A data-aggregation scheme for WSN based on optimal weight allocation

被引:15
作者
Zou, Pinghui [1 ]
Liu, Yun [1 ]
机构
[1] School of Electronic and Information Engineering, Beijing Jiaotong University, Beijing
关键词
Data aggregation; DKC; K-means clustering; Self-adaptive weighted; WSN;
D O I
10.4304/jnw.9.1.100-107
中图分类号
学科分类号
摘要
Since the measuring accuracy and environment of each sensor are different, there must exist difference in the correctness of measurement. If the testing data is not processed and utilized with distinction, it will cause impreciseness to the testing results and lead to errors of the system. It is necessary to selectively distinguish the importance among the sensors, contraposing the situation of each sensor in the testing system and the accuracy of tests. So the related concepts of data aggregation technology in wireless sensor networks and the aggregation algorithm performance evaluation criteria are introduced. The core problem in WSN, aggregation operation for sensing data, is studied deeply. The problems in node data group when the distributed clustering technology is implemented to WSN are also analyzed. Then a distributed K-mean clustering algorithm based on WSN is proposed. On the basis of this improved algorithm, we realize a network data aggregation processing mechanism based on adaptive weighted allocation of WSN. DKC algorithm is mainly used to process the testing data of bottom nodes. When reducing the data redundancy it can provide more accurate field testing information and system status information. It can make rapid packet for the network nodes. The packed data will be used to provide correct judgement, according to the size of its corresponding weight, to acquire more reasonable results. The experiments have demonstrated that our method can greatly decrease the data redundancy of WSN and save large amount of storage resources. The network bandwidth consumption is also reduced. So this scheme has high efficiency and good scalability. © 2014 ACADEMY PUBLISHER.
引用
收藏
页码:100 / 107
页数:7
相关论文
共 20 条
[1]  
Akyildiz I.F., Su W., Wireless sensor networks: A survey, Computer Networks, 38, 4, pp. 393-422, (2002)
[2]  
Huang M.-G., Fan S.-C., Zheng D.-Z., Research progress of multi sensor data fusion technology, Transducer and Micro system Technologies, 29, 3, pp. 5-12, (2010)
[3]  
Guo W.W., Looi M., A Framework of Trust-Energy Balanced Procedure for Cluster Head Selection in Wireless Sensor Networks, Journal of Networks, 7, 10, pp. 1592-1600, (2012)
[4]  
Yuan L.-Y., Zhu Y.-L., Xu T.-W., Multi-layered energy-efficient and delay-reducing chain-based data gathering protocol for wireless sensor network, Journal of PLA University of Science and Technology, 9, 5, pp. 422-426, (2008)
[5]  
Chung-Min C., Agrawal H., Cochinwala M., Et al., Stream query processing for healthcare bio-sensor applications, Proceeding of IEEE Comput. Soc, pp. 791-794, (2004)
[6]  
HyunSoon A., SeungHan L., SangKyung L., Development of a ubiquitous healthcare system implementing real-time connectivity between cardiac patients and medical doctors, Proceedings of IEEE, in. Busan, South Korea, pp. 51-54, (2005)
[7]  
Stanco F., Tanasi D., Gallo G., Augmented Perception of the Past-The Case of Hellenistic Syracuse, Journal of Multimedia, 7, 2, pp. 211-217, (2012)
[8]  
Hung K., Zhang Y.T., Tai B., Wearable medical devices for telehome healthcare, Proceedings of institute of Electrical and Electronics Engineers Inc, pp. 5384-5387, (2004)
[9]  
Zhang Y., Qin C., Xiao L., Applicability of AGA and Weaver indices for natural gas interchangeability in China, Chemical Engineering of Oil & Gas, 42, 1, pp. 30-35, (2013)
[10]  
Victor C., Thomas N., Vasile Teodor D., Configuration tool for a wireless sensor network integrated security framework, Journal of Network and Systems Management, 20, 3, pp. 417-452, (2012)