Title
Anomaly Detection and Redundancy Elimination of Big Sensor Data in Internet of Things.
Abstract
In the era of big data and Internet of things, massive sensor data are gathered with Internet of things. Quantity of data captured by sensor networks are considered to contain highly useful and valuable information. However, for a variety of reasons, received sensor data often appear abnormal. Therefore, effective anomaly detection methods are required to guarantee the quality of data collected by those sensor nodes. Since sensor data are usually correlated in time and space, not all the gathered data are valuable for further data processing and analysis. Preprocessing is necessary for eliminating the redundancy in gathered massive sensor data. In this paper, the proposed work defines a sensor data preprocessing framework. It is mainly composed of two parts, i.e., sensor data anomaly detection and sensor data redundancy elimination. In the first part, methods based on principal statistic analysis and Bayesian network is proposed for sensor data anomaly detection. Then, approaches based on static Bayesian network (SBN) and dynamic Bayesian networks (DBNs) are proposed for sensor data redundancy elimination. Static sensor data redundancy detection algorithm (SSDRDA) for eliminating redundant data in static datasets and real-time sensor data redundancy detection algorithm (RSDRDA) for eliminating redundant sensor data in real-time are proposed. The efficiency and effectiveness of the proposed methods are validated using real-world gathered sensor datasets.
Year
Venue
Field
2017
arXiv: Distributed, Parallel, and Cluster Computing
Anomaly detection,Data mining,Soft sensor,Computer science,Visual sensor network,Data pre-processing,Real-time computing,Data redundancy,Redundancy (engineering),Wireless sensor network,Big data
DocType
Volume
Citations 
Journal
abs/1703.03225
1
PageRank 
References 
Authors
0.34
22
2
Name
Order
Citations
PageRank
Sai Xie110.68
Zhe Chen282.34