AND COMMUNICATION TECHNOLOGY (CICT'18), 2018,
  • [49] Correlation analysis and prediction of power network loss based on mutual information and artificial neural network
    Bai, Jianghong
    Jiang, Mu
    Liu, Liping
    Sun, Yunchao
    Wang, Yuxing
    Zhang, Jiaan
    THIRD INTERNATIONAL CONFERENCE ON ENERGY ENGINEERING AND ENVIRONMENTAL PROTECTION, 2019, 227
  • [50] Comparative Analysis of a Principal Component Analysis-Based and an Artificial Neural Network-Based Method for Baseline Removal
    Carvajal, Roberto C.
    Arias, Luis E.
    Garces, Hugo O.
    Sbarbaro, Daniel G.
    APPLIED SPECTROSCOPY, 2016, 70 (04) : 604 - 617