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Anomaly detection in unknown environments using wireless sensor networks

Date Issued
May 1, 2010
Author(s)
Li, YuanYuan  
Advisor(s)
Lynne E. Parker
Additional Advisor(s)
Michael Berry
Michael Thomason
Hairong Qi
Wesley Hines
Permanent URI
https://trace.tennessee.edu/handle/20.500.14382/28504
Abstract

This dissertation addresses the problem of distributed anomaly detection in Wireless Sensor Networks (WSN). A challenge of designing such systems is that the sensor nodes are battery powered, often have different capabilities and generally operate in dynamic environments. Programming such sensor nodes at a large scale can be a tedious job if the system is not carefully designed. Data modeling in distributed systems is important for determining the normal operation mode of the system. Being able to model the expected sensor signatures for typical operations greatly simplifies the human designer’s job by enabling the system to autonomously characterize the expected sensor data streams. This, in turn, allows the system to perform autonomous anomaly detection to recognize when unexpected sensor signals are detected. This type of distributed sensor modeling can be used in a wide variety of sensor networks, such as detecting the presence of intruders, detecting sensor failures, and so forth. The advantage of this approach is that the human designer does not have to characterize the anomalous signatures in advance.


The contributions of this approach include: (1) providing a way for a WSN to autonomously model sensor data with no prior knowledge of the environment; (2) enabling a distributed system to detect anomalies in both sensor signals and temporal events online; (3) providing a way to automatically extract semantic labels from temporal sequences; (4) providing a way for WSNs to save communication power by transmitting compressed temporal sequences; (5) enabling the system to detect time-related anomalies without prior knowledge of abnormal events; and, (6) providing a novel missing data estimation method that utilizes temporal and spatial information to replace missing values. The algorithms have been designed, developed, evaluated, and validated experimentally in synthesized data, and in real-world sensor network applications.

Subjects

wireless sensor netwo...

signal processing

sensor fusion

time-series analysis

missing data imputati...

anomaly detection

Disciplines
Robotics
Degree
Doctor of Philosophy
Major
Computer Science
Embargo Date
December 1, 2011
File(s)
Thumbnail Image
Name

yuanyuan_li.pdf

Size

1.97 MB

Format

Adobe PDF

Checksum (MD5)

8d3dae3aa9f4356d6b1395b1c0bb9966

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