Title of article :
EIDA: An Energy-Intrusion aware Data Aggregation Technique for Wireless Sensor Network
Author/Authors :
Daneshgar Moghaddam، Nafiseh نويسنده , , Najafi، M. Habibi نويسنده , , Jahanshahi، Mohsen نويسنده , , Ahvar، Ehsan نويسنده ,
Issue Information :
فصلنامه با شماره پیاپی سال 2016
Abstract :
Energy consumption is considered as
a critical issue in wireless sensor networks (WSNs).
Batteries of sensor nodes have limited power supply
which in turn limits services and applications that
can be supported by them. An efficient solution to
improve energy consumption and even traffic in
WSNs is Data Aggregation (DA) that can reduce
the number of transmissions. Two main challenges
for DA are: (i) most DA techniques need network
clustering. Clustering itself is a time and energy
consuming procedure. (ii) DA techniques often do
not have ability to detect intrusions. Studying to
design a new DA technique without using clustering
and with ability of finding intrusion is valuable.
This paper proposes an energy-intrusion aware
DA Technique (named EIDA) that does not need
clustering. EIDA is designed to support on demand
requests of mobile sinks in WSNs. It uses learning
automata for aggregating data and a simple and
effective algorithm for intrusion detection. Finally,
we simulate and evaluate our proposed EIDA by
GloMosim simulator.
Keywords :
data aggregation , Learning Automata , energy-Intrusion aware
Journal title :
Journal of Advances in Computer Engineering and Technology
Journal title :
Journal of Advances in Computer Engineering and Technology