Modeling and analysis of data prediction technique based on Linear Regression Model (DP-LRM) for cluster-based sensor networks

被引:9
作者
Agarwal A. [1 ]
Jain K. [2 ]
Dev A. [3 ]
机构
[1] Guru Gobind Singh Indraprastha University, India
[2] DIT University, India
[3] Indira Gandhi Delhi Technical University for Women, India
关键词
Buffer data; Cluster head; Cluster-based sensor network; Data prediction; Energy efficiency; Linear regression model; Prediction accuracy;
D O I
10.4018/IJACI.2021100106
中图分类号
学科分类号
摘要
Recent developments in information gathering procedures and the collection of big data over a period of time as a result of introducing high computing devices pose new challenges in sensor networks. Data prediction has emerged as a key area of research to reduce transmission cost acting as principle analytic tool. The transformation of huge amount of data into an equivalent reduced dataset and maintaining data accuracy and integrity is the prerequisite of any sensor network application. To overcome these challenges, a data prediction technique is suggested to reduce transmission of redundant data by developing a regression model on linear descriptors on continuous sensed data values. The proposed model addresses the basic issues involved in data aggregation. It uses a buffer based linear filter algorithm which compares all incoming values and establishes a correlation between them. The cluster head is accountable for predicting data values in the same time slot, calculates the deviation of data values, and propagates the predicted values to the sink. Copyright © 2021, IGI Global. Copying or distributing in print or electronic forms without written permission of IGI Global is prohibited.
引用
收藏
页码:98 / 117
页数:19
相关论文
共 32 条
  • [21] Kandris D., Nakas C., Vomvas D., Koulouras G., Applications of wireless sensor networks: An up-to-date survey, Appl Syst Innovat, 3, 1, (2020)
  • [22] Kumar R., Jain V., Chauhan N., Chand N., An Adaptive Prediction Strategy with Clustering in Wireless Sensor Network, International Journal of Wireless Information Networks, 27, 4, pp. 575-587, (2020)
  • [23] Li L., Mccann J., Pollard N., Faloutsos C., DynaMMo: mining and summarization of coevolving sequences with missing values, (2009)
  • [24] Lin C., Zhou J., Guo C., Song H., Wu G., Obaidat M. S., TSCA: A Temporal-Spatial Real-Time Charging Scheduling Algorithm for On-Demand Architecture in Wireless Rechargeable Sensor Networks, IEEE Transactions on Mobile Computing, 17, 1, pp. 211-224, (2018)
  • [25] Pan L., Gao H., Li J., Gao H., Guo X., CIAM: An adaptive 2-in-1 missing data estimation algorithm in wireless sensor networks, Proc. of 2013 19th IEEE Int. Conf. on Networks, ICON, pp. 1-6, (2013)
  • [26] Randhawa S., Jain S., Data Aggregation in Wireless Sensor Networks: Previous Research, Current Status and Future Directions, Journal on Wireless Personal Communications, 97, 3, pp. 3355-3425, (2017)
  • [27] Santic M., Pomante L., Rinaldi C., Lightweight localization approach for WSNs: Performance analysis and validation, IET Wireless. Sensory Systems, 10, 2, pp. 61-69, (2020)
  • [28] Wang X., Zhou Q., Tong J., V-matrix-based scalable data aggregation scheme in WSN, IEEE Access: Practical Innovations, Open Solutions, 7, pp. 56081-56094, (2019)
  • [29] Wei G., Ling Y., Guo B., Xiao B., Vasilakos A. V., Prediction based data aggregation in wireless sensor network: Combining grey model and Kalman Filter, Computer Communications, 34, 6, pp. 793-802, (2011)
  • [30] Wua H., Xian J., Wang J., Khandge S., Mohapatra P., Missing data recovery using reconstruction in ocean wireless sensor networks, Computer Communications, 132, pp. 1-9, (2018)