Data Fusion in Wireless Communication Network Node Positioning

Authors

  • Ya Luo School of Computer Science and Engineering, Chongqing University of Technology,Chongqing,400054,China
  • Xiaoyang Liu School of Computer Science and Engineering, Chongqing University of Technology,Chongqing,400054,China
  • Chao Liu School of Computer Science and Engineering, Chongqing University of Technology,Chongqing,400054,China

DOI:

https://doi.org/10.14738/tnc.66.5833

Keywords:

data fusion, algorithm design, mathematics modeling, wireless sensor network

Abstract

 Aiming at the problems of low localization accuracy, high energy consumption and delay of transmission in wireless sensor networks, a wireless sensor network data fusion method is proposed. Combined with the theory of D-S argument, the wireless sensor network system model is first constructed. Then based on the analysis of ACO (Ant Colony Optimization) and MST (Minimum Spanning Tree) methods, a wireless sensor network data fusion method is proposed. The simulation results show that the larger the number of nodes in WSN is, the larger the energy consumption and delay are. As the moving speed of Sink node increases, the average transmission delay decreases and the useful data rate increases. The average energy The consumption is also gradually increasing; the performance of proposed WSN data fusion method is better than that of ACO and MST.

References

(1) Behrouz P, Nima J N.Data aggregation mechanisms in the Internet of things:A systematic review of the literature and recommendations for future research[J].Journal Netw Comput Appl,2017,97:23.

(2) Bo qian,Ting ma,Enbing song. Sensor selection problem for hypothesis testing in wireless sensor networks [J]. Journal of Sichuan University,2018,55:7-12.

(3) Xiong L, Dandan Z, Laurence T Y, et al.A kernel machine-based secure data sensing and fusion scheme in wireless sensor networks for the cyber-physical systems[J].Future Gener Comp Sy,2016, 61:85.

(4) Andrea A, Marco M, Gianluigi F.Information fusion for efficient target detection in large-scale surveillance Wireless Sensor Networks[J].Inform Fusion, 2017, 38:55.

(5) Ricardo S C, Ciaran M G.Decentralised Peer-to-Peer data dissemination in Wireless Sensor Networks[J].Pervasive Mob Comput, 2017,40:242.

(6) Diego S, Gines E A, et al.A hybrid intrusion detection system for virtual jamming attacks on wireless networks[J].Measurement, 2017, 9:79.

(7) Xiaoyu C, Ran J.Statistical modeling for visualization evaluation through data fusion[J].Appl Ergon, 2017,65: 551.

(8) Fatima T Z, Kamalrulnizam A B, Adnan A, Mohsin A T.Routing protocols in wireless body sensor networks: A comprehensive survey[J].Journal Netw and Comput Appl, 2017, 99:73.

(9) Yunfeng H, Jucheng Z, Dajun S.Error control and adjustment method for underwater wireless sensor network localization[J].Appl Acoust, 2018, 130:293.

(10) Mohamed E F, Abderrahim B H, Mostafa S. Mobile Agent Protocol based energy aware data Aggregation for wireless sensor networks[J].Procedia Comput Sci,2017, 113:25.

(11) Li L, Wang Y, Guojun W.Intelligent fusion of information derived from received signal strength and inertial measurements for indoor wireless localization[J].AEU-Int J Electron C, 2016, 70:1105.

(12) Keyur P, Devesh C J.Concealed data aggregation in wireless sensor networks: A comprehensive survey[J].Comput Netw, 2016, 103:207.

(13) Feng G, Zhao H, Gu F, Needham P, Ball A D.Efficient implementation of envelope analysis on resources limited wireless sensor nodes for accurate bearing fault diagnosis[J].Measurement, 2017, 110:307.

(14) ai K, Vasileios M, Ioannis S, Feng B.Improved distributed particle filters for tracking in a wireless sensor network[J].Comput Stat & Data An, 2018, 117:90.

(15) Diego V Q, Marcelo S A, Ruan D G, et al.Survey and systematic mapping of industrial Wireless Sensor Networks[J].J Netw Comput Appl, 2017, 97:96.

(16) Ioannis K, Sotiris N, Theofanis P R, et al.An algorithmic study in the vector model for Wireless Power Transfer maximization[J].Pervasive Mob Comput, 2017,42:108.

(17) Habib M A.A unified framework for image-coverage and data collection in heterogeneous wireless sensor networks[J].J Parallel Distr Com, 2016, 89:37.

(18) Mohammad M. A, Ali A P, Vahid A. An efficient algorithm for multisensory data fusion under uncertainty condition[J].J Electr Syst Inf Technol, 2017,4: 269.

(19) Taj R S,Huansheng N,Haodi P,Zahid M.DPCA: data prioritization and capacity assignment in wireless sensor networks[J].IEEE Access,2017,5:14991.

(20) Siyao C,Zhipeng C,Jianzhong L,Hong G.Extracting Kernel dataset from big sensory Data in wireless sensor networks[J].IEEE T Knowl Data En,2017,29:813.

(21) Sadia D,Awais A,Anand P,et al.A Cluster-Based Data Fusion Technique to Analyze Big Data in Wireless Multi-Sensor System[J].IEEE Access,2017,5:5069.

(22) Fan W,Sining W, Kunpeng W,Xiaopeng H.Energy-efficient clustering using correlation and random update based on data change rate for wireless sensor networks[J]. IEEE Sens J,2016, 16:5471.

(23) Jonathan C K, Abraham O F. Radio Frequency Energy Harvesting and Data Rate Optimization in Wireless Information and Power Transfer Sensor Networks[J].IEEE Sens J,2017, 17:4862.

(24) Nguyen C L, Dinh T H,Ping W, et al.Data collection and wireless communication in Internet of Things (IoT) using economic analysis and pricing models: a survey[J].IEEE Commun Surv Tut,2016, 18:2546.

(25) Sadia D,Awais A,Anand P.A cluster-based data fusion technique to analyze big data in wireless multi-Sensor system[J].IEEE Access, 2017, 5:5069.

(26) Kevin W,Ashish P.Location data analytics in wireless lighting systems[J].IEEE Sens J,2016, 16:2683.

(27) Luca F,Rebecca M,Azzedine B,Antonio C. Scalable and mobile context data retrieval and distribution for community response heterogeneous wireless networks[J].IEEE Commun Mag,2016, 54:101.

(28) Zaaimia M Z, Touhami R, Talbi L, Nedil M, Yagoub M C.60-GHz statistical channel characterization for wireless data centers[J].IEEE Anten Wirel Pr,2016, 15:976.

(29) Sohail Jabbar Kaleem R. Malik,Mudassar Ahmad,Omar Aldabbas,et al.A Methodology of Real-Time Data Fusion for Localized Big Data Analytics[J]. IEEE Access,2018,6:24510-24520.

(30) Hao Chen,Xinggan Zhang,Qingsi Wang,Yechao Bai. Efficient Data Fusion Using Random Matrix Theory[J].IEEE Signal Processing Letters,2018,25(5):605-609.

(31) Chia-Hsiang Lin, Fei Ma,Chong-Yung Chi, Chih-Hsiang Hsieh. A Convex Optimization-Based Coupled Nonnegative Matrix Factorization Algorithm for Hyperspectral and Multispectral Data Fusion[J]. IEEE Transactions on Geoscience and Remote Sensing, 2018,56(3):1652-1667.

(32) Yan Wang,Shuang Cang,Hongnian Yu. A Data Fusion-Based Hybrid Sensory System for Older People’s Daily Activity and Daily Routine Recognition[J]. IEEE Sensors Journal,2018 ,18(16): 6874-6888.

(33) Zhibin Sun, John Davis,Wei Gao. Estimating Error Covariance and Correlation Region in UV Irradiance Data Fusion by Combining TOMS-OMI and UVMRP Ground Observations[J]. IEEE Transactions on Geoscience and Remote Sensing, 2018,56(1): 355-370.

(34) Chaoqun Yang,Li Feng,Heng Zhang, Shibo He,Zhiguo Shi. A Novel Data Fusion Algorithm to Combat False Data Injection Attacks in Networked Radar Systems[J]. IEEE Transactions on Signal and Information Processing over Networks, 2018,4(1):125-136.

(35) Edgar A. Bernal, Xitong Yang,Qun Li,Jayant Kumar,Sriganesh Madhvanath,Palghat Ramesh,Raja Bala. Deep Temporal Multimodal Fusion for Medical Procedure Monitoring Using Wearable Sensors[J]. IEEE Transactions on Multimedia ,2018 ,20(1):107-118.

(36) Changyue Song,Kaibo Liu,Xi Zhang.Integration of Data-Level Fusion Model and Kernel Methods for Degradation Modeling and Prognostic Analysis[J]. IEEE Transactions on Reliability, 2018 ,67(2): 640-650.

(37) Onur Ozdemir,Thomas G. Allen,Sora Choi,Thakshila Wimalajeewa, Pramod K. Varshney. Copula Based Classifier Fusion Under Statistical Dependence[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2018,40(11): 2740-2748.

Downloads

Published

2019-01-01

How to Cite

Luo, Y., Liu, X., & Liu, C. (2019). Data Fusion in Wireless Communication Network Node Positioning. Discoveries in Agriculture and Food Sciences, 6(6), 87. https://doi.org/10.14738/tnc.66.5833