Semi-supervised manifold learning based on polynomial mapping for localization in wireless sensor networks

被引:22
作者
Xu, Hao [1 ]
机构
[1] China West Normal Univ, Sch Math & Informat, Nanchong 637009, Peoples R China
关键词
Manifold learning; Polynomial mapping; Localization; Pair-wise distance; Sparse representation; LEAST-SQUARES; ALGORITHM; LOCATION; POWER; TOA; WSN;
D O I
10.1016/j.sigpro.2020.107570
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Localization of sensor nodes is becoming an interesting research area in wireless sensor networks(WSNs). In recent years, some localization algorithms are presented based on manifold learning which can achieve good performance. In this paper, based on the need of practical application and the development of manifold learning theory in WSNs, the localization problem is considered for fast determining the locations of unknown nodes in large scale WSNs. For this purpose, a new semi-supervised manifold learning algorithm is proposed based on polynomial mapping which is the combination of Gaussian kernel embedding and polynomial kernel embedding algorithms. This method is to compute a polynomial mapping function between the high dimensional location data space and the low dimensional physical space, which can obtain an explicit nonlinear feature mapping and has a high discriminative ability. At last, comparing with some related localization approaches, the performance of the proposed algorithm is evaluated and analyzed under different signal noise, anchor nodes, and communication range, respectively. In terms of the root-mean-square error and computational complexity, the experiment results demonstrate that the proposed algorithm has faster speed for large scale sensor nodes and higher accuracy with a small amount of known nodes. (C) 2020 Published by Elsevier B.V.
引用
收藏
页数:11
相关论文
共 54 条
[21]   Relative Positioning via Iterative Locally Linear Embedding: A Distributed Approach Toward Manifold Learning Technique [J].
Khan, Muhammad Waqas .
IEEE Sensors Letters, 2017, 1 (06)
[22]   Machine learning algorithms for wireless sensor networks: A survey [J].
Kumar, D. Praveen ;
Amgoth, Tarachand ;
Annavarapu, Chandra Sekhara Rao .
INFORMATION FUSION, 2019, 49 :1-25
[23]   A Novel Localization Algorithm Based on Isomap and Partial Least Squares for Wireless Sensor Networks [J].
Li, Bing ;
He, Yigang ;
Guo, Fengming ;
Zuo, Lei .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2013, 62 (02) :304-314
[24]   Outlier Suppression via Non-Convex Robust PCA for Efficient Localization in Wireless Sensor Networks [J].
Li, Xiang ;
Ding, Shuxue ;
Li, Yujie .
IEEE SENSORS JOURNAL, 2017, 17 (21) :7053-7063
[25]   Super-resolution TOA estimation with diversity for indoor geolocation [J].
Li, XR ;
Pahlavan, K .
IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, 2004, 3 (01) :224-234
[26]   Analysis of hyperbolic and circular positioning algorithms using stationary signal-strength-difference measurements in wireless communications [J].
Liu, BC ;
Lin, KH ;
Wu, JC .
IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2006, 55 (02) :499-509
[27]   Distance difference error correction by least square for stationary signal-strength-difference-based hyperbolic location in cellular communications [J].
Liu, Bo-Chieh ;
Lin, Ken-Huang .
IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2008, 57 (01) :227-238
[28]   Local Patches Alignment Embedding Based Localization for Wireless Sensor Networks [J].
Liu, Yang ;
Chen, Jing ;
Zhan, Yi-ju .
WIRELESS PERSONAL COMMUNICATIONS, 2013, 70 (01) :373-389
[29]   A Distributed Electricity Trading System in Active Distribution Networks Based on Multi-Agent Coalition and Blockchain [J].
Luo, Fengji ;
Dong, Zhao Yang ;
Liang, Gaoqi ;
Murata, Junichi ;
Xu, Zhao .
IEEE TRANSACTIONS ON POWER SYSTEMS, 2019, 34 (05) :4097-4108
[30]   Sparse-Adaptive Hypergraph Discriminant Analysis for Hyperspectral Image Classification [J].
Luo, Fulin ;
Zhang, Liangpei ;
Zhou, Xiaocheng ;
Guo, Tan ;
Cheng, Yanxiang ;
Yin, Tailang .
IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2020, 17 (06) :1082-1086