An improved adaptive dual prediction scheme for reducing data transmission in wireless sensor networks

被引:0
作者
Hidaya Liazid
Mohamed Lehsaini
Abdelkrim Liazid
机构
[1] University of Tlemcen,STIC Laboratory
[2] University of Tlemcen,Science Faculty
[3] ENP-Oran Maurice-Audin,LTE Laboratory
来源
Wireless Networks | 2019年 / 25卷
关键词
Wireless sensor networks; Data prediction; Dual prediction scheme; Cloud computing; Autoregressive models;
D O I
暂无
中图分类号
学科分类号
摘要
Currently one of the main problem for wireless networks is the medium access control. Hence, the number of data transmissions in wireless sensor networks should be optimized to support more applications and a higher diversity of sensed parameters. In addition, minimizing energy consumption of sensor nodes constitutes one of the main ways to prolong network lifetime. One way to achieve this objective is the exploitation of data prediction technique. This paper presents an innovative idea improving the adaptive dual prediction algorithm without recourse to the data history table to update the model parameters when it drifts. The idea is to exploit immediately the new model parameters performed from the stored ones corresponding to the models used previously during the past prediction phases and eliminated when the threshold imposed by the user exceeded. We carried out simulations using real data of meteorological parameters. We show that our approach achieves up to 99% communication reduction with no significant loss in accuracy.
引用
收藏
页码:3545 / 3555
页数:10
相关论文
共 42 条
[1]  
Samarah S(2015)A data predication model for integrating wireless sensor networks and cloud computing Procedia Computer Science 52 1141-1146
[2]  
Raza U(2015)Practical data prediction for real-world wireless sensor networks IEEE Transactions on Knowledge and Data Engineering 27 2231-2244
[3]  
Camerra A(2016)Data prediction, compression, and recovery in clustered wireless sensor networks for environmental monitoring applications Information Sciences 329 800-818
[4]  
Murphy AL(2009)Photovoltaic scavenging systems: Modeling and optimization Microelectronics Journal 40 1337-1344
[5]  
Palpanas T(2016)A survey about prediction-based data reduction in wireless sensor networks ACM Computing Surveys 49 35-1071
[6]  
Picco GP(2011)Prediction or not? An energy-efficient framework for clustering-based data collection in wireless sensor networks IEEE Transactions on Parallel and Distributed Systems 22 1064-72
[7]  
Wu M(2010)Analyzing MAC protocols for low data-rate applications ACM Transactions on Sensor Networks 7 34-2278
[8]  
Tan L(2017)The impact of dual prediction schemes on the reduction of the number of transmissions in sensor networks Computer Communications 112 58-933
[9]  
Xiong N(2015)A prediction-based clustering algorithm for tracking targets in quantized areas for wireless sensor networks Wireless Networks 21 2263-177
[10]  
Brunelli D(2017)RLSP: A signal prediction algorithm for energy conservation in wireless sensor networks Wireless Networks 23 919-687