An energy-efficient data aggregation approach for cluster-based wireless sensor networks

被引:0
作者
Syed Rooh Ullah Jan
Rahim Khan
Mian Ahmad Jan
机构
[1] Abdul Wali Khan University,Department of Computer Science
来源
Annals of Telecommunications | 2021年 / 76卷
关键词
Wireless sensor network; Data aggregation; Energy efficiency; Accuracy; Outlier detection;
D O I
暂无
中图分类号
学科分类号
摘要
In wireless sensor networks (WSNs), data redundancy is a challenging issue that not only introduces network congestion but also consumes considerable sensor node resources. Data redundancy occurs due to the spatial and temporal correlations among the data gathered by the neighboring nodes. Data aggregation is a prominent technique that performs in-network filtering of the redundant data and accelerates knowledge extraction by eliminating the correlated data. However, most data aggregation techniques have low accuracy because they do not consider the presence of erroneous data from faulty nodes, which represents an open research challenge. To address this challenge, we have proposed a novel, lightweight, and energy-efficient function-based data aggregation approach for a cluster-based hierarchical WSN. Our proposed approach works at two levels: the node level and the cluster head level. At the node level, the data aggregation is performed using the exponential moving average (EMA), and a threshold-based mechanism is adopted to detect any outliers to improve the accuracy of data aggregation. At the cluster head level, we have employed a modified version of the Euclidean distance function to provide highly refined aggregated data to the base station. Our experimental results show that our approach reduces the communication cost, transmission cost, and energy consumption at the nodes and cluster heads and delivers highly refined, fused data to the base station.
引用
收藏
页码:321 / 329
页数:8
相关论文
共 93 条
[1]  
Jan MA(2014)Pasccc: priority-based application-specific congestion control clustering protocol Comput Netw 74 92-102
[2]  
Nanda P(2004)Spatio-temporal correlation: theory and applications for wireless sensor networks Comput Netw 45 245-259
[3]  
He X(2019)An energy-efficient compressive sensing-based clustering routing protocol for WSNs IEEE Sens J 19 3950-3960
[4]  
Liu RP(2017)A distance-based data aggregation technique for periodic sensor networks ACM Trans Sens Netw (TOSN) 13 32-169
[5]  
Vuran MC(2019)EK-means: a new clustering approach for datasets classification in sensor networks Ad Hoc Netw 84 158-802
[6]  
Akan ÖB(2018)Data summarization in the node by parameters (DSNP): local data fusion in an IoT environment Sensors 18 799-3437
[7]  
Akyildiz IF(2011)Prediction-based data aggregation in wireless sensor networks: combining grey model and Kalman filter Comput Commun 34 793-384
[8]  
Wang Q(2017)A distributed delay-efficient data aggregation scheduling for duty-cycled WSNs IEEE Sens J 17 3422-201
[9]  
Lin D(2016)Data aggregation techniques in WSN: survey Procedia Comput Sci 92 378-16
[10]  
Yang P(2015)Issues of data aggregation methods in wireless sensor network: a survey Procedia Comput Sci 49 194-20