JOURNAL BROWSE
Search
Advanced SearchSearch Tips
Data Compression Method for Reducing Sensor Data Loss and Error in Wireless Sensor Networks
facebook(new window)  Pirnt(new window) E-mail(new window) Excel Download
 Title & Authors
Data Compression Method for Reducing Sensor Data Loss and Error in Wireless Sensor Networks
Shin, DongHyun; Kim, Changhwa;
  PDF(new window)
 Abstract
Since WSNs (Wireless Sensor Networks) applied to their application areas such as smart home, smart factory, environment monitoring, etc., depend on sensor data, the sensor data is the most important among WSN components. The resources of each node consisting of WSN are extremely limited in energy, hardware and so on. Due to these limitation, communication failure probabilities become much higher and the communication failure causes data loss to occur. For this reason, this paper proposes 2MC (Maximum/Minimum Compression) that is a method to compress sensor data by selecting circular queue-based maximum/minimum sensor data values. Our proposed method reduces sensor data losses and value errors when they are recovered. Experimental results of 2MC method show the maximum/minimum 35% reduction efficiency in average sensor data accumulation error rate after the 3 times compression, comparing with CQP (Circular Queue Compression based on Period) after the compressed data recovering.
 Keywords
CQP (Circular Queue based on Period);2MC (Maximum/Minimum Compression);IoT (Internet of Things);WSN (Wireless Sensor Network) Failures;Communication Error;Sensor Data Compression;
 Language
Korean
 Cited by
1.
연근해 가두리 양식장 모니터링을 위한 센서네트워크 시스템,신동현;김창화;

정보처리학회논문지:컴퓨터 및 통신 시스템, 2016. vol.5. 9, pp.247-260 crossref(new window)
2.
IoT 환경에서 컨텍스트 기반 적응적 멀티미디어 스트리밍 기법,성채민;홍성준;임경식;

한국멀티미디어학회논문지, 2016. vol.19. 7, pp.1166-1178 crossref(new window)
1.
A Context-based Adaptive Multimedia Streaming Scheme in IoT Environments, Journal of Korea Multimedia Society, 2016, 19, 7, 1166  crossref(new windwow)
2.
Sensor Network System for Littoral Sea Cage Culture Monitoring, KIPS Transactions on Computer and Communication Systems, 2016, 5, 9, 247  crossref(new windwow)
3.
A Formal Approach to the Selection by Minimum Error and Pattern Method for Sensor Data Loss Reduction in Unstable Wireless Sensor Network Communications, Sensors, 2017, 17, 5, 1092  crossref(new windwow)
 References
1.
H.W. Nam, S.S. Shin, C.H. Kim, S.H. Park, “Remote Monitoring System Based on Ocean Sensor Networks for Offshore Aquaculture,” Oceans-St, John’s, pp. 14-19, 2014.

2.
E. Borgia, “The Internet of Things Vision: Key Features, Applications and Open Issues,” Computer Communications, Vol. 54, pp. 1-31, 2014. crossref(new window)

3.
A. Bonastre, J.V. Capella, R. Ors, “In-Line Monitoring of Chemical-Analysis Processes Using Wireless Sensor Networks,” Trends in Analytical Chemistry, Vol. 34, pp. 111-125, 2012. crossref(new window)

4.
Andrei Maciuca, Mircea Strutu, Dan Popescu, Grigore Stamatescu, “Cell-based Sensor Network for Complex Monitoring at Home of Patients with Chronic Diseases,” Electrical and Electronics Engineering, pp. 11-13, 2013.

5.
D.K. Lee and D.J. Choi, “Implementation of Zigbee-based Publish/Subscribe System for M2M/IoT Services.“, Journal of Korea Multimedia Society, Vol. 17, No. 12, pp.1461-1462, 2014. crossref(new window)

6.
J.G. Lee and Y.J. Song, Ubiquitous Sensor Network, Hansan, Seoul, 2009.

7.
Huseyin Ugur Yildiz, Kemal Bicakci, Bulent Tavli, Hakan Gultekin, Davut Incebacak, “Maximizing Wireless Sensor Network Lifetime by Communication/Computation Energy Optimization of Non-Repudiation Security Service: Node Level Versus Network Level Strategies,” Ad Hoc Networks, Vol. 37, pp. 301-323, 2016. crossref(new window)

8.
C.H. Kim, Technology Development for USN-based Energy Management, Marine Sensors, Sensor Nodes and Middleware for Efficiencies and Enhancement of Marine Industry, Ministry of Science, ICT and Future Planning, Se-jong, 2015.

9.
S.J. Park, S.H. Park, S.K. Kim, C.H. Kim, “Underwater Communications and Underwater Sensor Network Technology,” Communications of the Korean Institute of Information Scientists and Engineers, Vol. 28, No. 7, pp. 79-88, 2010.

10.
J.E. Kim, N.Y. Yun, Y.P. Kim, S.Y, Shin, S.H. Park, J.H. Jeon, et al., “Design and Performance Evaluation of Hierarchical Protocol for Underwater Acoustic Sensor Networks,” The Korea Society for Simulation, Vol. 20, No. 4, pp. 157-166, 2011. crossref(new window)

11.
Sodolfo W.L. Coutinho, Azzedine Boukerche, Luiz F.M. Vieira, Antonio A.F.Loureiro, “A Novel Void Node Recovery Paradigm for Long-term Underwater Sensor Networks,” Ad Hoc Networks, Vol. 34, pp. 144-156, 2015. crossref(new window)

12.
M.H. Kim, Y.H. Lee, Y.D. Jeon, Multimedia System, Hongreung Science, Seoul, 2006.

13.
K.S. Choi, “Bit Plane Modification for Improving MSE-near Optimal DPCM-based Block Truncation Coding,” Digital Signal Processing, Vol. 23, Issue 4, pp. 1171-1180, 2013. crossref(new window)

14.
Yun Zhao, Xiaoming Li, Lingxu An, Jian Sun, "Research on Encoding/Decoding Method of Electric Physical Information Based on LMS-ADPCM Algorithm," Advanced Power System Automation and Protection, pp. 795-800, 2011.

15.
U.S. Uk and S.H. Kim, "Data Reconstruction Scheme Using PCA in Sensor Network Environment," Institute of Control, Robotics and Systems Conference, pp. 20-24, 2007.

16.
D.H. Shin and C.H. Kim, "A Method for Storing and Recovering Sensing Data Using Queue in Wireless Sensor Network Communication Failures," The 2014 Fall Conference of the KIPS, pp. 207-210, 2014.

17.
B.A. Forouzan, Data Communications and Networking, Fifth Edition, Mc Graw Hill, Singapore, 2010.