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IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
_______________________________________________________________________________________
Volume: 03 Issue: 02 | Feb-2014, Available @ http://www.ijret.org 590
A SIMPLE AND EFFECTIVE SCHEME TO FIND MALICIOUS NODE
IN WIRELESS SENSOR NETWORK
T.Sathyamoorthi1
, D.Vijayachakaravarthy2
, R.Divya3
, M.Nandhini4
1,2,3
Master of Engineering, Computer Science and Engineering, Parisutham Institute of Technology and Science,
Tamilnadu, India
Abstract
Wireless Sensor Network consists of hundreds or thousands of sensor nodes. Impractical to maintain topology and protect each
sensor nodes from attack. Wireless Sensor Network is often deployed in an unattended and hostile environment to perform the
monitoring and data collection tasks. When sensor nodes are deployed in such an environment, sensor network lacks in physical
protection and is subject to insertion of malicious node. After that an adversary may launch various attacks to disrupt the in-
network communication through malicious node. In such attacks malicious node behave like normal nodes by selectively drop
packets for make it harder to detect their malicious nature. Many schemes have been proposed to detect malicious nodes, but very
few can identify attacks. But those proposals are send redundant packets, consume more energy and storage to identify malicious
nodes. A simple and effective scheme proposed as Stop Transmit and Listen (STL) to find the malicious node. Each node is having
the built-in time limit to stop their transmission. For every few seconds every node stops their transmission and listens for
malicious behavior. Malicious nodes are not aware of non-transmitting time. If malicious node sends or forwards the data in non-
transmitting time, malicious node is caught by their neighbor nodes in the network.
Key Words: IDS, Secure Routing Protocol, Stop Transmit and Listen
--------------------------------------------------------------------***----------------------------------------------------------------------
1. INTRODUCTION
A WSN consists of large number of autonomous sensor
nodes, in which each and every sensor is connected with one
or more sensor nodes without the use of any wires(i.e.)
connected via wireless. The design of WSNs depends on
required application. Environmental monitoring is an
application where a region is sensed by numerous sensor
nodes and the sensed data are gathered at the base station (a
sink) where remaining process can be carried out. The
sensor nodes for such applications are usually designed to
work in conditions where it cannot be possible to recharge
or refill the battery of those nodes. Hence energy is very
precious resource for sensor nodes. This limitation makes
the design of routing protocols a challenging task. The WSN
is built of "sensor nodes" – from a few to some hundreds or
thousands, where every node is connected to one or several
sensors. Each sensor node have several parts such as a radio
transceiver consisting internal antenna and an external
antenna, an electronic circuit, a microcontroller and an
energy source usually a battery.
Actually the nodes are referred as “Sensor” because these
nodes are equipped with smart sensors. A sensor node is a
device that converts a sensed characteristic like temperature,
vibrations, pressure into a form recognize by the users. A
wireless sensor networks node has less mobility compared
to ad-hoc networks. So mobility in case of ad-hoc is more.
In wireless sensor network data are requested depending
upon certain physical quantity.
Fig -1: Wireless Sensor Network
Sensors are used to sense the data from the physical
environment, memory is for storage, and a transceiver is
used for data transmission. The main components of a
sensor node as seen from the Fig.2 are power source,
microcontroller, external memory, and transceiver one or
more sensors. Microcontroller processes data and controls
the functionality of other components in the sensor node.
Fig -2:Architecture of Sensor Node
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
_______________________________________________________________________________________
Volume: 03 Issue: 02 | Feb-2014, Available @ http://www.ijret.org 591
1.1 Security In Wireless Sensor Network
A wireless sensor network is a composed of large number of
nodes that are densely deployed either inside the
phenomenon or very close to it. It is spatially distributed
autonomous devices using sensors to cooperatively monitor
physical or environmental conditions at different locations
[8]. Wireless Sensor Network may operate in hostile
environment, so security is needed to ensure the integrity
and confidentiality of sensitive information. Security is
important field in WSN and is quite different from
traditional security mechanism. This is because of firstly,
there are severe constraints on these devices namely their
minimal energy, communicational and computational
capabilities. Secondly, additional risk of physical attacks
such as node capture and tampering.
1.2 Approaches To Detect malicious Node
Malicious nodes are act as legitimate node by selectively
dropping the packets. More complex to find malicious
nodes, if sensor nodes selectively dropping the packets.
Various approaches are used to detect malicious nodes. The
approaches are,
 Multipath forwarding
 Neighbor monitoring approach
 Acknowledgement based approach
 Node categorization and Ranking Algorithm
1.2.1 Multipath forwarding
In sensor network, sensed data forwarded through the
multiple different paths. Even though malicious node is
inside the network, by using the different paths the sensed
data successfully forwarded towards the sink.
1.2.2 Neighbor monitoring approach
Nodes continuously monitor the forwarding behaviors of
their neighbors to determine if their neighbors are
misbehaving. In this method every nodes are having the
capabilities of finding malicious node
1.2.3 Acknowledgement based approach
This method requires acknowledgement for every
transmission to find malicious node. If acknowledgement
not received for particular transmission then it confirms the
malicious node intrusion. In this method source node finds
the malicious node.
1.2.4 Node categorization and Ranking Algorithm
Each sender and forwarder adds a small number of bits
called packet mark. Every node is categorized based on the
packet marks. The sink periodically runs heuristic ranking
algorithms to identify most likely bad nodes from
categorization of nodes.
2. PROBLEM DEFINITION
Wireless Sensor Network consists of hundreds or thousands
of sensor nodes. It is Impractical to maintain topology and
protect each sensor nodes from attack. Wireless Sensor
Network is often deployed in an unattended and hostile
environment to perform the data collection and monitoring
tasks. When wireless sensor network is deployed in such an
environment, it has lacks of physical protection and is
subject to insertion of malicious node. After that an
adversary may launch various attacks to disrupt the in-
network communication through malicious node. In such
attacks malicious node behave like normal nodes by
selectively drop packets for make it harder to detect their
malicious nature.
Many schemes have been proposed to detect malicious
nodes, but very few can identify attacks. But those proposals
are send redundant packets, consume more energy and
storage to identify malicious nodes. The existing approaches
are delayed in finding the malicious node in sensor network.
The storage overhead will affect the network due to
unwanted transmission for finding malicious node. Large
communication power is needed to detect the malicious
node like acknowledgement and multipath forwarding.
3. PROPOSED SYSTEM
A simple and effective scheme proposed as Stop Transmit
and Listen (STL) to find the malicious node. Initially, the
sensor nodes are heavily deployed over the region. Each
node is having the built-in time limit to stop their
transmission. Each and every node is having the capability
of finding malicious node. After the node deployment nodes
are started their sensing process within their sensing region.
The sensed data is forwarded towards the sink. For every
few seconds every node stops their transmission and listens
for malicious behavior. Malicious nodes are not aware of
non-transmitting time.
If malicious node doesn’t send or forwards the data in non-
transmitting time, malicious node can be caught in other
frequent non-transmitting times. If malicious node sends or
forwards the data in non-transmitting time, it caught by their
neighbor nodes in the network. Then malicious behavior of
that node is broadcasted throughout the network. The
malicious nodes are can be easily detected by neighbor
nodes. So it is trusted method of malicious node detection.
3.1 Node deployment
Initially, the sensor nodes are heavily deployed over the
region. Each node is having the built-in time limit to stop
their transmission. Each and every node is having the
capability of finding malicious node.
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
_______________________________________________________________________________________
Volume: 03 Issue: 02 | Feb-2014, Available @ http://www.ijret.org 592
Fig -3: Operation time of STL
3.2 Data Transfer
After the node deployment nodes are started their sensing
process within their sensing region. The sensed data is
forwarded towards the sink. The proposed STL scheme
doesn't need any type of network topology for data
transmission.
Fig -4: Data Transfer
3.3 Stop and Listen
For every few seconds every node stops their transmission.
Malicious nodes doesn't aware of the non-transmission time
allocation in the sensor nodes. So malicious may send or
receive the data in non-transmitting time interval. Every
node listens for malicious behavior in the non-transmitting
time interval.
Fig -5: Non-transmitting intervals
3.4 Malicious node detection
Malicious node behaves like normal nodes by selectively
nature. So malicious nodes send or forward the data in non-
transmitting time interval. If malicious node doesn’t send or
forwards the data in non-transmitting time, malicious node
can be caught in other frequent non-transmitting times. If
malicious node sends or forwards the data in non-
transmitting time, it caught by their neighbor nodes in the
network.drop packets for make it harder to detect their
malicious
Fig -6: Broadcasting about malicious behavior
3.5 Malicious node Removal
Malicious behavior of the node is broadcasted throughout
the network. Then every node in the network doesn't send
data to the malicious node. A sensor node doesn’t allow the
data from malicious node. The malicious nodes are can be
easily detected by neighbor nodes. So it is trusted method of
malicious node detection.
4.CONCLUSIONS
Wireless Sensor Network is often deployed in an unattended
and hostile environment to perform the data collection and
monitoring tasks. When WSN is deployed in such an
environment, it has lack physical protection and is subject to
insertion of malicious node. Many schemes have been
proposed to detect malicious nodes, but very few can
identify attacks. But those proposals are send redundant
packets, consume more energy and storage to identify
malicious nodes. The proposed STL scheme is easily finds
the malicious nodes in the network. It finds the malicious
node in very short interval of time. It supports the malicious
node detection in dynamic sensor network. Neighbor node
detects the malicious node in the network. It doesn’t any
complex process to find. It is having the capability to find
malicious nodes in sensor networks.
5.FUTURE ENHANCEMENTS
In the proposed STL scheme whole network data
transmission is stopped for finding malicious behavior. In
future, the whole sensor network will be separated into
several groups. Each group is having the separate non-
transmitting time. Each group stops their transmission in a
non-overlapping time interval. The non-transmitting time is
allocated hierarchically from the lower level nodes. If one
group stops their transmission, other groups are sending and
forward the data. The group separation overcomes the
problem of congestion and delays in the sensor network.
REFERENCES
[1] Secure routing for mobile ad hoc networks, Proc. of the
CNDS’02 (TX, San Antonio), January 2002.
[2] M. Burmester and T. van Le, Secure multipath
communication in mobile ad hoc networks, Proc. of
ITCC’04 (Las Vegas), IEEE, April 2004.
[3] R. Mavropodi, P. Kotzanikolaou, and C. Douligeris,
Secmr- A Secure Multipath Routing Protocol for Ad Hoc
Networks, Ad Hoc Networks, vol. 5, no. 1, pp. 87-99, 2007.
[4] R. Roman, J. Zhou, and J. Lopez, “Applying Intrusion
Detection Systems to Wireless Sensor Networks,” Proc.
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
_______________________________________________________________________________________
Volume: 03 Issue: 02 | Feb-2014, Available @ http://www.ijret.org 593
IEEE Third Consumer Comm. Networking Conf. (CCNC),
2006.
[5] B. Xiao, B. Yu, and C. Gao, “Chemas: Identify Suspect
Nodes in Selective Forwarding Attacks,” J. Parallel and
Distributed Computing, vol. 67, no. 11, pp. 1218-1230,
2007.
[6] X. Zhang, A. Jain, and A. Perrig, “Packet-Dropping
Adversary Identification for Data Plane Security,” Proc.
ACM CONEXT Conf. (CoNEXT ’08), 2008.
[7] “Chuang Wang, Taiming Feng, Jinsook Kim, Guiling
Wang, Member, IEEE, and Wensheng Zhang, Member,
IEEE Catching Packet Droppers and Modifiers in Wireless
Sensor Networks may 2012.
[8] D. Djenouri, L. Khelladi, A.N. Badache, A survey of
security issues in mobile ad hoc and sensor networks,
Communications Surveys & Tutorials, Fourth Quarter 7 (4)
(2005) 2–28.
[9] M.A.M. Vieira, D.C. da Silva Jr., C.N. Coelho Jr., and
J.M. da Mata., “Survey on Wireless Sensor Network
Devices,” Emerging Technologies and Factory Automation
(ETFA03), September 2003.
[10] J. Newsome, E. Shi, D. Song, and A. Perrig, “The Sybil
Attack in Sensor Networks: Analysis and Defense,”
International Symposium on Information Processing in
Sensor Networks, Vol. 1(2004).
[11] C. Karlof and D. Wagner, “Secure Routing in Wireless
Sensor Networks: Attacks and Countermeasures,” Journal of
Ad Hoc Networks, Elsevier, 2003
[12] W. Du, L. Fang, and P. Ning, “LAD: Localization
Anomaly Detection for Wireless Sensor Networks,” the 19th
International Parallel and Distributed Priocessing
Symposium (IPDPS’05), April 3 – 8, 2005, Denver,
Colorado, USA.
BIOGRAPHIES
T.Sathyamoorthi is pursuing Masters
Degree Program Department of
Computer Science & Engineering,
Parisutham Institute Of Technology
and Science, affiliated to Anna
University-Chennai, Tamilnadu, India.
He received the BE degree from Kings
College Of Engineering in 2012. His
research interests include Mobile Ad-
Hoc Network and wireless systems
R.Divya is pursuing Masters Degree
Program Department of Computer
Science & Engineering, Parisutham
Institute Of Technology and Science,
affiliated to Anna University-Chennai,
Tamilnadu, India. She received the BE
degree from Parisutham Institute Of
Technology and Science in 2012. Her
research interests include Cloud
Computing.
Nandhini is pursuing Masters Degree
Program Department of Computer
Science & Engineering, Parisutham
Institute Of Technology and Science,
affiliated to Anna University-Chennai,
Tamilnadu, India. She received the
MCA degree from VLB Janakiammal
College of Engineering and
Technology in 2010.Her research interests include networks
and cloud computing.
D.Vijayachakaravarthy is pursuing
Masters Degree Program Department
of Computer Science & Engineering,
Parisutham Institute Of Technology
and Science, affiliated to Anna
University-Chennai, Tamilnadu, India.
He received the BE degree from Kings
College Of Engineering in 2012. His
research interests include Mobile
Computing.

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A simple and effective scheme to find malicious node in wireless sensor network

  • 1. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 _______________________________________________________________________________________ Volume: 03 Issue: 02 | Feb-2014, Available @ http://www.ijret.org 590 A SIMPLE AND EFFECTIVE SCHEME TO FIND MALICIOUS NODE IN WIRELESS SENSOR NETWORK T.Sathyamoorthi1 , D.Vijayachakaravarthy2 , R.Divya3 , M.Nandhini4 1,2,3 Master of Engineering, Computer Science and Engineering, Parisutham Institute of Technology and Science, Tamilnadu, India Abstract Wireless Sensor Network consists of hundreds or thousands of sensor nodes. Impractical to maintain topology and protect each sensor nodes from attack. Wireless Sensor Network is often deployed in an unattended and hostile environment to perform the monitoring and data collection tasks. When sensor nodes are deployed in such an environment, sensor network lacks in physical protection and is subject to insertion of malicious node. After that an adversary may launch various attacks to disrupt the in- network communication through malicious node. In such attacks malicious node behave like normal nodes by selectively drop packets for make it harder to detect their malicious nature. Many schemes have been proposed to detect malicious nodes, but very few can identify attacks. But those proposals are send redundant packets, consume more energy and storage to identify malicious nodes. A simple and effective scheme proposed as Stop Transmit and Listen (STL) to find the malicious node. Each node is having the built-in time limit to stop their transmission. For every few seconds every node stops their transmission and listens for malicious behavior. Malicious nodes are not aware of non-transmitting time. If malicious node sends or forwards the data in non- transmitting time, malicious node is caught by their neighbor nodes in the network. Key Words: IDS, Secure Routing Protocol, Stop Transmit and Listen --------------------------------------------------------------------***---------------------------------------------------------------------- 1. INTRODUCTION A WSN consists of large number of autonomous sensor nodes, in which each and every sensor is connected with one or more sensor nodes without the use of any wires(i.e.) connected via wireless. The design of WSNs depends on required application. Environmental monitoring is an application where a region is sensed by numerous sensor nodes and the sensed data are gathered at the base station (a sink) where remaining process can be carried out. The sensor nodes for such applications are usually designed to work in conditions where it cannot be possible to recharge or refill the battery of those nodes. Hence energy is very precious resource for sensor nodes. This limitation makes the design of routing protocols a challenging task. The WSN is built of "sensor nodes" – from a few to some hundreds or thousands, where every node is connected to one or several sensors. Each sensor node have several parts such as a radio transceiver consisting internal antenna and an external antenna, an electronic circuit, a microcontroller and an energy source usually a battery. Actually the nodes are referred as “Sensor” because these nodes are equipped with smart sensors. A sensor node is a device that converts a sensed characteristic like temperature, vibrations, pressure into a form recognize by the users. A wireless sensor networks node has less mobility compared to ad-hoc networks. So mobility in case of ad-hoc is more. In wireless sensor network data are requested depending upon certain physical quantity. Fig -1: Wireless Sensor Network Sensors are used to sense the data from the physical environment, memory is for storage, and a transceiver is used for data transmission. The main components of a sensor node as seen from the Fig.2 are power source, microcontroller, external memory, and transceiver one or more sensors. Microcontroller processes data and controls the functionality of other components in the sensor node. Fig -2:Architecture of Sensor Node
  • 2. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 _______________________________________________________________________________________ Volume: 03 Issue: 02 | Feb-2014, Available @ http://www.ijret.org 591 1.1 Security In Wireless Sensor Network A wireless sensor network is a composed of large number of nodes that are densely deployed either inside the phenomenon or very close to it. It is spatially distributed autonomous devices using sensors to cooperatively monitor physical or environmental conditions at different locations [8]. Wireless Sensor Network may operate in hostile environment, so security is needed to ensure the integrity and confidentiality of sensitive information. Security is important field in WSN and is quite different from traditional security mechanism. This is because of firstly, there are severe constraints on these devices namely their minimal energy, communicational and computational capabilities. Secondly, additional risk of physical attacks such as node capture and tampering. 1.2 Approaches To Detect malicious Node Malicious nodes are act as legitimate node by selectively dropping the packets. More complex to find malicious nodes, if sensor nodes selectively dropping the packets. Various approaches are used to detect malicious nodes. The approaches are,  Multipath forwarding  Neighbor monitoring approach  Acknowledgement based approach  Node categorization and Ranking Algorithm 1.2.1 Multipath forwarding In sensor network, sensed data forwarded through the multiple different paths. Even though malicious node is inside the network, by using the different paths the sensed data successfully forwarded towards the sink. 1.2.2 Neighbor monitoring approach Nodes continuously monitor the forwarding behaviors of their neighbors to determine if their neighbors are misbehaving. In this method every nodes are having the capabilities of finding malicious node 1.2.3 Acknowledgement based approach This method requires acknowledgement for every transmission to find malicious node. If acknowledgement not received for particular transmission then it confirms the malicious node intrusion. In this method source node finds the malicious node. 1.2.4 Node categorization and Ranking Algorithm Each sender and forwarder adds a small number of bits called packet mark. Every node is categorized based on the packet marks. The sink periodically runs heuristic ranking algorithms to identify most likely bad nodes from categorization of nodes. 2. PROBLEM DEFINITION Wireless Sensor Network consists of hundreds or thousands of sensor nodes. It is Impractical to maintain topology and protect each sensor nodes from attack. Wireless Sensor Network is often deployed in an unattended and hostile environment to perform the data collection and monitoring tasks. When wireless sensor network is deployed in such an environment, it has lacks of physical protection and is subject to insertion of malicious node. After that an adversary may launch various attacks to disrupt the in- network communication through malicious node. In such attacks malicious node behave like normal nodes by selectively drop packets for make it harder to detect their malicious nature. Many schemes have been proposed to detect malicious nodes, but very few can identify attacks. But those proposals are send redundant packets, consume more energy and storage to identify malicious nodes. The existing approaches are delayed in finding the malicious node in sensor network. The storage overhead will affect the network due to unwanted transmission for finding malicious node. Large communication power is needed to detect the malicious node like acknowledgement and multipath forwarding. 3. PROPOSED SYSTEM A simple and effective scheme proposed as Stop Transmit and Listen (STL) to find the malicious node. Initially, the sensor nodes are heavily deployed over the region. Each node is having the built-in time limit to stop their transmission. Each and every node is having the capability of finding malicious node. After the node deployment nodes are started their sensing process within their sensing region. The sensed data is forwarded towards the sink. For every few seconds every node stops their transmission and listens for malicious behavior. Malicious nodes are not aware of non-transmitting time. If malicious node doesn’t send or forwards the data in non- transmitting time, malicious node can be caught in other frequent non-transmitting times. If malicious node sends or forwards the data in non-transmitting time, it caught by their neighbor nodes in the network. Then malicious behavior of that node is broadcasted throughout the network. The malicious nodes are can be easily detected by neighbor nodes. So it is trusted method of malicious node detection. 3.1 Node deployment Initially, the sensor nodes are heavily deployed over the region. Each node is having the built-in time limit to stop their transmission. Each and every node is having the capability of finding malicious node.
  • 3. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 _______________________________________________________________________________________ Volume: 03 Issue: 02 | Feb-2014, Available @ http://www.ijret.org 592 Fig -3: Operation time of STL 3.2 Data Transfer After the node deployment nodes are started their sensing process within their sensing region. The sensed data is forwarded towards the sink. The proposed STL scheme doesn't need any type of network topology for data transmission. Fig -4: Data Transfer 3.3 Stop and Listen For every few seconds every node stops their transmission. Malicious nodes doesn't aware of the non-transmission time allocation in the sensor nodes. So malicious may send or receive the data in non-transmitting time interval. Every node listens for malicious behavior in the non-transmitting time interval. Fig -5: Non-transmitting intervals 3.4 Malicious node detection Malicious node behaves like normal nodes by selectively nature. So malicious nodes send or forward the data in non- transmitting time interval. If malicious node doesn’t send or forwards the data in non-transmitting time, malicious node can be caught in other frequent non-transmitting times. If malicious node sends or forwards the data in non- transmitting time, it caught by their neighbor nodes in the network.drop packets for make it harder to detect their malicious Fig -6: Broadcasting about malicious behavior 3.5 Malicious node Removal Malicious behavior of the node is broadcasted throughout the network. Then every node in the network doesn't send data to the malicious node. A sensor node doesn’t allow the data from malicious node. The malicious nodes are can be easily detected by neighbor nodes. So it is trusted method of malicious node detection. 4.CONCLUSIONS Wireless Sensor Network is often deployed in an unattended and hostile environment to perform the data collection and monitoring tasks. When WSN is deployed in such an environment, it has lack physical protection and is subject to insertion of malicious node. Many schemes have been proposed to detect malicious nodes, but very few can identify attacks. But those proposals are send redundant packets, consume more energy and storage to identify malicious nodes. The proposed STL scheme is easily finds the malicious nodes in the network. It finds the malicious node in very short interval of time. It supports the malicious node detection in dynamic sensor network. Neighbor node detects the malicious node in the network. It doesn’t any complex process to find. It is having the capability to find malicious nodes in sensor networks. 5.FUTURE ENHANCEMENTS In the proposed STL scheme whole network data transmission is stopped for finding malicious behavior. In future, the whole sensor network will be separated into several groups. Each group is having the separate non- transmitting time. Each group stops their transmission in a non-overlapping time interval. The non-transmitting time is allocated hierarchically from the lower level nodes. If one group stops their transmission, other groups are sending and forward the data. The group separation overcomes the problem of congestion and delays in the sensor network. REFERENCES [1] Secure routing for mobile ad hoc networks, Proc. of the CNDS’02 (TX, San Antonio), January 2002. [2] M. Burmester and T. van Le, Secure multipath communication in mobile ad hoc networks, Proc. of ITCC’04 (Las Vegas), IEEE, April 2004. [3] R. Mavropodi, P. Kotzanikolaou, and C. Douligeris, Secmr- A Secure Multipath Routing Protocol for Ad Hoc Networks, Ad Hoc Networks, vol. 5, no. 1, pp. 87-99, 2007. [4] R. Roman, J. Zhou, and J. Lopez, “Applying Intrusion Detection Systems to Wireless Sensor Networks,” Proc.
  • 4. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 _______________________________________________________________________________________ Volume: 03 Issue: 02 | Feb-2014, Available @ http://www.ijret.org 593 IEEE Third Consumer Comm. Networking Conf. (CCNC), 2006. [5] B. Xiao, B. Yu, and C. Gao, “Chemas: Identify Suspect Nodes in Selective Forwarding Attacks,” J. Parallel and Distributed Computing, vol. 67, no. 11, pp. 1218-1230, 2007. [6] X. Zhang, A. Jain, and A. Perrig, “Packet-Dropping Adversary Identification for Data Plane Security,” Proc. ACM CONEXT Conf. (CoNEXT ’08), 2008. [7] “Chuang Wang, Taiming Feng, Jinsook Kim, Guiling Wang, Member, IEEE, and Wensheng Zhang, Member, IEEE Catching Packet Droppers and Modifiers in Wireless Sensor Networks may 2012. [8] D. Djenouri, L. Khelladi, A.N. Badache, A survey of security issues in mobile ad hoc and sensor networks, Communications Surveys & Tutorials, Fourth Quarter 7 (4) (2005) 2–28. [9] M.A.M. Vieira, D.C. da Silva Jr., C.N. Coelho Jr., and J.M. da Mata., “Survey on Wireless Sensor Network Devices,” Emerging Technologies and Factory Automation (ETFA03), September 2003. [10] J. Newsome, E. Shi, D. Song, and A. Perrig, “The Sybil Attack in Sensor Networks: Analysis and Defense,” International Symposium on Information Processing in Sensor Networks, Vol. 1(2004). [11] C. Karlof and D. Wagner, “Secure Routing in Wireless Sensor Networks: Attacks and Countermeasures,” Journal of Ad Hoc Networks, Elsevier, 2003 [12] W. Du, L. Fang, and P. Ning, “LAD: Localization Anomaly Detection for Wireless Sensor Networks,” the 19th International Parallel and Distributed Priocessing Symposium (IPDPS’05), April 3 – 8, 2005, Denver, Colorado, USA. BIOGRAPHIES T.Sathyamoorthi is pursuing Masters Degree Program Department of Computer Science & Engineering, Parisutham Institute Of Technology and Science, affiliated to Anna University-Chennai, Tamilnadu, India. He received the BE degree from Kings College Of Engineering in 2012. His research interests include Mobile Ad- Hoc Network and wireless systems R.Divya is pursuing Masters Degree Program Department of Computer Science & Engineering, Parisutham Institute Of Technology and Science, affiliated to Anna University-Chennai, Tamilnadu, India. She received the BE degree from Parisutham Institute Of Technology and Science in 2012. Her research interests include Cloud Computing. Nandhini is pursuing Masters Degree Program Department of Computer Science & Engineering, Parisutham Institute Of Technology and Science, affiliated to Anna University-Chennai, Tamilnadu, India. She received the MCA degree from VLB Janakiammal College of Engineering and Technology in 2010.Her research interests include networks and cloud computing. D.Vijayachakaravarthy is pursuing Masters Degree Program Department of Computer Science & Engineering, Parisutham Institute Of Technology and Science, affiliated to Anna University-Chennai, Tamilnadu, India. He received the BE degree from Kings College Of Engineering in 2012. His research interests include Mobile Computing.