DocumentCode :
2808273
Title :
Learning from class-imbalanced data in wireless sensor networks
Author :
Radivojac, Predrag ; Korad, Uttara ; Sivalingam, Krishna M. ; Obradovic, Zoran
Author_Institution :
Center for Information Sci. & Technol., Temple Univ., Philadelphia, PA, USA
Volume :
5
fYear :
2003
fDate :
6-9 Oct. 2003
Firstpage :
3030
Abstract :
In this paper, we study wireless sensor networks used for detection of rare events (e.g. intrusion). The task of the sensor node is to collect data points (examples) at regular time intervals and communicate them to the central base station (BS) using wireless links. Since sensor nodes have limited battery power, it is necessary to minimize their energy consumption. One way is to reduce the amount of sensor data packets transmitted. In this paper, we incorporate machine learning strategies to intelligently reduce the amount of transmitted data, in order to increase life-span of the sensors and thus profitability of the system. In our proposed approach, after a short initialization period, the sensors obtain a classification model from the BS based upon which they detect interesting (positive) data points. Positive examples are, together with selected negative examples, then reported to the BS. In time, BS would have stored an abundant number of negatives and a limited number of positives causing what is termed as a class-imbalance problem in learning. In order to understand the impact of network architecture on learning performance, two different architectures are studied: cluster-based (LEACH) and tiered (UNPF). With the aid of experiments using generated data sets, the paper analyzes the tradeoffs between prediction success, learning cost, packets transmitted and energy consumed. The results show that the proposed learning mechanism significantly reduces energy consumption compared to the baseline system.
Keywords :
learning (artificial intelligence); protocols; radio links; telecommunication computing; wireless sensor networks; central base station; class-imbalanced data; classification model; cluster-based architecture; low-energy adaptive clustering hierarchy; machine learning strategies; tiered architecture; transmitted data reduction; wireless sensor networks; Base stations; Batteries; Energy consumption; Event detection; Intelligent sensors; Intrusion detection; Learning systems; Machine learning; Sensor systems; Wireless sensor networks;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Vehicular Technology Conference, 2003. VTC 2003-Fall. 2003 IEEE 58th
ISSN :
1090-3038
Print_ISBN :
0-7803-7954-3
Type :
conf
DOI :
10.1109/VETECF.2003.1286180
Filename :
1286180
Link To Document :
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